def test_create_layer(self):
        """Test create layer work"""

        # Lines
        line_layer = QgsVectorLayer(
            self.line_before + '.shp', 'test', 'ogr')
        new_layer = create_layer(line_layer)
        self.assertEquals(new_layer.geometryType(), line_layer.geometryType())
        self.assertEquals(new_layer.crs(), line_layer.crs())
        fields = line_layer.dataProvider().fields()
        new_fields = new_layer.dataProvider().fields()
        self.assertEquals(new_fields.toList(), fields.toList())

        # Polygon
        polygon_layer = QgsVectorLayer(
            self.polygon_base + '.shp', 'test', 'ogr')
        new_layer = create_layer(polygon_layer)
        self.assertEquals(
            new_layer.geometryType(),
            polygon_layer.geometryType()
        )
        self.assertEquals(new_layer.crs(), polygon_layer.crs())
        fields = polygon_layer.dataProvider().fields()
        new_fields = new_layer.dataProvider().fields()
        self.assertEquals(new_fields.toList(), fields.toList())
Exemplo n.º 2
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    def test_create_layer(self):
        """Test create layer work"""

        # Lines
        line_layer = QgsVectorLayer(
            self.line_before + '.shp', 'test', 'ogr')
        new_layer = create_layer(line_layer)
        self.assertEquals(new_layer.geometryType(), line_layer.geometryType())
        self.assertEquals(new_layer.crs(), line_layer.crs())
        fields = line_layer.dataProvider().fields()
        new_fields = new_layer.dataProvider().fields()
        self.assertEquals(new_fields.toList(), fields.toList())

        # Polygon
        polygon_layer = QgsVectorLayer(
            self.polygon_base + '.shp', 'test', 'ogr')
        new_layer = create_layer(polygon_layer)
        self.assertEquals(
            new_layer.geometryType(),
            polygon_layer.geometryType()
        )
        self.assertEquals(new_layer.crs(), polygon_layer.crs())
        fields = polygon_layer.dataProvider().fields()
        new_fields = new_layer.dataProvider().fields()
        self.assertEquals(new_fields.toList(), fields.toList())
Exemplo n.º 3
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    def test_interpolation_from_polygons_one_poly(self):
        """Point interpolation using one polygon from Maumere works

        There's a test with the same name in test_engine.py not using QGIS API.
        This one deals correctly with holes in polygons,
        so the resulting numbers are a bit different.
        """

        # Name file names for hazard level and exposure
        hazard_filename = ('%s/tsunami_polygon_WGS84.shp' % TESTDATA)
        exposure_filename = ('%s/building_Maumere.shp' % TESTDATA)

        # Read input data
        H_all = QgsVectorLayer(hazard_filename, 'Hazard', 'ogr')

        # Cut down to make test quick
        # Polygon #799 is the one used in separate test
        H = create_layer(H_all)
        polygon799 = H_all.getFeatures(QgsFeatureRequest(799)).next()
        H.dataProvider().addFeatures([polygon799])

        E = QgsVectorLayer(exposure_filename, 'Exposure', 'ogr')

        # Test interpolation function
        I = interpolate_polygon_polygon(H, E, E.extent())

        N = I.dataProvider().featureCount()
        assert N == I.dataProvider().featureCount()

        # Assert that expected attribute names exist
        I_names = [field.name() for field in I.dataProvider().fields()]
        for field in H.dataProvider().fields():
            name = field.name()
            msg = 'Did not find hazard name "%s" in %s' % (name, I_names)
            assert name in I_names, msg

        for field in E.dataProvider().fields():
            name = field.name()
            msg = 'Did not find exposure name "%s" in %s' % (name, I_names)
            assert name in I_names, msg

        # Verify interpolated values with test result
        count = 0
        for f in I.getFeatures():
            category = f['Category']
            if category is not None:
                count += 1

        msg = ('Expected 453 points tagged with category, '
               'but got only %i' % count)
        assert count == 453, msg
Exemplo n.º 4
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    def test_raster_to_vector_and_line_intersection(self):
        """Test the core part of the analysis.

        1. Test creation of spatial index of flood cells
        2. Test intersection of flood cells with roads layer
        """

        raster_name = standard_data_path(
            'hazard',
            'tsunami_wgs84.tif')
        exposure_name = standard_data_path(
            'exposure',
            'roads_osm_4326.shp')

        raster = QgsRasterLayer(raster_name, 'Flood')
        exposure = QgsVectorLayer(exposure_name, 'Exposure', 'ogr')

        ranges = OrderedDict()
        ranges[0] = [0, 1]
        ranges[1] = [1, 2]
        ranges[2] = [2, 100]
        index, flood_cells_map = _raster_to_vector_cells(
            raster, ranges, exposure.crs())

        self.assertEqual(len(flood_cells_map), 4198)
        rect_with_all_cells = raster.extent()
        rect_with_4_cells = QgsRectangle(106.824, -6.177, 106.825, -6.179)
        rect_with_0_cells = QgsRectangle(106.818, -6.168, 106.828, -6.175)
        self.assertEqual(len(index.intersects(rect_with_all_cells)), 4198)
        self.assertEqual(len(index.intersects(rect_with_4_cells)), 43)
        self.assertEqual(len(index.intersects(rect_with_0_cells)), 504)

        layer = create_layer(exposure)
        new_field = QgsField('flooded', QVariant.Int)
        layer.dataProvider().addAttributes([new_field])

        request = QgsFeatureRequest()
        _intersect_lines_with_vector_cells(
            exposure, request, index, flood_cells_map, layer, 'flooded')

        feature_count = layer.featureCount()
        self.assertEqual(feature_count, 388)

        flooded = 0
        iterator = layer.getFeatures()
        for feature in iterator:
            attributes = feature.attributes()
            if attributes[3] == 1:
                flooded += 1
        self.assertEqual(flooded, 40)
Exemplo n.º 5
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    def test_raster_to_vector_and_line_intersection(self):
        """Test the core part of the analysis.

