예제 #1
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def test_mask_shape():
    axis = MapAxis.from_edges([1, 3, 10], unit="TeV", interp="log", name="energy")
    geom_1 = WcsGeom.create(binsz=1, width=3, axes=[axis])
    geom_2 = WcsGeom.create(binsz=1, width=5, axes=[axis])

    dataset_1 = MapDataset.create(geom_1)
    dataset_2 = MapDataset.create(geom_2)
    dataset_1.psf = None
    dataset_2.psf = None
    dataset_1.edisp = None
    dataset_2.edisp = None

    model = SkyModel(
        spectral_model=PowerLawSpectralModel(), spatial_model=GaussianSpatialModel()
    )

    dataset_1.model = model
    dataset_2.model = model

    fpe = FluxPointsEstimator(
        datasets=[dataset_2, dataset_1], e_edges=[1, 10] * u.TeV, source="source"
    )

    with pytest.raises(ValueError):
        fpe.run()
예제 #2
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def test_mask_shape():
    axis = MapAxis.from_edges([1, 3, 10],
                              unit="TeV",
                              interp="log",
                              name="energy")
    geom_1 = WcsGeom.create(binsz=1, width=3, axes=[axis])
    geom_2 = WcsGeom.create(binsz=1, width=5, axes=[axis])

    dataset_1 = MapDataset.create(geom_1)
    dataset_2 = MapDataset.create(geom_2)
    dataset_1.psf = None
    dataset_2.psf = None
    dataset_1.edisp = None
    dataset_2.edisp = None

    model = SkyModel(spectral_model=PowerLawSpectralModel(),
                     spatial_model=GaussianSpatialModel(),
                     name="source")

    dataset_1.models = model
    dataset_2.models = model

    fpe = FluxPointsEstimator(datasets=[dataset_2, dataset_1],
                              e_edges=[1, 10] * u.TeV,
                              source="source")

    fp = fpe.run()

    assert_allclose(fp.table["counts"], 0)
예제 #3
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파일: test_fit.py 프로젝트: gfiusa/gammapy
def test_datasets_io_no_model(tmpdir):
    axis = MapAxis.from_energy_bounds("1 TeV", "10 TeV", nbin=2)
    geom = WcsGeom.create(npix=(5, 5), axes=[axis])
    dataset_1 = MapDataset.create(geom, name="1")
    dataset_2 = MapDataset.create(geom, name="2")

    datasets = Datasets([dataset_1, dataset_2])

    datasets.write(path=tmpdir, prefix="test")

    filename_1 = tmpdir / "test_data_1.fits"
    assert filename_1.exists()

    filename_2 = tmpdir / "test_data_2.fits"
    assert filename_2.exists()
예제 #4
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def test_safe_mask_maker(observations):
    obs = observations[0]

    axis = MapAxis.from_edges([0.1, 1, 10],
                              name="energy",
                              interp="log",
                              unit="TeV")
    geom = WcsGeom.create(npix=(11, 11),
                          axes=[axis],
                          skydir=obs.pointing_radec)

    empty_dataset = MapDataset.create(geom=geom)
    dataset_maker = MapDatasetMaker(offset_max="3 deg")
    safe_mask_maker = SafeMaskMaker(offset_max="3 deg")
    dataset = dataset_maker.run(empty_dataset, obs)

    mask_offset = safe_mask_maker.make_mask_offset_max(dataset=dataset,
                                                       observation=obs)
    assert_allclose(mask_offset.sum(), 109)

    mask_energy_aeff_default = safe_mask_maker.make_mask_energy_aeff_default(
        dataset=dataset, observation=obs)
    assert_allclose(mask_energy_aeff_default.sum(), 242)

    with pytest.raises(NotImplementedError) as excinfo:
        safe_mask_maker.make_mask_energy_edisp_bias(dataset)

    assert "only supported" in str(excinfo.value)

    with pytest.raises(NotImplementedError) as excinfo:
        safe_mask_maker.make_mask_energy_edisp_bias(dataset)

    assert "only supported" in str(excinfo.value)
예제 #5
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def simulate_map_dataset(random_state=0):
    irfs = load_cta_irfs(
        "$GAMMAPY_DATA/cta-1dc/caldb/data/cta/1dc/bcf/South_z20_50h/irf_file.fits"
    )

    skydir = SkyCoord("0 deg", "0 deg", frame="galactic")
    edges = np.logspace(-1, 2, 15) * u.TeV
    energy_axis = MapAxis.from_edges(edges=edges, name="energy", interp="log")

    geom = WcsGeom.create(skydir=skydir,
                          width=(4, 4),
                          binsz=0.1,
                          axes=[energy_axis],
                          frame="galactic")

    gauss = GaussianSpatialModel(lon_0="0 deg",
                                 lat_0="0 deg",
                                 sigma="0.4 deg",
                                 frame="galactic")
    pwl = PowerLawSpectralModel(amplitude="1e-11 cm-2 s-1 TeV-1")
    skymodel = SkyModel(spatial_model=gauss, spectral_model=pwl, name="source")

    obs = Observation.create(pointing=skydir, livetime=1 * u.h, irfs=irfs)
    empty = MapDataset.create(geom)
    maker = MapDatasetMaker(
        selection=["exposure", "background", "psf", "edisp"])
    dataset = maker.run(empty, obs)

