Example #1
0
 def make_curve_builders(self, oqparam):
     """
     Populate the inner lists .loss_types, .curve_builders.
     """
     default_loss_ratios = numpy.linspace(
         0, 1, oqparam.loss_curve_resolution + 1)[1:]
     loss_types = self._get_loss_types()
     for l, loss_type in enumerate(loss_types):
         if oqparam.calculation_mode == 'classical_risk':
             all_ratios = [self[key].loss_ratios[loss_type]
                           for key in sorted(self)]
             curve_resolutions = map(len, all_ratios)
             if len(set(curve_resolutions)) > 1:
                 lines = []
                 for wf, cr in zip(self.values(), curve_resolutions):
                     lines.append(
                         '%s %d' % (wf.risk_functions[loss_type], cr))
                 logging.warn('Inconsistent num_loss_ratios:\n%s',
                              '\n'.join(lines))
             cb = scientific.CurveBuilder(
                 loss_type, all_ratios[0], True,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         elif loss_type in oqparam.loss_ratios:  # loss_ratios provided
             cb = scientific.CurveBuilder(
                 loss_type, oqparam.loss_ratios[loss_type], True,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         else:  # no loss_ratios provided
             cb = scientific.CurveBuilder(
                 loss_type, default_loss_ratios, False,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         self.curve_builders.append(cb)
         self.loss_types.append(loss_type)
         self.lti[loss_type] = l
Example #2
0
 def make_curve_builders(self, oqparam):
     """
     Populate the inner lists .loss_types, .curve_builders.
     """
     default_loss_ratios = numpy.linspace(
         0, 1, oqparam.loss_curve_resolution + 1)[1:]
     for i, loss_type in enumerate(self.get_loss_types()):
         if loss_type in oqparam.loss_ratios:
             cb = scientific.CurveBuilder(loss_type,
                                          oqparam.loss_ratios[loss_type],
                                          user_provided=True)
         else:
             cb = scientific.CurveBuilder(loss_type,
                                          default_loss_ratios,
                                          user_provided=False)
         self.curve_builders.append(cb)
         self.loss_types.append(loss_type)
         self.lti[loss_type] = i
Example #3
0
    def test_lrem_lr_cov_special_cases(self):
        # Test LREM computation for points in a vuln curve where the loss ratio
        # > 0 and the CoV = 0, or loss ratio = 0 and CoV = 0.
        # If LR > 0 and CoV = 0, the PoE for values <= this LR are 1, and >
        # this LR are 0.
        # If LR = 0 and CoV = 0, the PoE will be 0.
        curve = scientific.VulnerabilityFunction(
            self.ID,
            self.IMT,
            [0.1, 0.2, 0.3, 0.45, 0.6],  # IMLs
            [0.0, 0.1, 0.2, 0.4, 1.2],  # loss ratios
            [0.0, 0.0, 0.3, 0.2, 0.1],  # CoVs
            'LN')
        loss_ratios, lrem = curve.loss_ratio_exceedance_matrix(5)
        expected_lrem = numpy.array([
            [0.000, 1.000, 1.000, 1.000, 1.000],
            [0.000, 1.000, 1.000, 1.000, 1.000],
            [0.000, 1.000, 1.000, 1.000, 1.000],
            [0.000, 1.000, 1.000, 1.000, 1.000],
            [0.000, 1.000, 0.999, 1.000, 1.000],
            [0.000, 1.000, 0.987, 1.000, 1.000],
            [0.000, 0.000, 0.944, 1.000, 1.000],
            [0.000, 0.000, 0.857, 1.000, 1.000],
            [0.000, 0.000, 0.730, 1.000, 1.000],
            [0.000, 0.000, 0.584, 1.000, 1.000],
            [0.000, 0.000, 0.442, 1.000, 1.000],
            [0.000, 0.000, 0.221, 0.993, 1.000],
            [0.000, 0.000, 0.098, 0.956, 1.000],
            [0.000, 0.000, 0.040, 0.848, 1.000],
            [0.000, 0.000, 0.016, 0.667, 1.000],
            [0.000, 0.000, 0.006, 0.461, 1.000],
            [0.000, 0.000, 0.000, 0.036, 1.000],
            [0.000, 0.000, 0.000, 0.001, 1.000],
            [0.000, 0.000, 0.000, 0.000, 0.999],
            [0.000, 0.000, 0.000, 0.000, 0.917],
            [0.000, 0.000, 0.000, 0.000, 0.480],
        ])
        aaae(lrem, expected_lrem, decimal=3)