        1. Test creation of spatial index of flood cells
        2. Test intersection of flood cells with roads layer
        """

        raster_name = test_data_path('hazard', 'tsunami_wgs84.tif')
        exposure_name = test_data_path('exposure', 'roads_osm_4326.shp')

        raster = QgsRasterLayer(raster_name, 'Flood')
        exposure = QgsVectorLayer(exposure_name, 'Exposure', 'ogr')

        ranges = OrderedDict()
        ranges[0] = [0, 1]
        ranges[1] = [1, 2]
        ranges[2] = [2, 100]
        index, flood_cells_map = _raster_to_vector_cells(
            raster, ranges, exposure.crs())

        self.assertEqual(len(flood_cells_map), 4198)
        rect_with_all_cells = raster.extent()
        rect_with_4_cells = QgsRectangle(106.824, -6.177, 106.825, -6.179)
        rect_with_0_cells = QgsRectangle(106.818, -6.168, 106.828, -6.175)
        self.assertEqual(len(index.intersects(rect_with_all_cells)), 4198)
        self.assertEqual(len(index.intersects(rect_with_4_cells)), 43)
        self.assertEqual(len(index.intersects(rect_with_0_cells)), 504)

        layer = create_layer(exposure)
        new_field = QgsField('flooded', QVariant.Int)
        layer.dataProvider().addAttributes([new_field])

        request = QgsFeatureRequest()
        _intersect_lines_with_vector_cells(exposure, request, index,
                                           flood_cells_map, layer, 'flooded')

        feature_count = layer.featureCount()
        self.assertEqual(feature_count, 388)

        flooded = 0
        iterator = layer.getFeatures()
        for feature in iterator:
            attributes = feature.attributes()
            if attributes[3] == 1:
                flooded += 1
        self.assertEqual(flooded, 40)
    def test_raster_to_vector_and_line_intersection(self):
        """Test the core part of the analysis.

        1. Test creation of spatial index of flood cells
        2. Test intersection of flood cells with roads layer
        """

        raster_name = standard_data_path('hazard', 'jakarta_flood_design.tif')
        exposure_name = standard_data_path('exposure', 'roads_osm_4326.shp')

        raster = QgsRasterLayer(raster_name, 'Flood')
        exposure = QgsVectorLayer(exposure_name, 'Exposure', 'ogr')

        index, flood_cells_map = _raster_to_vector_cells(
            raster, 0.1, 1e10, exposure.crs())

        self.assertEqual(len(flood_cells_map), 221)

        rect_with_all_cells = raster.extent()
        rect_with_4_cells = QgsRectangle(106.824, -6.177, 106.825, -6.179)
        rect_with_0_cells = QgsRectangle(106.818, -6.168, 106.828, -6.175)
        self.assertEqual(len(index.intersects(rect_with_all_cells)), 221)
        self.assertEqual(len(index.intersects(rect_with_4_cells)), 4)
        self.assertEqual(len(index.intersects(rect_with_0_cells)), 0)

        layer = create_layer(exposure)
        new_field = QgsField('flooded', QVariant.Int)
        layer.dataProvider().addAttributes([new_field])

        request = QgsFeatureRequest()
        _intersect_lines_with_vector_cells(exposure, request, index,
                                           flood_cells_map, layer, 'flooded')

        feature_count = layer.featureCount()
        self.assertEqual(feature_count, 184)

        flooded = 0
        iterator = layer.getFeatures()
        for feature in iterator:
            attributes = feature.attributes()
            if attributes[3] == 1:
                flooded += 1
        self.assertEqual(flooded, 25)
Exemplo n.º 7
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    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        self.validate()
        self.prepare()

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        # Get parameters from IF parameter
        threshold_min = self.parameters['min threshold'].value
        threshold_max = self.parameters['max threshold'].value

        if threshold_min > threshold_max:
            message = tr(
                'The minimal threshold is greater than the maximal specified '
                'threshold. Please check the values.')
            raise GetDataError(message)

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Align raster extent and viewport
        # assuming they are both in the same projection
        raster_extent = self.hazard.layer.dataProvider().extent()
        clip_xmin = raster_extent.xMinimum()
        # clip_xmax = raster_extent.xMaximum()
        clip_ymin = raster_extent.yMinimum()
        # clip_ymax = raster_extent.yMaximum()
        if viewport_extent[0] > clip_xmin:
            clip_xmin = viewport_extent[0]
        if viewport_extent[1] > clip_ymin:
            clip_ymin = viewport_extent[1]
        # TODO: Why have these two clauses when they are not used?
        # Commenting out for now.
        # if viewport_extent[2] < clip_xmax:
        #     clip_xmax = viewport_extent[2]
        # if viewport_extent[3] < clip_ymax:
        #     clip_ymax = viewport_extent[3]

        height = ((viewport_extent[3] - viewport_extent[1]) /
                  self.hazard.layer.rasterUnitsPerPixelY())
        height = int(height)
        width = ((viewport_extent[2] - viewport_extent[0]) /
                 self.hazard.layer.rasterUnitsPerPixelX())
        width = int(width)

        raster_extent = self.hazard.layer.dataProvider().extent()
        xmin = raster_extent.xMinimum()
        xmax = raster_extent.xMaximum()
        ymin = raster_extent.yMinimum()
        ymax = raster_extent.yMaximum()

        x_delta = (xmax - xmin) / self.hazard.layer.width()
        x = xmin
        for i in range(self.hazard.layer.width()):
            if abs(x - clip_xmin) < x_delta:
                # We have found the aligned raster boundary
                break
            x += x_delta
            _ = i

        y_delta = (ymax - ymin) / self.hazard.layer.height()
        y = ymin
        for i in range(self.hazard.layer.width()):
            if abs(y - clip_ymin) < y_delta:
                # We have found the aligned raster boundary
                break
            y += y_delta
        clip_extent = [x, y, x + width * x_delta, y + height * y_delta]

