Ejemplo n.º 1
0
    def _spectrum_extraction(self):
        """Run all steps for the spectrum extraction."""
        log.info("Reducing spectrum datasets.")
        datasets_settings = self.config.datasets
        on_lon = datasets_settings.on_region.lon
        on_lat = datasets_settings.on_region.lat
        on_center = SkyCoord(on_lon,
                             on_lat,
                             frame=datasets_settings.on_region.frame)
        on_region = CircleSkyRegion(on_center,
                                    datasets_settings.on_region.radius)

        maker_config = {}
        if datasets_settings.containment_correction:
            maker_config[
                "containment_correction"] = datasets_settings.containment_correction
        e_reco = self._make_energy_axis(
            datasets_settings.geom.axes.energy).edges

        maker_config["selection"] = ["counts", "aeff", "edisp"]
        dataset_maker = SpectrumDatasetMaker(**maker_config)
        bkg_maker_config = {}
        if datasets_settings.background.exclusion:
            exclusion_region = Map.read(datasets_settings.background.exclusion)
            bkg_maker_config["exclusion_mask"] = exclusion_region
        bkg_maker = ReflectedRegionsBackgroundMaker(**bkg_maker_config)

        safe_mask_selection = self.config.datasets.safe_mask.methods
        safe_mask_settings = self.config.datasets.safe_mask.settings
        safe_mask_maker = SafeMaskMaker(methods=safe_mask_selection,
                                        **safe_mask_settings)

        e_true = self._make_energy_axis(
            datasets_settings.geom.axes.energy_true).edges

        reference = SpectrumDataset.create(e_reco=e_reco,
                                           e_true=e_true,
                                           region=on_region)

        datasets = []
        for obs in self.observations:
            log.info(f"Processing observation {obs.obs_id}")
            dataset = dataset_maker.run(reference.copy(), obs)
            dataset = bkg_maker.run(dataset, obs)
            if dataset.counts_off is None:
                log.info(
                    f"No OFF region found for observation {obs.obs_id}. Discarding."
                )
                continue
            dataset = safe_mask_maker.run(dataset, obs)
            log.debug(dataset)
            datasets.append(dataset)

        self.datasets = Datasets(datasets)

        if self.config.datasets.stack:
            stacked = self.datasets.stack_reduce(name="stacked")
            self.datasets = Datasets([stacked])
Ejemplo n.º 2
0
    def _spectrum_extraction(self):
        """Run all steps for the spectrum extraction."""
        region = self.settings["datasets"]["geom"]["region"]
        log.info("Reducing spectrum datasets.")
        on_lon = Angle(region["center"][0])
        on_lat = Angle(region["center"][1])
        on_center = SkyCoord(on_lon, on_lat, frame=region["frame"])
        on_region = CircleSkyRegion(on_center, Angle(region["radius"]))

        maker_config = {}
        if "containment_correction" in self.settings["datasets"]:
            maker_config["containment_correction"] = self.settings["datasets"][
                "containment_correction"
            ]
        params = self.settings["datasets"]["geom"]["axes"][0]
        e_reco = MapAxis.from_bounds(**params).edges
        maker_config["e_reco"] = e_reco

        # TODO: remove hard-coded e_true and make it configurable
        maker_config["e_true"] = np.logspace(-2, 2.5, 109) * u.TeV
        maker_config["region"] = on_region

        dataset_maker = SpectrumDatasetMaker(**maker_config)
        bkg_maker_config = {}
        background = self.settings["datasets"]["background"]

        if "exclusion_mask" in background:
            map_hdu = {}
            filename = background["exclusion_mask"]["filename"]
            if "hdu" in background["exclusion_mask"]:
                map_hdu = {"hdu": background["exclusion_mask"]["hdu"]}
            exclusion_region = Map.read(filename, **map_hdu)
            bkg_maker_config["exclusion_mask"] = exclusion_region
        if background["background_estimator"] == "reflected":
            reflected_bkg_maker = ReflectedRegionsBackgroundMaker(**bkg_maker_config)
        else:
            # TODO: raise error?
            log.info("Background estimation only for reflected regions method.")