    dataset.models = skymodel
    dataset.fake(random_state=random_state)
    return dataset
예제 #6
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파일: test_fit.py 프로젝트: gfiusa/gammapy
def test_create(geom, geom_etrue):
    # tests empty datasets created
    migra_axis = MapAxis(nodes=np.linspace(0.0, 3.0, 51),
                         unit="",
                         name="migra")
    rad_axis = MapAxis(nodes=np.linspace(0.0, 1.0, 51),
                       unit="deg",
                       name="theta")
    e_reco = MapAxis.from_edges(np.logspace(-1.0, 1.0, 3),
                                name="energy",
                                unit=u.TeV,
                                interp="log")
    e_true = MapAxis.from_edges(np.logspace(-1.0, 1.0, 4),
                                name="energy",
                                unit=u.TeV,
                                interp="log")
    geom = WcsGeom.create(binsz=0.02, width=(2, 2), axes=[e_reco])
    empty_dataset = MapDataset.create(geom=geom,
                                      energy_axis_true=e_true,
                                      migra_axis=migra_axis,
                                      rad_axis=rad_axis)

    assert empty_dataset.counts.data.shape == (2, 100, 100)

    assert empty_dataset.exposure.data.shape == (3, 100, 100)

    assert empty_dataset.psf.psf_map.data.shape == (3, 50, 10, 10)
    assert empty_dataset.psf.exposure_map.data.shape == (3, 1, 10, 10)

    assert empty_dataset.edisp.edisp_map.data.shape == (3, 50, 10, 10)
    assert empty_dataset.edisp.exposure_map.data.shape == (3, 1, 10, 10)
    assert_allclose(empty_dataset.edisp.edisp_map.data.sum(), 300)

    assert_allclose(empty_dataset.gti.time_delta, 0.0 * u.s)
예제 #7
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def prepare_dataset_simple(filename_dataset):
    """Prepare dataset for a given skymodel."""
    log.info(f"Reading {IRF_FILE}")

    irfs = load_cta_irfs(IRF_FILE)

    edisp_gauss = EnergyDispersion2D.from_gauss(
        e_true=ENERGY_AXIS_TRUE.edges,
        migra=MIGRA_AXIS.edges,
        sigma=0.1,
        bias=0,
        offset=[0, 2, 4, 6, 8] * u.deg,
    )

    irfs["edisp"] = edisp_gauss
    #    irfs["aeff"].data.data = np.ones_like(irfs["aeff"].data.data) * 1e6

    observation = Observation.create(obs_id=1001,
                                     pointing=POINTING,
                                     livetime=LIVETIME,
                                     irfs=irfs)

    empty = MapDataset.create(WCS_GEOM,
                              energy_axis_true=ENERGY_AXIS_TRUE,
                              migra_axis=MIGRA_AXIS)
    #    maker = MapDatasetMaker(selection=["exposure", "edisp"])
    #    maker = MapDatasetMaker(selection=["exposure", "edisp", "background"])
    maker = MapDatasetMaker(
        selection=["exposure", "edisp", "psf", "background"])
    dataset = maker.run(empty, observation)

    filename_dataset.parent.mkdir(exist_ok=True, parents=True)
    log.info(f"Writing {filename_dataset}")
    dataset.write(filename_dataset, overwrite=True)
예제 #8
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def test_adaptive_ring_bkg_maker(pars, geom, observations, exclusion_mask):
    adaptive_ring_bkg_maker = AdaptiveRingBackgroundMaker(
        r_in="0.2 deg",
        width="0.3 deg",
        r_out_max="2 deg",
        stepsize="0.2 deg",
        exclusion_mask=exclusion_mask,
        method=pars["method"],
    )
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="2 deg")
    map_dataset_maker = MapDatasetMaker(offset_max="2 deg")

    dataset = MapDataset.create(geom)
    obs = observations[pars["obs_idx"]]
    dataset = map_dataset_maker.run(dataset, obs)
    dataset = safe_mask_maker.run(dataset, obs)

    dataset = dataset.to_image()
    dataset_on_off = adaptive_ring_bkg_maker.run(dataset)

    mask = dataset.mask_safe
    assert_allclose(dataset_on_off.counts_off.data[mask].sum(),
                    pars["counts_off"])
    assert_allclose(dataset_on_off.acceptance_off.data[mask].sum(),
                    pars["acceptance_off"])
    assert_allclose(dataset_on_off.alpha.data[0][100][100], pars["alpha"])
    assert_allclose(dataset_on_off.exposure.data[0][100][100],
                    pars["exposure"])
예제 #9
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def test_ring_bkg_maker(geom, observations, exclusion_mask):
    ring_bkg_maker = RingBackgroundMaker(r_in="0.2 deg",
                                         width="0.3 deg",
                                         exclusion_mask=exclusion_mask)
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="2 deg")
    map_dataset_maker = MapDatasetMaker(offset_max="2 deg")

    reference = MapDataset.create(geom)
    datasets = []

    for obs in observations:
        dataset = map_dataset_maker.run(reference, obs)
        dataset = safe_mask_maker.run(dataset, obs)
        dataset = dataset.to_image()

        dataset_on_off = ring_bkg_maker.run(dataset)
        datasets.append(dataset_on_off)

    mask = dataset.mask_safe
    assert_allclose(datasets[0].counts_off.data[mask].sum(), 2511333)
    assert_allclose(datasets[1].counts_off.data[mask].sum(), 2143577.0)
    assert_allclose(datasets[0].acceptance_off.data[mask].sum(), 2961300)
    assert_allclose(datasets[1].acceptance_off.data[mask].sum(), 2364657.2)
    assert_allclose(datasets[0].alpha.data[0][100][100], 0.00063745599)
    assert_allclose(datasets[0].exposure.data[0][100][100], 806254444.8480084)
예제 #10
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    def _map_making(self):
        """Make maps and datasets for 3d analysis."""
        log.info("Creating geometry.")