        # Clip hazard raster
        small_raster = clip_raster(self.hazard.layer, width, height,
                                   QgsRectangle(*clip_extent))

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        index, flood_cells_map = _raster_to_vector_cells(
            small_raster, threshold_min, threshold_max,
            self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(QgsCoordinateReferenceSystem("EPSG:4326"),
                                    self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        if len(flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > %s. '
                'Please check the value or use other extent.' %
                (threshold_min, ))
            raise GetDataError(message)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(line_layer_tmp, filename,
                                                "utf-8", None,
                                                "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(self.exposure.layer, request, index,
                                           flood_cells_map, line_layer,
                                           target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(self.exposure.layer.crs(),
                                           output_crs)
        flooded_keyword = tr('Flooded in the threshold (m)')
        self.affected_road_categories = [flooded_keyword]
        self.affected_road_lengths = OrderedDict([(flooded_keyword, {})])
        self.road_lengths = OrderedDict()

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)
        for road in roads_data:
            attributes = road.attributes()
            road_type = attributes[road_type_field_index]
            if road_type.__class__.__name__ == 'QPyNullVariant':
                road_type = tr('Other')
            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            if road_type not in self.road_lengths:
                self.affected_road_lengths[flooded_keyword][road_type] = 0
                self.road_lengths[road_type] = 0

            self.road_lengths[road_type] += length
            if attributes[target_field_index] == 1:
                self.affected_road_lengths[flooded_keyword][
                    road_type] += length

        impact_summary = self.html_report()

        # For printing map purpose
        map_title = tr('Roads inundated')
        legend_title = tr('Road inundated status')

        style_classes = [
            dict(label=tr('Not Inundated'),
                 value=0,
                 colour='#1EFC7C',
                 transparency=0,
                 size=0.5),
            dict(label=tr('Inundated'),
                 value=1,
                 colour='#F31A1C',
                 transparency=0,
                 size=0.5)
        ]
        style_info = dict(target_field=target_field,
                          style_classes=style_classes,
                          style_type='categorizedSymbol')

        # Convert QgsVectorLayer to inasafe layer and return it
        line_layer = Vector(data=line_layer,
                            name=tr('Flooded roads'),
                            keywords={
                                'impact_summary': impact_summary,
                                'map_title': map_title,
                                'legend_title': legend_title,
                                'target_field': target_field
                            },
                            style_info=style_info)
        self._impact = line_layer
        return line_layer
Exemplo n.º 8
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    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """

        target_field = self.target_field

        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        exposure_value_mapping = self.exposure.keyword('value_mapping')

        # Get parameters from IF parameter
        threshold_min = self.parameters['min threshold'].value
        threshold_max = self.parameters['max threshold'].value

        if threshold_min > threshold_max:
            message = tr(
                'The minimal threshold is greater than the maximal specified '
                'threshold. Please check the values.')
            raise GetDataError(message)

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Clip hazard raster
        small_raster = align_clip_raster(self.hazard.layer, viewport_extent)

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(
            QgsCoordinateReferenceSystem("EPSG:4326"),
            self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(
            line_layer_tmp, filename, "utf-8", None, "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        index, flood_cells_map = _raster_to_vector_cells(
            small_raster,
            threshold_min,
            threshold_max,
            self.exposure.layer.crs())

        if len(flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > %s. '
                'Please check the value or use other extent.' % (
                    threshold_min, ))
            raise GetDataError(message)

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(
            self.exposure.layer,
            request,
            index,
            flood_cells_map,
            line_layer,
            target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(
            self.exposure.layer.crs(), output_crs)

        classes = [tr('Flooded in the threshold (m)')]
        self.init_report_var(classes)

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)

        for road in roads_data:
            attributes = road.attributes()

            usage = attributes[road_type_field_index]
            usage = main_type(usage, exposure_value_mapping)

            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            affected = False
            if attributes[target_field_index] == 1:
                affected = True

            self.classify_feature(classes[0], usage, length, affected)

        self.reorder_dictionaries()

        style_classes = [
            dict(
                label=tr('Not Inundated'), value=0,
                colour='#1EFC7C', transparency=0, size=0.5),
            dict(
                label=tr('Inundated'), value=1,
                colour='#F31A1C', transparency=0, size=0.5)]
        style_info = dict(
            target_field=target_field,
            style_classes=style_classes,
            style_type='categorizedSymbol')

        impact_data = self.generate_data()

        extra_keywords = {
            'map_title': self.metadata().key('map_title'),
            'legend_title': self.metadata().key('legend_title'),
            'target_field': target_field
        }

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        impact_layer = Vector(
            data=line_layer,
            name=self.metadata().key('layer_name'),
            keywords=impact_layer_keywords,
            style_info=style_info)

        impact_layer.impact_data = impact_data
        self._impact = impact_layer
        return impact_layer
Exemplo n.º 9
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    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        self.validate()
        self.prepare()

        self.provenance.append_step(
            'Calculating Step', 'Impact function is calculating the impact.')

        # Thresholds for tsunami hazard zone breakdown.
        low_max = self.parameters['low_threshold'].value
        medium_max = self.parameters['medium_threshold'].value
        high_max = self.parameters['high_threshold'].value