        expected_counts = numpy.matrix([[4, 4, 4, 4, 4], [4, 4, 4, 4, 4],
                                        [4, 4, 4, 4, 4], [4, 4, 4, 4, 4],
                                        [4, 4, 4, 4, 3], [4, 4, 4, 4, 3],
                                        [3, 3, 3, 3, 2], [3, 3, 3, 3, 2],
                                        [3, 3, 3, 2, 2], [3, 3, 2, 2, 2],
                                        [3, 3, 2, 2, 2], [3, 2, 2, 2, 1],
                                        [2, 2, 2, 2, 1], [2, 2, 2, 2, 1],
                                        [2, 2, 2, 1, 1], [2, 2, 1, 1, 1],
                                        [1, 1, 1, 1, 1], [1, 1, 1, 1, 1],
                                        [1, 1, 1, 1, 0], [1, 1, 1, 1, 0],
                                        [1, 1, 0, 0, 0]])
        # this is a test with curve_resolution=5, i.e. with ratios
        # [0.2, 0.4, 0.6, 0.8, 1.]; for each row in the lrem we
        # count how many ratios are greater equal than each ratio
        b = scientific.CurveBuilder('structural',
                                    numpy.linspace(0.2, 1, 5),
                                    user_provided=True)
        aaae(b.build_counts(expected_lrem), expected_counts)
Example #4
0
 def make_curve_builders(self, oqparam):
     """
     Populate the inner lists .loss_types, .curve_builders.
     """
     default_loss_ratios = numpy.linspace(
         0, 1, oqparam.loss_curve_resolution + 1)[1:]
     loss_types = self._get_loss_types()
     for l, loss_type in enumerate(loss_types):
         if oqparam.calculation_mode in ('classical', 'classical_risk'):
             curve_resolutions = set()
             lines = []
             for key in sorted(self):
                 rm = self[key]
                 if loss_type in rm.loss_ratios:
                     ratios = rm.loss_ratios[loss_type]
                     curve_resolutions.add(len(ratios))
                     lines.append(
                         '%s %d' %
                         (rm.risk_functions[loss_type], len(ratios)))
             if len(curve_resolutions) > 1:
                 logging.info('Different num_loss_ratios:\n%s',
                              '\n'.join(lines))
             cb = scientific.CurveBuilder(
                 loss_type,
                 ratios,
                 True,
                 oqparam.conditional_loss_poes,
                 oqparam.insured_losses,
                 curve_resolution=max(curve_resolutions))
         elif loss_type in oqparam.loss_ratios:  # loss_ratios provided
             cb = scientific.CurveBuilder(loss_type,
                                          oqparam.loss_ratios[loss_type],
                                          True,
                                          oqparam.conditional_loss_poes,
                                          oqparam.insured_losses)
         else:  # no loss_ratios provided
             cb = scientific.CurveBuilder(loss_type, default_loss_ratios,
                                          False,
                                          oqparam.conditional_loss_poes,
                                          oqparam.insured_losses)
         self.curve_builders.append(cb)