        geom = self._create_geometry(self.settings["datasets"]["geom"])

        geom_irf = dict(energy_axis_true=None, binsz_irf=None, margin_irf=None)
        if "energy-axis-true" in self.settings["datasets"]:
            axis_params = self.settings["datasets"]["energy-axis-true"]
            geom_irf["energy_axis_true"] = MapAxis.from_bounds(**axis_params)
        geom_irf["binsz_irf"] = self.settings["datasets"].get("binsz", None)
        geom_irf["margin_irf"] = self.settings["datasets"].get("margin", None)

        offset_max = Angle(self.settings["datasets"]["offset-max"])
        log.info("Creating datasets.")

        maker = MapDatasetMaker(geom=geom, offset_max=offset_max, **geom_irf)
        if self.settings["datasets"]["stack-datasets"]:
            stacked = MapDataset.create(geom=geom, name="stacked", **geom_irf)
            for obs in self.observations:
                dataset = maker.run(obs)
                stacked.stack(dataset)
            self._extract_irf_kernels(stacked)
            datasets = [stacked]
        else:
            datasets = []
            for obs in self.observations:
                dataset = maker.run(obs)
                self._extract_irf_kernels(dataset)
                datasets.append(dataset)

        self.datasets = Datasets(datasets)
        def empty_dataset(source_pos_radec, map_geom, e_reco_binning, livetime,
                          irf_file, offset):

            source_pos_ra = source_pos_radec["ra"]
            source_pos_dec = source_pos_radec["dec"]

            source = SkyCoord(source_pos_ra,
                              source_pos_dec,
                              unit="deg",
                              frame="icrs")

            e_reco_min = u.Quantity(e_reco_binning["e_reco_min"]).to("TeV")
            e_reco_min = e_reco_min.value
            e_reco_max = u.Quantity(e_reco_binning["e_reco_max"]).to("TeV")
            e_reco_max = e_reco_max.value
            n_e_reco = e_reco_binning["n_e_reco"]

            energy_axis = MapAxis.from_edges(np.logspace(
                np.log10(e_reco_min), np.log10(e_reco_max), n_e_reco),
                                             unit="TeV",
                                             name="energy",
                                             interp="log")

            geom = WcsGeom.create(
                skydir=source,
                binsz=u.Quantity(map_geom["binsize"]).to("deg").value,
                width=(u.Quantity(map_geom["width"]).to("deg").value,
                       u.Quantity(map_geom["width"]).to("deg").value),
                frame="icrs",
                axes=[energy_axis])

            energy_axis_true = MapAxis.from_edges(np.logspace(
                np.log10(e_reco_min), np.log10(e_reco_max), n_e_reco),
                                                  unit="TeV",
                                                  name="energy",
                                                  interp="log")

            pointing = SkyCoord(u.Quantity(source_pos_ra).to("deg"),
                                u.Quantity(source_pos_dec).to("deg") + offset,
                                frame="icrs",
                                unit="deg")

            irfs = load_cta_irfs(irf_file)

            obs = Observation.create(pointing=pointing,
                                     livetime=livetime,
                                     irfs=irfs)

            empty = MapDataset.create(geom, energy_axis_true=energy_axis_true)
            maker = MapDatasetMaker(
                selection=["exposure", "background", "psf", "edisp"])
            maker_safe_mask = SafeMaskMaker(
                methods=["offset-max"],
                offset_max=u.quantity.Quantity(map_geom["width"]) +
                1.0 * u.deg)

            dataset = maker.run(empty, obs)
            dataset = maker_safe_mask.run(dataset, obs)

            return dataset
예제 #12
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def test_map_maker_obs(observations):
    # Test for different spatial geoms and etrue, ereco bins

    geom_reco = geom(ebounds=[0.1, 1, 10])
    e_true = MapAxis.from_edges([0.1, 0.5, 2.5, 10.0],
                                name="energy",
                                unit="TeV",
                                interp="log")
    geom_exp = geom(ebounds=[0.1, 0.5, 2.5, 10.0])

    reference = MapDataset.create(geom=geom_reco,
                                  energy_axis_true=e_true,
                                  binsz_irf=1.0,
                                  margin_irf=1.0)

    maker_obs = MapDatasetMaker(offset_max=2.0 * u.deg, cutout=False)

    map_dataset = maker_obs.run(reference, observations[0])
    assert map_dataset.counts.geom == geom_reco
    assert map_dataset.background_model.map.geom == geom_reco
    assert map_dataset.exposure.geom == geom_exp
    assert map_dataset.edisp.edisp_map.data.shape == (3, 48, 6, 11)
    assert map_dataset.edisp.exposure_map.data.shape == (3, 1, 6, 11)
    assert map_dataset.psf.psf_map.data.shape == (3, 66, 6, 11)
    assert map_dataset.psf.exposure_map.data.shape == (3, 1, 6, 11)
    assert_allclose(map_dataset.gti.time_delta, 1800.0 * u.s)
    assert map_dataset.name == "obs_110380"
예제 #13
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    def _map_making(self):
        """Make maps and datasets for 3d analysis."""
        log.info("Creating geometry.")
        geom = self._create_geometry(self.settings["datasets"]["geom"])

        if "geom-irf" in self.settings["datasets"]:
            geom_irf = self._create_geometry(self.settings["datasets"]["geom-irf"])
        else:
            geom_irf = geom.to_binsz(binsz=BINSZ_IRF)

        offset_max = Angle(self.settings["datasets"]["offset-max"])
        stack_datasets = self.settings["datasets"]["stack-datasets"]
        log.info("Creating datasets.")