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Align raster extent and viewport
        # assuming they are both in the same projection
        raster_extent = self.hazard.layer.dataProvider().extent()
        clip_xmin = raster_extent.xMinimum()
        # clip_xmax = raster_extent.xMaximum()
        clip_ymin = raster_extent.yMinimum()
        # clip_ymax = raster_extent.yMaximum()
        if viewport_extent[0] > clip_xmin:
            clip_xmin = viewport_extent[0]
        if viewport_extent[1] > clip_ymin:
            clip_ymin = viewport_extent[1]

        height = ((viewport_extent[3] - viewport_extent[1]) /
                  self.hazard.layer.rasterUnitsPerPixelY())
        height = int(height)
        width = ((viewport_extent[2] - viewport_extent[0]) /
                 self.hazard.layer.rasterUnitsPerPixelX())
        width = int(width)

        raster_extent = self.hazard.layer.dataProvider().extent()
        xmin = raster_extent.xMinimum()
        xmax = raster_extent.xMaximum()
        ymin = raster_extent.yMinimum()
        ymax = raster_extent.yMaximum()

        x_delta = (xmax - xmin) / self.hazard.layer.width()
        x = xmin
        for i in range(self.hazard.layer.width()):
            if abs(x - clip_xmin) < x_delta:
                # We have found the aligned raster boundary
                break
            x += x_delta
            _ = i

        y_delta = (ymax - ymin) / self.hazard.layer.height()
        y = ymin
        for i in range(self.hazard.layer.width()):
            if abs(y - clip_ymin) < y_delta:
                # We have found the aligned raster boundary
                break
            y += y_delta
        clip_extent = [x, y, x + width * x_delta, y + height * y_delta]

        # Clip hazard raster
        small_raster = clip_raster(self.hazard.layer, width, height,
                                   QgsRectangle(*clip_extent))

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        ranges = OrderedDict()
        ranges[0] = [0.0, 0.0]
        ranges[1] = [0.0, low_max]
        ranges[2] = [low_max, medium_max]
        ranges[3] = [medium_max, high_max]
        ranges[4] = [high_max, None]

        index, flood_cells_map = _raster_to_vector_cells(
            small_raster, ranges, self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(QgsCoordinateReferenceSystem("EPSG:4326"),
                                    self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)
        """
        if len(low_max_flood_cells_map) == 0 and \
            len(medium_max_flood_cells_map) == 0 and \
            len(high_max_flood_cells_map) == 0 and \
            len(high_min_flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > 0. '
                'Please check the value or use other extent.' % (
                    threshold_min, ))
            raise GetDataError(message)
        """

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(line_layer_tmp, filename,
                                                "utf-8", None,
                                                "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(self.exposure.layer, request, index,
                                           flood_cells_map, line_layer,
                                           target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(self.exposure.layer.crs(),
                                           output_crs)

        # Roads breakdown
        self.road_lengths = OrderedDict()
        self.affected_road_categories = self.hazard_classes
        # Impacted roads breakdown
        self.affected_road_lengths = OrderedDict([
            (self.hazard_classes[0], {}),
            (self.hazard_classes[1], {}),
            (self.hazard_classes[2], {}),
            (self.hazard_classes[3], {}),
            (self.hazard_classes[4], {}),
        ])

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)
        for road in roads_data:
            attributes = road.attributes()
            affected = attributes[target_field_index]
            hazard_zone = self.hazard_classes[affected]
            road_type = attributes[road_type_field_index]
            if road_type.__class__.__name__ == 'QPyNullVariant':
                road_type = tr('Other')
            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            if road_type not in self.road_lengths:
                self.road_lengths[road_type] = 0

            if hazard_zone not in self.affected_road_lengths:
                self.affected_road_lengths[hazard_zone] = {}

            if road_type not in self.affected_road_lengths[hazard_zone]:
                self.affected_road_lengths[hazard_zone][road_type] = 0

            self.road_lengths[road_type] += length
            num_classes = len(self.hazard_classes)
            if attributes[target_field_index] in range(num_classes):
                self.affected_road_lengths[hazard_zone][road_type] += length

        impact_summary = self.html_report()

        # For printing map purpose
        map_title = tr('Roads inundated')
        legend_title = tr('Road inundated status')

        style_classes = [
            # FIXME 0 - 0.1
            dict(label=self.hazard_classes[0] + ': 0m',
                 value=0,
                 colour='#00FF00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[1] + ': <0 - %.1f m' % low_max,
                 value=1,
                 colour='#FFFF00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[2] + ': %.1f - %.1f m' %
                 (low_max + 0.1, medium_max),
                 value=2,
                 colour='#FFB700',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[3] + ': %.1f - %.1f m' %
                 (medium_max + 0.1, high_max),
                 value=3,
                 colour='#FF6F00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[4] + ' > %.1f m' % high_max,
                 value=4,
                 colour='#FF0000',
                 transparency=0,
                 size=1),
        ]
        style_info = dict(target_field=target_field,
                          style_classes=style_classes,
                          style_type='categorizedSymbol')

        extra_keywords = {
            'impact_summary': impact_summary,
            'map_title': map_title,
            'legend_title': legend_title,
            'target_field': target_field
        }

        self.set_if_provenance()

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        line_layer = Vector(data=line_layer,
                            name=tr('Flooded roads'),
                            keywords=impact_layer_keywords,
                            style_info=style_info)
        self._impact = line_layer
        return line_layer
Exemplo n.º 10
0
    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        self.validate()
        self.prepare()

        self.provenance.append_step(
            'Calculating Step',
            'Impact function is calculating the impact.')

        # Thresholds for tsunami hazard zone breakdown.
        low_max = self.parameters['low_threshold'].value
        medium_max = self.parameters['medium_threshold'].value
        high_max = self.parameters['high_threshold'].value

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Align raster extent and viewport
        # assuming they are both in the same projection
        raster_extent = self.hazard.layer.dataProvider().extent()
        clip_xmin = raster_extent.xMinimum()
        # clip_xmax = raster_extent.xMaximum()
        clip_ymin = raster_extent.yMinimum()
        # clip_ymax = raster_extent.yMaximum()
        if viewport_extent[0] > clip_xmin:
            clip_xmin = viewport_extent[0]
        if viewport_extent[1] > clip_ymin:
            clip_ymin = viewport_extent[1]

        height = ((viewport_extent[3] - viewport_extent[1]) /
                  self.hazard.layer.rasterUnitsPerPixelY())
        height = int(height)
        width = ((viewport_extent[2] - viewport_extent[0]) /
                 self.hazard.layer.rasterUnitsPerPixelX())
        width = int(width)

        raster_extent = self.hazard.layer.dataProvider().extent()
        xmin = raster_extent.xMinimum()
        xmax = raster_extent.xMaximum()
        ymin = raster_extent.yMinimum()
        ymax = raster_extent.yMaximum()

        x_delta = (xmax - xmin) / self.hazard.layer.width()
        x = xmin
        for i in range(self.hazard.layer.width()):
            if abs(x - clip_xmin) < x_delta:
                # We have found the aligned raster boundary
                break
            x += x_delta
            _ = i

        y_delta = (ymax - ymin) / self.hazard.layer.height()
        y = ymin
        for i in range(self.hazard.layer.width()):
            if abs(y - clip_ymin) < y_delta:
                # We have found the aligned raster boundary
                break
            y += y_delta
        clip_extent = [x, y, x + width * x_delta, y + height * y_delta]