         self.loss_types.append(loss_type)
         self.lti[loss_type] = l
Example #5
0
 def make_curve_builders(self, oqparam):
     """
     Populate the inner lists .loss_types, .curve_builders.
     """
     for i, loss_type in enumerate(self.get_loss_types()):
         if not oqparam.loss_ratios:
             loss_ratios = numpy.logspace(-10, 0,
                                          oqparam.loss_curve_resolution)
         else:
             loss_ratios = oqparam.loss_ratios[loss_type]
         cb = scientific.CurveBuilder(loss_type, loss_ratios)
         self.curve_builders.append(cb)
         self.loss_types.append(loss_type)
         self.lti[loss_type] = i
Example #6
0
 def make_curve_builder(self, oqparam):
     # NB: populate the inner lists .loss_types too
     cbs = []
     default_loss_ratios = numpy.linspace(
         0, 1, oqparam.loss_curve_resolution + 1)[1:]
     loss_types = self._get_loss_types()
     ses_ratio = oqparam.ses_ratio if oqparam.calculation_mode in (
         'event_based_risk', ) else 1
     for l, loss_type in enumerate(loss_types):
         if oqparam.calculation_mode in ('classical', 'classical_risk'):
             curve_resolutions = set()
             lines = []
             for key in sorted(self):
                 rm = self[key]
                 if loss_type in rm.loss_ratios:
                     ratios = rm.loss_ratios[loss_type]
                     curve_resolutions.add(len(ratios))
                     lines.append(
                         '%s %d' %
                         (rm.risk_functions[loss_type], len(ratios)))
             if len(curve_resolutions) > 1:  # example in test_case_5
                 logging.info('Different num_loss_ratios:\n%s',
                              '\n'.join(lines))
             cb = scientific.LossTypeCurveBuilder(
                 loss_type, max(curve_resolutions), ratios, ses_ratio, True,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         elif loss_type in oqparam.loss_ratios:  # loss_ratios provided
             cb = scientific.LossTypeCurveBuilder(
                 loss_type, oqparam.loss_curve_resolution,
                 oqparam.loss_ratios[loss_type], ses_ratio, True,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         else:  # no loss_ratios provided
             cb = scientific.LossTypeCurveBuilder(
                 loss_type, oqparam.loss_curve_resolution,
                 default_loss_ratios, ses_ratio, False,
                 oqparam.conditional_loss_poes, oqparam.insured_losses)
         cbs.append(cb)
         cb.index = l
         self.lti[loss_type] = l
     return scientific.CurveBuilder(cbs, oqparam.insured_losses,
                                    oqparam.conditional_loss_poes)
Example #7
0
    def post_execute(self, result):
        """
        Extract from the result dictionary
        rlz.ordinal -> (loss_type, tag) -> [(asset.id, loss), ...]
        several interesting outputs.
        """
        oq = self.oqparam
        # take the cached self.rlzs_assoc and write it on the datastore
        self.rlzs_assoc = self.rlzs_assoc
        rlzs = self.rlzs_assoc.realizations
        loss_types = self.riskmodel.get_loss_types()