        maker = MapDatasetMaker(
            geom=geom,
            geom_true=geom_irf,
            offset_max=offset_max,
        )
        if stack_datasets:
            stacked = MapDataset.create(geom=geom, geom_irf=geom_irf, name="stacked")
            for obs in self.observations:
                dataset = maker.run(obs)
                stacked.stack(dataset)
            self._extract_irf_kernels(stacked)
            datasets = [stacked]
        else:
            datasets = []
            for obs in self.observations:
                dataset = maker.run(obs)
                self._extract_irf_kernels(dataset)
                datasets.append(dataset)

        self.datasets = Datasets(datasets)
예제 #14
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파일: test_lima.py 프로젝트: gfiusa/gammapy
def simple_dataset():
    axis = MapAxis.from_energy_bounds(0.1, 10, 1, unit="TeV")
    geom = WcsGeom.create(npix=50, binsz=0.02, axes=[axis])
    dataset = MapDataset.create(geom)
    dataset.mask_safe += 1
    dataset.counts += 2
    dataset.background_model.map += 1
    return dataset
예제 #15
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파일: test_fov.py 프로젝트: gfiusa/gammapy
def obs_dataset(geom, observation):
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="2 deg")
    map_dataset_maker = MapDatasetMaker(
        selection=["counts", "background", "exposure"])

    reference = MapDataset.create(geom)
    cutout = reference.cutout(observation.pointing_radec, width="4 deg")

    dataset = map_dataset_maker.run(cutout, observation)
    dataset = safe_mask_maker.run(dataset, observation)
    return dataset
예제 #16
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파일: test_fit.py 프로젝트: gfiusa/gammapy
def test_to_image(geom):

    counts = Map.read(
        "$GAMMAPY_DATA/fermi-3fhl-gc/fermi-3fhl-gc-counts-cube.fits.gz")
    background = Map.read(
        "$GAMMAPY_DATA/fermi-3fhl-gc/fermi-3fhl-gc-background-cube.fits.gz")
    background = BackgroundModel(background)

    exposure = Map.read(
        "$GAMMAPY_DATA/fermi-3fhl-gc/fermi-3fhl-gc-exposure-cube.fits.gz")
    exposure = exposure.sum_over_axes(keepdims=True)
    dataset = MapDataset(counts=counts,
                         background_model=background,
                         exposure=exposure)
    dataset_im = dataset.to_image()
    assert dataset_im.mask_safe is None
    assert dataset_im.counts.data.sum() == dataset.counts.data.sum()
    assert_allclose(dataset_im.background_model.map.data.sum(),
                    28548.625,
                    rtol=1e-5)

    ebounds = np.logspace(-1.0, 1.0, 3)
    axis = MapAxis.from_edges(ebounds, name="energy", unit=u.TeV, interp="log")
    geom = WcsGeom.create(skydir=(0, 0),
                          binsz=0.5,
                          width=(1, 1),
                          frame="icrs",
                          axes=[axis])
    dataset = MapDataset.create(geom)

    # Check map_safe handling
    data = np.array([[[False, True], [True, True]],
                     [[False, False], [True, True]]])
    dataset.mask_safe = WcsNDMap.from_geom(geom=geom, data=data)

    dataset_im = dataset.to_image()
    assert dataset_im.mask_safe.data.dtype == bool

    desired = np.array([[False, True], [True, True]])
    assert (dataset_im.mask_safe.data == desired).all()

    # Check that missing entries in the dataset do not break
    dataset_copy = dataset.copy()
    dataset_copy.exposure = None
    dataset_copy.background_model = None
    dataset_im = dataset_copy.to_image()
    assert dataset_im.exposure is None
    assert dataset_im.background_model is None

    dataset_copy = dataset.copy()
    dataset_copy.counts = None
    dataset_im = dataset_copy.to_image()
    assert dataset_im.counts is None
예제 #17
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def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/cta-1dc/index/gps/")
    OBS_ID = 110380
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)

    energy_axis = MapAxis.from_bounds(0.1,
                                      10,
                                      nbin=10,
                                      unit="TeV",
                                      name="energy",
                                      interp="log")
    geom = WcsGeom.create(
        skydir=(0, 0),
        binsz=0.02,
        width=(10, 8),
        frame="galactic",
        proj="CAR",
        axes=[energy_axis],
    )

    offset_max = 4 * u.deg
    maker = MapDatasetMaker()
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"],
                                    offset_max=offset_max)
    stacked = MapDataset.create(geom=geom)