        # Clip hazard raster
        small_raster = clip_raster(
            self.hazard.layer, width, height, QgsRectangle(*clip_extent))

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        ranges = OrderedDict()
        ranges[0] = [0.0, 0.0]
        ranges[1] = [0.0, low_max]
        ranges[2] = [low_max, medium_max]
        ranges[3] = [medium_max, high_max]
        ranges[4] = [high_max, None]

        index, flood_cells_map = _raster_to_vector_cells(
            small_raster,
            ranges,
            self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(
            QgsCoordinateReferenceSystem("EPSG:4326"),
            self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        """
        if len(low_max_flood_cells_map) == 0 and \
            len(medium_max_flood_cells_map) == 0 and \
            len(high_max_flood_cells_map) == 0 and \
            len(high_min_flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > 0. '
                'Please check the value or use other extent.' % (
                    threshold_min, ))
            raise GetDataError(message)
        """

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(
            line_layer_tmp, filename, "utf-8", None, "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(
            self.exposure.layer,
            request,
            index,
            flood_cells_map,
            line_layer,
            target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(
            self.exposure.layer.crs(), output_crs)

        # Roads breakdown
        self.road_lengths = OrderedDict()
        self.affected_road_categories = self.hazard_classes
        # Impacted roads breakdown
        self.affected_road_lengths = OrderedDict([
            (self.hazard_classes[0], {}),
            (self.hazard_classes[1], {}),
            (self.hazard_classes[2], {}),
            (self.hazard_classes[3], {}),
            (self.hazard_classes[4], {}),
        ])

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)
        for road in roads_data:
            attributes = road.attributes()
            affected = attributes[target_field_index]
            hazard_zone = self.hazard_classes[affected]
            road_type = attributes[road_type_field_index]
            if road_type.__class__.__name__ == 'QPyNullVariant':
                road_type = tr('Other')
            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            if road_type not in self.road_lengths:
                self.road_lengths[road_type] = 0

            if hazard_zone not in self.affected_road_lengths:
                self.affected_road_lengths[hazard_zone] = {}

            if road_type not in self.affected_road_lengths[hazard_zone]:
                self.affected_road_lengths[hazard_zone][road_type] = 0

            self.road_lengths[road_type] += length
            num_classes = len(self.hazard_classes)
            if attributes[target_field_index] in range(num_classes):
                self.affected_road_lengths[hazard_zone][road_type] += length

        impact_summary = self.html_report()

        # For printing map purpose
        map_title = tr('Roads inundated')
        legend_title = tr('Road inundated status')

        style_classes = [
            # FIXME 0 - 0.1
            dict(
                label=self.hazard_classes[0] + ': 0m',
                value=0,
                colour='#00FF00',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[1] + ': <0 - %.1f m' % low_max,
                value=1,
                colour='#FFFF00',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[2] + ': %.1f - %.1f m' % (
                    low_max + 0.1, medium_max),
                value=2,
                colour='#FFB700',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[3] + ': %.1f - %.1f m' % (
                    medium_max + 0.1, high_max),
                value=3,
                colour='#FF6F00',
                transparency=0,
                size=1
            ),

            dict(
                label=self.hazard_classes[4] + ' > %.1f m' % high_max,
                value=4,
                colour='#FF0000',
                transparency=0,
                size=1
            ),
        ]
        style_info = dict(
            target_field=target_field,
            style_classes=style_classes,
            style_type='categorizedSymbol')

        extra_keywords = {
            'impact_summary': impact_summary,
            'map_title': map_title,
            'legend_title': legend_title,
            'target_field': target_field
        }

        self.set_if_provenance()

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        line_layer = Vector(
            data=line_layer,
            name=tr('Flooded roads'),
            keywords=impact_layer_keywords,
            style_info=style_info)
        self._impact = line_layer
        return line_layer
Exemplo n.º 11
0
    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """

        target_field = self.target_field

        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        exposure_value_mapping = self.exposure.keyword('value_mapping')

        # Get parameters from IF parameter
        threshold_min = self.parameters['min threshold'].value
        threshold_max = self.parameters['max threshold'].value

        if threshold_min > threshold_max:
            message = tr(
                'The minimal threshold is greater than the maximal specified '
                'threshold. Please check the values.')
            raise GetDataError(message)

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Clip hazard raster
        small_raster = align_clip_raster(self.hazard.layer, viewport_extent)

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(
            QgsCoordinateReferenceSystem("EPSG:4326"),
            self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(
            line_layer_tmp, filename, "utf-8", None, "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        index, flood_cells_map = _raster_to_vector_cells(
            small_raster,
            threshold_min,
            threshold_max,
            self.exposure.layer.crs())

        if len(flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > %s. '
                'Please check the value or use other extent.' % (
                    threshold_min, ))
            raise GetDataError(message)

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(
            self.exposure.layer,
            request,
            index,
            flood_cells_map,
            line_layer,
            target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(
            self.exposure.layer.crs(), output_crs)

        classes = [tr('Flooded in the threshold (m)')]
        self.init_report_var(classes)

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)

        for road in roads_data:
            attributes = road.attributes()

            usage = attributes[road_type_field_index]
            usage = main_type(usage, exposure_value_mapping)