        C = oq.loss_curve_resolution
        self.loss_curve_dt = numpy.dtype(
            [('losses', (float, C)), ('poes', (float, C)), ('avg', float)])

        if oq.conditional_loss_poes:
            lm_names = _loss_map_names(oq.conditional_loss_poes)
            self.loss_map_dt = numpy.dtype([(f, float) for f in lm_names])

        self.assets = assets = riskinput.sorted_assets(self.assets_by_site)

        self.specific_assets = specific_assets = [
            a for a in assets if a.id in self.oqparam.specific_assets]
        specific_asset_refs = set(self.oqparam.specific_assets)

        N = len(assets)

        event_loss_asset = [{} for rlz in rlzs]
        event_loss = [{} for rlz in rlzs]

        loss_curves = self.zeros(N, self.loss_curve_dt)
        ins_curves = self.zeros(N, self.loss_curve_dt)
        if oq.conditional_loss_poes:
            loss_maps = self.zeros(N, self.loss_map_dt)
        agg_loss_curve = self.zeros(1, self.loss_curve_dt)

        for i in sorted(result):
            rlz = rlzs[i]

            data_by_lt_tag = result[i]
            # (loss_type, asset_id) -> [(tag, loss, ins_loss), ...]
            elass = {(loss_type, asset.id): [] for asset in assets
                     for loss_type in loss_types}
            elagg = []  # aggregate event loss
            nonzero = total = 0
            for loss_type, tag in data_by_lt_tag:
                d = data_by_lt_tag[loss_type, tag]
                if tag == 'counts_matrix':
                    assets, counts = d.keys(), d.values()
                    indices = numpy.array([asset.idx for asset in assets])
                    asset_values = workflows.get_values(loss_type, assets)
                    poes = scientific.build_poes(
                        counts, oq.ses_per_logic_tree_path)
                    cb = scientific.CurveBuilder(
                        loss_type, numpy.linspace(0, 1, C))
                    lcurves = cb.build_loss_curves(
                        poes, asset_values, indices, N)
                    self.store('lcurves/' + loss_type, rlz, lcurves)
                    continue

                for aid, loss, ins_loss in d['data']:
                    elass[loss_type, aid].append((tag, loss, ins_loss))

                # aggregates
                elagg.append((loss_type, tag, d['loss'], d['ins_loss']))
                nonzero += d['nonzero']
                total += d['total']
            logging.info('rlz=%d: %d/%d nonzero losses', i, nonzero, total)

            if elass:
                data_by_lt = collections.defaultdict(list)
                for (loss_type, asset_id), rows in elass.items():
                    for tag, loss, ins_loss in rows:
                        data_by_lt[loss_type].append(
                            (tag, asset_id, loss, ins_loss))
                for loss_type, data in data_by_lt.items():
                    event_loss_asset[i][loss_type] = sorted(
                        # data contains rows (tag, asset, loss, ins_loss)
                        (t, a, l, i) for t, a, l, i in data
                        if a in specific_asset_refs)

                    # build the loss curves per asset
                    lc = self.build_loss_curves(elass, loss_type, 1)
                    loss_curves[loss_type] = lc

                    if oq.insured_losses:
                        # build the insured loss curves per asset
                        ic = self.build_loss_curves(elass, loss_type, 2)
                        ins_curves[loss_type] = ic

                    if oq.conditional_loss_poes:
                        # build the loss maps per asset, array of shape (N, P)
                        losses_poes = numpy.array(  # shape (N, 2, C)
                            [lc['losses'], lc['poes']]).transpose(1, 0, 2)
                        lmaps = scientific.loss_map_matrix(
                            oq.conditional_loss_poes, losses_poes)  # (P, N)
                        for lm, lmap in zip(lm_names, lmaps):
                            loss_maps[loss_type][lm] = lmap

            self.store('loss_curves', rlz, loss_curves)
            if oq.insured_losses:
                self.store('ins_curves', rlz, ins_curves)
            if oq.conditional_loss_poes:
                self.store('loss_maps', rlz, loss_maps)

            if elagg:
                for loss_type, rows in groupby(
                        elagg, operator.itemgetter(0)).items():
                    event_loss[i][loss_type] = [row[1:] for row in rows]
                    # aggregate loss curve for all tags
                    losses, poes, avg, _ = self.build_agg_loss_curve_and_map(
                        [loss for _lt, _tag, loss, _ins_loss in rows])
                    # NB: there is no aggregate insured loss curve
                    agg_loss_curve[loss_type][0] = (losses, poes, avg)
                    # NB: the aggregated loss_map is not stored
                self.store('agg_loss_curve', rlz, agg_loss_curve)

        if specific_assets:
            self.event_loss_asset = event_loss_asset
        self.event_loss = event_loss

        # store statistics (i.e. mean and quantiles) for curves and maps
        if len(self.rlzs_assoc.realizations) > 1:
            self.compute_store_stats('loss_curves')
            self.compute_store_stats('agg_loss_curve')