    spatial_model = PointSpatialModel(lon_0="-0.05 deg",
                                      lat_0="-0.05 deg",
                                      frame="galactic")
    spectral_model = ExpCutoffPowerLawSpectralModel(
        index=2,
        amplitude=3e-12 * u.Unit("cm-2 s-1 TeV-1"),
        reference=1.0 * u.TeV,
        lambda_=0.1 / u.TeV,
    )
    model = SkyModel(spatial_model=spatial_model,
                     spectral_model=spectral_model,
                     name="gc-source")

    datasets = Datasets([])
    for idx, obs in enumerate(observations):
        cutout = stacked.cutout(obs.pointing_radec,
                                width=2 * offset_max,
                                name=f"dataset{idx}")
        dataset = maker.run(cutout, obs)
        dataset = safe_mask_maker.run(dataset, obs)
        dataset.models = model
        datasets.append(dataset)
    return datasets
예제 #18
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파일: test_fit.py 프로젝트: gfiusa/gammapy
def test_map_dataset_geom(geom, sky_model):
    e_true = MapAxis.from_energy_bounds("1 TeV", "10 TeV", nbin=5)
    dataset = MapDataset.create(geom, energy_axis_true=e_true)
    dataset.counts = None
    dataset.background_model = None

    dataset.models = sky_model

    npred = dataset.npred()
    assert npred.geom == geom

    dataset.mask_safe = None

    with pytest.raises(ValueError):
        dataset._geom
예제 #19
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def test_map_maker(pars, observations):
    stacked = MapDataset.create(
        geom=pars["geom"],
        energy_axis_true=pars["e_true"],
        binsz_irf=pars["binsz_irf"],
        margin_irf=pars["margin_irf"],
    )

    maker = MapDatasetMaker(
        geom=pars["geom"],
        energy_axis_true=pars["e_true"],
        offset_max="2 deg",
        background_oversampling=pars.get("background_oversampling"),
        binsz_irf=pars["binsz_irf"],
        margin_irf=pars["margin_irf"],
    )
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="2 deg")

    for obs in observations:
        dataset = maker.run(obs)
        dataset = safe_mask_maker.run(dataset, obs)
        stacked.stack(dataset)

    counts = stacked.counts
    assert counts.unit == ""
    assert_allclose(counts.data.sum(), pars["counts"], rtol=1e-5)

    exposure = stacked.exposure
    assert exposure.unit == "m2 s"
    assert_allclose(exposure.data.mean(), pars["exposure"], rtol=3e-3)

    background = stacked.background_model.map
    assert background.unit == ""
    assert_allclose(background.data.sum(), pars["background"], rtol=1e-4)

    image_dataset = stacked.to_image()

    counts = image_dataset.counts
    assert counts.unit == ""
    assert_allclose(counts.data.sum(), pars["counts"], rtol=1e-4)

    exposure = image_dataset.exposure
    assert exposure.unit == "m2 s"
    assert_allclose(exposure.data.sum(), pars["exposure_image"], rtol=1e-3)

    background = image_dataset.background_model.map
    assert background.unit == ""
    assert_allclose(background.data.sum(), pars["background"], rtol=1e-4)
예제 #20
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def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/cta-1dc/index/gps/")
    OBS_ID = 110380
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)

    energy_axis = MapAxis.from_bounds(0.1,
                                      10,
                                      nbin=10,
                                      unit="TeV",
                                      name="energy",
                                      interp="log")

    geom = WcsGeom.create(
        skydir=(0, 0),
        binsz=0.05,
        width=(10, 8),
        coordsys="GAL",
        proj="CAR",
        axes=[energy_axis],
    )

    stacked = MapDataset.create(geom)
    maker = MapDatasetMaker()
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="4 deg")
    for obs in observations:
        dataset = maker.run(stacked, obs)
        dataset = safe_mask_maker.run(dataset, obs)
        stacked.stack(dataset)

    spatial_model = PointSpatialModel(lon_0="0.01 deg",
                                      lat_0="0.01 deg",
                                      frame="galactic")
    spectral_model = ExpCutoffPowerLawSpectralModel(
        index=2,
        amplitude=3e-12 * u.Unit("cm-2 s-1 TeV-1"),
        reference=1.0 * u.TeV,
        lambda_=0.1 / u.TeV,
    )
    model = SkyModel(spatial_model=spatial_model,
                     spectral_model=spectral_model,
                     name="gc-source")

    stacked.models = model
    stacked.name = "stacked_ds"

    return Datasets([stacked])
예제 #21
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    def _map_making(self):
        """Make maps and datasets for 3d analysis."""
        log.info("Creating geometry.")

        geom = self._create_geometry(self.settings["datasets"]["geom"])

        geom_irf = dict(energy_axis_true=None, binsz_irf=None, margin_irf=None)
        if "energy-axis-true" in self.settings["datasets"]:
            axis_params = self.settings["datasets"]["energy-axis-true"]
            geom_irf["energy_axis_true"] = MapAxis.from_bounds(**axis_params)
        geom_irf["binsz_irf"] = self.settings["datasets"].get("binsz", None)
        geom_irf["margin_irf"] = self.settings["datasets"].get("margin", None)

        offset_max = Angle(self.settings["datasets"]["offset-max"])
        log.info("Creating datasets.")