            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            affected = False
            if attributes[target_field_index] == 1:
                affected = True

            self.classify_feature(classes[0], usage, length, affected)

        self.reorder_dictionaries()

        style_classes = [
            dict(
                label=tr('Not Inundated'), value=0,
                colour='#1EFC7C', transparency=0, size=0.5),
            dict(
                label=tr('Inundated'), value=1,
                colour='#F31A1C', transparency=0, size=0.5)]
        style_info = dict(
            target_field=target_field,
            style_classes=style_classes,
            style_type='categorizedSymbol')

        impact_data = self.generate_data()

        extra_keywords = {
            'map_title': self.map_title(),
            'legend_title': self.metadata().key('legend_title'),
            'target_field': target_field
        }

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        impact_layer = Vector(
            data=line_layer,
            name=self.map_title(),
            keywords=impact_layer_keywords,
            style_info=style_info)

        impact_layer.impact_data = impact_data
        self._impact = impact_layer
        return impact_layer
Exemplo n.º 12
0
    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        # Thresholds for tsunami hazard zone breakdown.
        low_max = self.parameters['low_threshold'].value
        medium_max = self.parameters['medium_threshold'].value
        high_max = self.parameters['high_threshold'].value

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        exposure_value_mapping = self.exposure.keyword('value_mapping')

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Clip hazard raster
        small_raster = align_clip_raster(self.hazard.layer, viewport_extent)

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        ranges = ranges_according_thresholds(low_max, medium_max, high_max)

        index, flood_cells_map = _raster_to_vector_cells(
            small_raster,
            ranges,
            self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(
            QgsCoordinateReferenceSystem("EPSG:4326"),
            self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(
            line_layer_tmp, filename, "utf-8", None, "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(
            self.exposure.layer,
            request,
            index,
            flood_cells_map,
            line_layer,
            target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(
            self.exposure.layer.crs(), output_crs)

        # Roads breakdown
        self.init_report_var(self.hazard_classes)

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)

        for road in roads_data:
            attributes = road.attributes()

            affected = attributes[target_field_index]
            if isinstance(affected, QPyNullVariant):
                continue
            else:
                hazard_zone = self.hazard_classes[affected]

            usage = attributes[road_type_field_index]
            usage = main_type(usage, exposure_value_mapping)

            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            affected = False
            num_classes = len(self.hazard_classes)
            if attributes[target_field_index] in range(num_classes):
                affected = True
            self.classify_feature(hazard_zone, usage, length, affected)

        self.reorder_dictionaries()

        style_classes = [
            # FIXME 0 - 0.1
            dict(
                label=self.hazard_classes[0] + ': 0m',
                value=0,
                colour='#00FF00',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[1] + ': >0 - %.1f m' % low_max,
                value=1,
                colour='#FFFF00',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[2] + ': %.1f - %.1f m' % (
                    low_max + 0.1, medium_max),
                value=2,
                colour='#FFB700',
                transparency=0,
                size=1
            ),
            dict(
                label=self.hazard_classes[3] + ': %.1f - %.1f m' % (
                    medium_max + 0.1, high_max),
                value=3,
                colour='#FF6F00',
                transparency=0,
                size=1
            ),

            dict(
                label=self.hazard_classes[4] + ' > %.1f m' % high_max,
                value=4,
                colour='#FF0000',
                transparency=0,
                size=1
            ),
        ]
        style_info = dict(
            target_field=target_field,
            style_classes=style_classes,
            style_type='categorizedSymbol')

        impact_data = self.generate_data()

        extra_keywords = {
            'map_title': self.metadata().key('map_title'),
            'legend_title': self.metadata().key('legend_title'),
            'target_field': target_field
        }

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        impact_layer = Vector(
            data=line_layer,
            name=self.metadata().key('layer_name'),
            keywords=impact_layer_keywords,
            style_info=style_info)

        impact_layer.impact_data = impact_data
        self._impact = impact_layer
        return impact_layer
Exemplo n.º 13
0
    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        # Thresholds for tsunami hazard zone breakdown.
        low_max = self.parameters['low_threshold'].value
        medium_max = self.parameters['medium_threshold'].value
        high_max = self.parameters['high_threshold'].value

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        exposure_value_mapping = self.exposure.keyword('value_mapping')

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Clip hazard raster
        small_raster = align_clip_raster(self.hazard.layer, viewport_extent)

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        ranges = ranges_according_thresholds(low_max, medium_max, high_max)

        index, flood_cells_map = _raster_to_vector_cells(
            small_raster, ranges, self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(QgsCoordinateReferenceSystem("EPSG:4326"),
                                    self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(line_layer_tmp, filename,
                                                "utf-8", None,
                                                "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(self.exposure.layer, request, index,
                                           flood_cells_map, line_layer,
                                           target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(self.exposure.layer.crs(),
                                           output_crs)

        # Roads breakdown
        self.init_report_var(self.hazard_classes)

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)

        for road in roads_data:
            attributes = road.attributes()

            affected = attributes[target_field_index]
            if isinstance(affected, QPyNullVariant):
                continue
            else:
                hazard_zone = self.hazard_classes[affected]

            usage = attributes[road_type_field_index]
            usage = main_type(usage, exposure_value_mapping)

            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            affected = False
            num_classes = len(self.hazard_classes)
            if attributes[target_field_index] in range(num_classes):
                affected = True
            self.classify_feature(hazard_zone, usage, length, affected)

        self.reorder_dictionaries()

        style_classes = [
            # FIXME 0 - 0.1
            dict(label=self.hazard_classes[0] + ': 0m',
                 value=0,
                 colour='#00FF00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[1] + ': >0 - %.1f m' % low_max,
                 value=1,
                 colour='#FFFF00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[2] + ': %.1f - %.1f m' %
                 (low_max + 0.1, medium_max),
                 value=2,
                 colour='#FFB700',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[3] + ': %.1f - %.1f m' %
                 (medium_max + 0.1, high_max),
                 value=3,
                 colour='#FF6F00',
                 transparency=0,
                 size=1),
            dict(label=self.hazard_classes[4] + ' > %.1f m' % high_max,
                 value=4,
                 colour='#FF0000',
                 transparency=0,
                 size=1),
        ]
        style_info = dict(target_field=target_field,
                          style_classes=style_classes,
                          style_type='categorizedSymbol')

        impact_data = self.generate_data()

        extra_keywords = {
            'map_title': self.map_title(),
            'legend_title': self.metadata().key('legend_title'),
            'target_field': target_field
        }

        impact_layer_keywords = self.generate_impact_keywords(extra_keywords)

        # Convert QgsVectorLayer to inasafe layer and return it
        impact_layer = Vector(data=line_layer,
                              name=self.map_title(),
                              keywords=impact_layer_keywords,
                              style_info=style_info)

        impact_layer.impact_data = impact_data
        self._impact = impact_layer
        return impact_layer
Exemplo n.º 14
0
def interpolate_polygon_polygon(source, target, wgs84_extent):
    """ Transfer values from source polygon layer to the target polygon layer.

    This method will do a spatial join: the output layer will contain all
    features from target layer, with the addition of attributes of intersecting
    feature from the source layer. If there is not intersecting source feature,
    the output layer will still contain the target feature, with null
    attributes from the source layer.

    The intersection test considers only centroids of target features
    (not the whole polygon geometry).

    If more features from source layer intersect a target feature, only
    the first intersecting source feature will be used.

    :param source: Source polygon layer
    :type source: QgsVectorLayer

    :param target: Target polygon layer
    :type target: QgsVectorLayer

    :param wgs84_extent: Requested extent for analysis, in WGS84 coordinates
    :type wgs84_extent: QgsRectangle

    :return: output layer
    :rtype: QgsVectorLayer
    """

    source_field_count = source.dataProvider().fields().count()
    target_field_count = target.dataProvider().fields().count()

    # Create new layer for writing resulting features.
    # It will contain attributes of both target and source layers
    result = create_layer(target)
    new_fields = source.dataProvider().fields().toList()
    new_fields.append(QgsField('polygon_id', QVariant.Int))
    result.dataProvider().addAttributes(new_fields)
    result.updateFields()
    result_fields = result.dataProvider().fields()

    # setup transform objects between different CRS
    crs_wgs84 = QgsCoordinateReferenceSystem("EPSG:4326")
    wgs84_to_source = QgsCoordinateTransform(crs_wgs84, source.crs())
    wgs84_to_target = QgsCoordinateTransform(crs_wgs84, target.crs())
    source_to_target = QgsCoordinateTransform(source.crs(), target.crs())

    # compute extents in CRS of layers
    source_extent = wgs84_to_source.transformBoundingBox(wgs84_extent)
    target_extent = wgs84_to_target.transformBoundingBox(wgs84_extent)

    # cache source layer (in CRS of target layer)
    source_index = QgsSpatialIndex()
    source_geometries = {}  # key = feature ID, value = QgsGeometry
    source_attributes = {}
    for f in source.getFeatures(QgsFeatureRequest(source_extent)):
        f.geometry().transform(source_to_target)
        source_index.insertFeature(f)
        source_geometries[f.id()] = QgsGeometry(f.geometry())
        source_attributes[f.id()] = f.attributes()

    # Go through all features in target layer and for each decide
    # whether it is intersected by any source feature
    result_features = []
    for f in target.getFeatures(QgsFeatureRequest(target_extent)):
        # we use just centroids of target polygons
        centroid_geometry = f.geometry().centroid()
        centroid = centroid_geometry.asPoint()
        rect = QgsRectangle(
            centroid.x(), centroid.y(),
            centroid.x(), centroid.y())
        ids = source_index.intersects(rect)

        has_matching_source = False
        for source_id in ids:
            if source_geometries[source_id].intersects(centroid_geometry):
                # we have found intersection between source and target
                f_result = QgsFeature(result_fields)
                f_result.setGeometry(f.geometry())
                for i in xrange(target_field_count):
                    f_result[i] = f[i]
                for i in xrange(source_field_count):
                    f_result[i + target_field_count] = source_attributes[
                        source_id][i]
                f_result['polygon_id'] = source_id
                result_features.append(f_result)
                has_matching_source = True
                break   # assuming just one source for each target feature

        # if there is no intersecting feature from source layer,
        # we will keep the source attributes null
        if not has_matching_source:
            f_result = QgsFeature(result_fields)
            f_result.setGeometry(f.geometry())
            for i in xrange(target_field_count):
                f_result[i] = f[i]
            result_features.append(f_result)

        if len(result_features) == 1000:
            result.dataProvider().addFeatures(result_features)
            result_features = []

    result.dataProvider().addFeatures(result_features)
    return result
Exemplo n.º 15
0
    def run(self):
        """Run the impact function.

        :returns: A new line layer with inundated roads marked.
        :type: safe_layer
        """
        self.validate()
        self.prepare()

        target_field = self.target_field
        # Get parameters from layer's keywords
        road_class_field = self.exposure.keyword('road_class_field')
        # Get parameters from IF parameter
        threshold_min = self.parameters['min threshold'].value
        threshold_max = self.parameters['max threshold'].value

        if threshold_min > threshold_max:
            message = tr(
                'The minimal threshold is greater than the maximal specified '
                'threshold. Please check the values.')
            raise GetDataError(message)

        # reproject self.extent to the hazard projection
        hazard_crs = self.hazard.layer.crs()
        hazard_authid = hazard_crs.authid()

        if hazard_authid == 'EPSG:4326':
            viewport_extent = self.requested_extent
        else:
            geo_crs = QgsCoordinateReferenceSystem()
            geo_crs.createFromSrid(4326)
            viewport_extent = extent_to_geo_array(
                QgsRectangle(*self.requested_extent), geo_crs, hazard_crs)