        maker = MapDatasetMaker(offset_max=offset_max)
        maker_safe_mask = SafeMaskMaker(methods=["offset-max"], offset_max=offset_max)

        stacked = MapDataset.create(geom=geom, name="stacked", **geom_irf)

        if self.settings["datasets"]["stack-datasets"]:
            for obs in self.observations:
                log.info(f"Processing observation {obs.obs_id}")
                dataset = maker.run(stacked, obs)
                dataset = maker_safe_mask.run(dataset, obs)
                dataset.background_model.name =  f"bkg_{dataset.name}"
                # TODO remove this once dataset and model have unique identifiers
                log.debug(dataset)
                stacked.stack(dataset)
            self._extract_irf_kernels(stacked)
            datasets = [stacked]
        else:
            datasets = []
            for obs in self.observations:
                log.info(f"Processing observation {obs.obs_id}")
                dataset = maker.run(stacked, obs)
                dataset = maker_safe_mask.run(dataset, obs)
                dataset.background_model.name = f"bkg_{dataset.name}"
                # TODO remove this once dataset and model have unique identifiers
                self._extract_irf_kernels(dataset)
                log.debug(dataset)
                datasets.append(dataset)

        self.datasets = Datasets(datasets)
예제 #22
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def test_to_image(geom):
    ebounds = np.logspace(-1.0, 1.0, 3)
    axis = MapAxis.from_edges(ebounds, name="energy", unit=u.TeV, interp="log")
    geom = WcsGeom.create(
        skydir=(0, 0), binsz=0.5, width=(1, 1), coordsys="CEL", axes=[axis]
    )
    dataset = MapDataset.create(geom)

    # Check map_safe handling
    data = np.array([[[False, True], [True, True]], [[False, False], [True, True]]])
    dataset.mask_safe = WcsNDMap.from_geom(geom=geom, data=data)

    dataset_im = dataset.to_image()

    assert dataset_im.mask_safe.data.dtype == bool

    desired = np.array([[False, True], [True, True]])
    assert (dataset_im.mask_safe.data == desired).all()
예제 #23
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def prepare_dataset(filename_dataset):
    """Prepare dataset for a given skymodel."""
    log.info(f"Reading {IRF_FILE}")
    irfs = load_cta_irfs(IRF_FILE)
    observation = Observation.create(obs_id=1001,
                                     pointing=POINTING,
                                     livetime=LIVETIME,
                                     irfs=irfs)

    empty = MapDataset.create(WCS_GEOM,
                              energy_axis_true=ENERGY_AXIS_TRUE,
                              migra_axis=MIGRA_AXIS)
    maker = MapDatasetMaker(
        selection=["exposure", "background", "psf", "edisp"])
    dataset = maker.run(empty, observation)

    filename_dataset.parent.mkdir(exist_ok=True, parents=True)
    log.info(f"Writing {filename_dataset}")
    dataset.write(filename_dataset, overwrite=True)
예제 #24
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파일: core.py 프로젝트: gfiusa/gammapy
    def _map_making(self):
        """Make maps and datasets for 3d analysis."""
        log.info("Creating geometry.")

        geom = self._create_geometry()
        geom_settings = self.config.datasets.geom
        geom_irf = dict(energy_axis_true=None, binsz_irf=None)
        if geom_settings.axes.energy_true.min is not None:
            geom_irf["energy_axis_true"] = self._make_energy_axis(
                geom_settings.axes.energy_true)
        geom_irf["binsz_irf"] = geom_settings.wcs.binsize_irf.to("deg").value
        offset_max = geom_settings.selection.offset_max
        log.info("Creating datasets.")

        maker = MapDatasetMaker(selection=self.config.datasets.map_selection)

        safe_mask_selection = self.config.datasets.safe_mask.methods
        safe_mask_settings = self.config.datasets.safe_mask.settings
        maker_safe_mask = SafeMaskMaker(methods=safe_mask_selection,
                                        **safe_mask_settings)
        stacked = MapDataset.create(geom=geom, name="stacked", **geom_irf)

        if self.config.datasets.stack:
            for obs in self.observations:
                log.info(f"Processing observation {obs.obs_id}")
                cutout = stacked.cutout(obs.pointing_radec,
                                        width=2 * offset_max)
                dataset = maker.run(cutout, obs)
                dataset = maker_safe_mask.run(dataset, obs)
                log.debug(dataset)
                stacked.stack(dataset)
            datasets = [stacked]
        else:
            datasets = []
            for obs in self.observations:
                log.info(f"Processing observation {obs.obs_id}")
                cutout = stacked.cutout(obs.pointing_radec,
                                        width=2 * offset_max)
                dataset = maker.run(cutout, obs)
                dataset = maker_safe_mask.run(dataset, obs)
                log.debug(dataset)
                datasets.append(dataset)
        self.datasets = Datasets(datasets)
예제 #25
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def test_create(geom, geom_etrue):
    # tests empty datasets created

    migra_axis = MapAxis(nodes=np.linspace(0.0, 3.0, 51), unit="", name="migra")
    rad_axis = MapAxis(nodes=np.linspace(0.0, 1.0, 51), unit="deg", name="theta")

    empty_dataset = MapDataset.create(geom, geom_etrue, migra_axis, rad_axis)

    assert_allclose(empty_dataset.counts.data.sum(), 0.0)
    assert_allclose(empty_dataset.background_model.map.data.sum(), 0.0)

    assert empty_dataset.psf.psf_map.data.shape == (3, 50, 100, 100)
    assert empty_dataset.psf.exposure_map.data.shape == (3, 1, 100, 100)