        # Align raster extent and viewport
        # assuming they are both in the same projection
        raster_extent = self.hazard.layer.dataProvider().extent()
        clip_xmin = raster_extent.xMinimum()
        # clip_xmax = raster_extent.xMaximum()
        clip_ymin = raster_extent.yMinimum()
        # clip_ymax = raster_extent.yMaximum()
        if viewport_extent[0] > clip_xmin:
            clip_xmin = viewport_extent[0]
        if viewport_extent[1] > clip_ymin:
            clip_ymin = viewport_extent[1]
        # TODO: Why have these two clauses when they are not used?
        # Commenting out for now.
        # if viewport_extent[2] < clip_xmax:
        #     clip_xmax = viewport_extent[2]
        # if viewport_extent[3] < clip_ymax:
        #     clip_ymax = viewport_extent[3]

        height = ((viewport_extent[3] - viewport_extent[1]) /
                  self.hazard.layer.rasterUnitsPerPixelY())
        height = int(height)
        width = ((viewport_extent[2] - viewport_extent[0]) /
                 self.hazard.layer.rasterUnitsPerPixelX())
        width = int(width)

        raster_extent = self.hazard.layer.dataProvider().extent()
        xmin = raster_extent.xMinimum()
        xmax = raster_extent.xMaximum()
        ymin = raster_extent.yMinimum()
        ymax = raster_extent.yMaximum()

        x_delta = (xmax - xmin) / self.hazard.layer.width()
        x = xmin
        for i in range(self.hazard.layer.width()):
            if abs(x - clip_xmin) < x_delta:
                # We have found the aligned raster boundary
                break
            x += x_delta
            _ = i

        y_delta = (ymax - ymin) / self.hazard.layer.height()
        y = ymin
        for i in range(self.hazard.layer.width()):
            if abs(y - clip_ymin) < y_delta:
                # We have found the aligned raster boundary
                break
            y += y_delta
        clip_extent = [x, y, x + width * x_delta, y + height * y_delta]

        # Clip hazard raster
        small_raster = clip_raster(
            self.hazard.layer, width, height, QgsRectangle(*clip_extent))

        # Create vector features from the flood raster
        # For each raster cell there is one rectangular polygon
        # Data also get spatially indexed for faster operation
        index, flood_cells_map = _raster_to_vector_cells(
            small_raster,
            threshold_min,
            threshold_max,
            self.exposure.layer.crs())

        # Filter geometry and data using the extent
        ct = QgsCoordinateTransform(
            QgsCoordinateReferenceSystem("EPSG:4326"),
            self.exposure.layer.crs())
        extent = ct.transformBoundingBox(QgsRectangle(*self.requested_extent))
        request = QgsFeatureRequest()
        request.setFilterRect(extent)

        if len(flood_cells_map) == 0:
            message = tr(
                'There are no objects in the hazard layer with "value" > %s. '
                'Please check the value or use other extent.' % (
                    threshold_min, ))
            raise GetDataError(message)

        # create template for the output layer
        line_layer_tmp = create_layer(self.exposure.layer)
        new_field = QgsField(target_field, QVariant.Int)
        line_layer_tmp.dataProvider().addAttributes([new_field])
        line_layer_tmp.updateFields()

        # create empty output layer and load it
        filename = unique_filename(suffix='.shp')
        QgsVectorFileWriter.writeAsVectorFormat(
            line_layer_tmp, filename, "utf-8", None, "ESRI Shapefile")
        line_layer = QgsVectorLayer(filename, "flooded roads", "ogr")

        # Do the heavy work - for each road get flood polygon for that area and
        # do the intersection/difference to find out which parts are flooded
        _intersect_lines_with_vector_cells(
            self.exposure.layer,
            request,
            index,
            flood_cells_map,
            line_layer,
            target_field)

        target_field_index = line_layer.dataProvider().\
            fieldNameIndex(target_field)

        # Generate simple impact report
        epsg = get_utm_epsg(self.requested_extent[0], self.requested_extent[1])
        output_crs = QgsCoordinateReferenceSystem(epsg)
        transform = QgsCoordinateTransform(
            self.exposure.layer.crs(), output_crs)
        flooded_keyword = tr('Flooded in the threshold (m)')
        self.affected_road_categories = [flooded_keyword]
        self.affected_road_lengths = OrderedDict([
            (flooded_keyword, {})])
        self.road_lengths = OrderedDict()

        if line_layer.featureCount() < 1:
            raise ZeroImpactException()

        roads_data = line_layer.getFeatures()
        road_type_field_index = line_layer.fieldNameIndex(road_class_field)
        for road in roads_data:
            attributes = road.attributes()
            road_type = attributes[road_type_field_index]
            if road_type.__class__.__name__ == 'QPyNullVariant':
                road_type = tr('Other')
            geom = road.geometry()
            geom.transform(transform)
            length = geom.length()

            if road_type not in self.road_lengths:
                self.affected_road_lengths[flooded_keyword][road_type] = 0
                self.road_lengths[road_type] = 0

            self.road_lengths[road_type] += length
            if attributes[target_field_index] == 1:
                self.affected_road_lengths[
                    flooded_keyword][road_type] += length

        impact_summary = self.html_report()

        # For printing map purpose
        map_title = tr('Roads inundated')
        legend_title = tr('Road inundated status')

        style_classes = [
            dict(
                label=tr('Not Inundated'), value=0,
                colour='#1EFC7C', transparency=0, size=0.5),
            dict(
                label=tr('Inundated'), value=1,
                colour='#F31A1C', transparency=0, size=0.5)]
        style_info = dict(
            target_field=target_field,
            style_classes=style_classes,
            style_type='categorizedSymbol')

        # Convert QgsVectorLayer to inasafe layer and return it
        line_layer = Vector(
            data=line_layer,
            name=tr('Flooded roads'),
            keywords={
                'impact_summary': impact_summary,
                'map_title': map_title,
                'legend_title': legend_title,
                'target_field': target_field},
            style_info=style_info)
        self._impact = line_layer
        return line_layer