    assert empty_dataset.edisp.edisp_map.data.shape == (3, 50, 100, 100)
    assert empty_dataset.edisp.exposure_map.data.shape == (3, 1, 100, 100)

    assert_allclose(empty_dataset.edisp.edisp_map.data.sum(), 30000)

    assert_allclose(empty_dataset.gti.time_delta, 0.0 * u.s)
예제 #26
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def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/cta-1dc/index/gps/")
    OBS_ID = 110380
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)

    energy_axis = MapAxis.from_bounds(0.1,
                                      10,
                                      nbin=10,
                                      unit="TeV",
                                      name="energy",
                                      interp="log")
    geom = WcsGeom.create(
        skydir=(0, 0),
        binsz=0.02,
        width=(10, 8),
        coordsys="GAL",
        proj="CAR",
        axes=[energy_axis],
    )

    src_pos = SkyCoord(0, 0, unit="deg", frame="galactic")
    offset_max = 4 * u.deg
    maker = MapDatasetMaker(offset_max=offset_max)
    safe_mask_maker = SafeMaskMaker(methods=["offset-max"], offset_max="4 deg")
    stacked = MapDataset.create(geom=geom)

    datasets = []
    for obs in observations:
        dataset = maker.run(stacked, obs)
        dataset = safe_mask_maker.run(dataset, obs)
        dataset.edisp = dataset.edisp.get_energy_dispersion(
            position=src_pos, e_reco=energy_axis.edges)
        dataset.psf = dataset.psf.get_psf_kernel(position=src_pos,
                                                 geom=geom,
                                                 max_radius="0.3 deg")

        datasets.append(dataset)
    return datasets
예제 #27
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def test_map_maker(pars, observations, keepdims):

    stacked = MapDataset.create(geom=pars["geom"], geom_irf=pars["geom_true"])

    for obs in observations:
        maker = MapDatasetMaker(
            geom=pars["geom"],
            geom_true=pars["geom_true"],
            offset_max="2 deg",
            background_oversampling=pars.get("background_oversampling"),
        )
        dataset = maker.run(obs)
        stacked.stack(dataset)

    counts = stacked.counts
    assert counts.unit == ""
    assert_allclose(counts.data.sum(), pars["counts"], rtol=1e-5)

    exposure = stacked.exposure
    assert exposure.unit == "m2 s"
    assert_allclose(exposure.data.mean(), pars["exposure"], rtol=3e-3)

    background = stacked.background_model.map
    assert background.unit == ""
    assert_allclose(background.data.sum(), pars["background"], rtol=1e-5)

    image_dataset = stacked.to_image()

    counts = image_dataset.counts
    assert counts.unit == ""
    assert_allclose(counts.data.sum(), pars["counts"], rtol=1e-5)

    exposure = image_dataset.exposure
    assert exposure.unit == "m2 s"
    assert_allclose(exposure.data.sum(), pars["exposure_image"], rtol=3e-3)

    background = image_dataset.background_model.map
    assert background.unit == ""
    assert_allclose(background.data.sum(), pars["background"], rtol=1e-5)
예제 #28
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파일: make.py 프로젝트: fjhzwl/gammapy
def make_datasets_example():
    # Define which data to use and print some information

    energy_axis = MapAxis.from_edges(
        np.logspace(-1.0, 1.0, 4), unit="TeV", name="energy", interp="log"
    )
    geom0 = WcsGeom.create(
        skydir=(0, 0),
        binsz=0.1,
        width=(1, 1),
        coordsys="GAL",
        proj="CAR",
        axes=[energy_axis],
    )
    geom1 = WcsGeom.create(
        skydir=(1, 0),
        binsz=0.1,
        width=(1, 1),
        coordsys="GAL",
        proj="CAR",
        axes=[energy_axis],
    )
    geoms = [geom0, geom1]

    sources_coords = [(0, 0), (0.9, 0.1)]
    names = ["gc", "g09"]
    models = []

    for ind, (lon, lat) in enumerate(sources_coords):
        spatial_model = PointSpatialModel(
            lon_0=lon * u.deg, lat_0=lat * u.deg, frame="galactic"
        )
        spectral_model = ExpCutoffPowerLawSpectralModel(
            index=2 * u.Unit(""),
            amplitude=3e-12 * u.Unit("cm-2 s-1 TeV-1"),
            reference=1.0 * u.TeV,
            lambda_=0.1 / u.TeV,
        )
        model_ecpl = SkyModel(
            spatial_model=spatial_model, spectral_model=spectral_model, name=names[ind]
        )
        models.append(model_ecpl)

    # test to link a spectral parameter
    params0 = models[0].spectral_model.parameters
    params1 = models[1].spectral_model.parameters
    ind = params0.parameters.index(params0["reference"])
    params0.parameters[ind] = params1["reference"]

    # update the sky model
    ind = models[0].parameters.parameters.index(models[0].parameters["reference"])
    models[0].parameters.parameters[ind] = params1["reference"]

    obs_ids = [110380, 111140, 111159]
    data_store = DataStore.from_dir("$GAMMAPY_DATA/cta-1dc/index/gps/")

    diffuse_model = SkyDiffuseCube.read(
        "$GAMMAPY_DATA/fermi_3fhl/gll_iem_v06_cutout.fits"
    )

    datasets_list = []
    for idx, geom in enumerate(geoms):
        observations = data_store.get_observations(obs_ids)

        stacked = MapDataset.create(geom=geom)
        stacked.background_model.name = "background_irf_" + names[idx]

        maker = MapDatasetMaker(geom=geom, offset_max=4.0 * u.deg)

        for obs in observations:
            dataset = maker.run(obs)
            stacked.stack(dataset)

        stacked.psf = stacked.psf.get_psf_kernel(position=geom.center_skydir, geom=geom, max_radius="0.3 deg")
        stacked.edisp = stacked.edisp.get_energy_dispersion(position=geom.center_skydir, e_reco=energy_axis.edges)

        stacked.name = names[idx]
        stacked.model = models[idx] + diffuse_model
        datasets_list.append(stacked)

    datasets = Datasets(datasets_list)

    dataset0 = datasets.datasets[0]
    print("dataset0")
    print("counts sum : ", dataset0.counts.data.sum())
    print("expo sum : ", dataset0.exposure.data.sum())
    print("bkg0 sum : ", dataset0.background_model.evaluate().data.sum())

    path = "$GAMMAPY_DATA/tests/models/gc_example_"
    datasets.to_yaml(path, overwrite=True)
예제 #29
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파일: test_fit.py 프로젝트: gfiusa/gammapy
def test_map_dataset_fits_io(tmp_path, sky_model, geom, geom_etrue):
    dataset = get_map_dataset(sky_model, geom, geom_etrue)
    dataset.counts = dataset.npred()
    dataset.mask_safe = dataset.mask_fit
    gti = GTI.create([0 * u.s], [1 * u.h],
                     reference_time="2010-01-01T00:00:00")
    dataset.gti = gti

    hdulist = dataset.to_hdulist()
    actual = [hdu.name for hdu in hdulist]

    desired = [
        "PRIMARY",
        "COUNTS",
        "COUNTS_BANDS",
        "EXPOSURE",
        "EXPOSURE_BANDS",
        "BACKGROUND",
        "BACKGROUND_BANDS",
        "EDISP",
        "EDISP_BANDS",
        "EDISP_EXPOSURE",
        "EDISP_EXPOSURE_BANDS",
        "PSF",
        "PSF_BANDS",
        "PSF_EXPOSURE",
        "PSF_EXPOSURE_BANDS",
        "MASK_SAFE",
        "MASK_SAFE_BANDS",
        "MASK_FIT",
        "MASK_FIT_BANDS",
        "GTI",
    ]

    assert actual == desired

    dataset.write(tmp_path / "test.fits")

    dataset_new = MapDataset.read(tmp_path / "test.fits")
    assert dataset_new.models is None
    assert dataset_new.mask.dtype == bool

    assert_allclose(dataset.counts.data, dataset_new.counts.data)
    assert_allclose(dataset.background_model.map.data,
                    dataset_new.background_model.map.data)
    assert_allclose(dataset.edisp.edisp_map.data,
                    dataset_new.edisp.edisp_map.data)
    assert_allclose(dataset.psf.psf_map.data, dataset_new.psf.psf_map.data)
    assert_allclose(dataset.exposure.data, dataset_new.exposure.data)
    assert_allclose(dataset.mask_fit.data, dataset_new.mask_fit.data)
    assert_allclose(dataset.mask_safe.data, dataset_new.mask_safe.data)

    assert dataset.counts.geom == dataset_new.counts.geom
    assert dataset.exposure.geom == dataset_new.exposure.geom
    assert dataset.background_model.map.geom == dataset_new.background_model.map.geom
    assert dataset.edisp.edisp_map.geom == dataset_new.edisp.edisp_map.geom

    assert_allclose(dataset.gti.time_sum.to_value("s"),
                    dataset_new.gti.time_sum.to_value("s"))

    # To test io of psf and edisp map
    stacked = MapDataset.create(geom)
    stacked.write("test.fits", overwrite=True)
    stacked1 = MapDataset.read("test.fits")
    assert stacked1.psf.psf_map is not None
    assert stacked1.psf.exposure_map is not None
    assert stacked1.edisp.edisp_map is not None
    assert stacked1.edisp.exposure_map is not None
    assert stacked.mask.dtype == bool

    assert_allclose(stacked1.psf.psf_map, stacked.psf.psf_map)
    assert_allclose(stacked1.edisp.edisp_map, stacked.edisp.edisp_map)
예제 #30
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    proj="CAR",
    axes=[energy_axis],
)

# Reduced IRFs are defined in true energy (i.e. not measured energy).
energy_axis_true = MapAxis.from_edges(np.logspace(-0.3, 1.3, 10),
                                      unit="TeV",
                                      name="energy",
                                      interp="log")

# Now we can define the target dataset with this geometry.

# In[ ]:

stacked = MapDataset.create(geom=geom,
                            energy_axis_true=energy_axis_true,
                            name="crab-stacked")

# ## Data reduction
#
# ### Create the maker classes to be used
#
# The `~gammapy.cube.MapDatasetMaker` object is initialized as well as the `~gammapy.cube.SafeMaskMaker` that carries here a maximum offset selection.

# In[ ]:

offset_max = 2.5 * u.deg
maker = MapDatasetMaker()
maker_safe_mask = SafeMaskMaker(methods=["offset-max"], offset_max=offset_max)

# ### Perform the data reduction loop