        safe_mask_maker = SafeMaskMaker(methods=["aeff-default", "aeff-max"])

        datasets = []
        for obs in self.observations:
            log.info(f"Processing observation {obs.obs_id}")
            selection = ["counts", "aeff", "edisp"]
            dataset = dataset_maker.run(obs, selection=selection)
            dataset = reflected_bkg_maker.run(dataset, obs)
            dataset = safe_mask_maker.run(dataset, obs)
            log.debug(dataset)
            datasets.append(dataset)

        self.datasets = Datasets(datasets)

        if self.settings["datasets"]["stack-datasets"]:
            stacked = self.datasets.stack_reduce()
            stacked.name = "stacked"
            self.datasets = Datasets([stacked])
Ejemplo n.º 3
0
def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/hess-dl3-dr1/")
    OBS_ID = 23523
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)
    target_position = SkyCoord(ra=83.63, dec=22.01, unit="deg", frame="icrs")
    on_region_radius = Angle("0.11 deg")
    on_region = CircleSkyRegion(center=target_position, radius=on_region_radius)

    exclusion_region = CircleSkyRegion(
        center=SkyCoord(183.604, -8.708, unit="deg", frame="galactic"),
        radius=0.5 * u.deg,
    )

    skydir = target_position.galactic
    exclusion_mask = Map.create(
        npix=(150, 150), binsz=0.05, skydir=skydir, proj="TAN", coordsys="GAL"
    )

    mask = exclusion_mask.geom.region_mask([exclusion_region], inside=False)
    exclusion_mask.data = mask

    e_reco = MapAxis.from_bounds(0.1, 40, nbin=40, interp="log", unit="TeV").edges
    e_true = MapAxis.from_bounds(0.05, 100, nbin=200, interp="log", unit="TeV").edges

    dataset_maker = SpectrumDatasetMaker(
        region=on_region, e_reco=e_reco, e_true=e_true, containment_correction=True
    )
    bkg_maker = ReflectedRegionsBackgroundMaker(exclusion_mask=exclusion_mask)
    safe_mask_masker = SafeMaskMaker(methods=["aeff-max"], aeff_percent=10)

    spectral_model = PowerLawSpectralModel(
        index=2, amplitude=2e-11 * u.Unit("cm-2 s-1 TeV-1"), reference=1 * u.TeV
    )
    spatial_model = PointSpatialModel(
        lon_0=target_position.ra, lat_0=target_position.dec, frame="icrs"
    )
    spatial_model.lon_0.frozen = True
    spatial_model.lat_0.frozen = True

    sky_model = SkyModel(
        spatial_model=spatial_model, spectral_model=spectral_model, name=""
    )

    # Data preparation
    datasets = []

    for ind, observation in enumerate(observations):
        dataset = dataset_maker.run(observation, selection=["counts", "aeff", "edisp"])
        dataset_on_off = bkg_maker.run(dataset, observation)
        dataset_on_off = safe_mask_masker.run(dataset_on_off, observation)
        dataset_on_off.name = f"dataset{ind}"
        dataset_on_off.models = sky_model
        datasets.append(dataset_on_off)

    return Datasets(datasets)
def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/hess-dl3-dr1/")
    OBS_ID = 23523
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)

    target_position = SkyCoord(ra=83.63308, dec=22.01450, unit="deg")

    e_reco = MapAxis.from_bounds(0.1, 40, nbin=40, interp="log",
                                 unit="TeV").edges
    e_true = MapAxis.from_bounds(0.05, 100, nbin=200, interp="log",
                                 unit="TeV").edges

    on_region_radius = Angle("0.11 deg")
    on_region = CircleSkyRegion(center=target_position,
                                radius=on_region_radius)

    dataset_maker = SpectrumDatasetMaker(containment_correction=True,
                                         selection=["counts", "aeff", "edisp"])

    empty = SpectrumDatasetOnOff.create(region=on_region,
                                        e_reco=e_reco,
                                        e_true=e_true)

    bkg_maker = ReflectedRegionsBackgroundMaker()
    safe_mask_masker = SafeMaskMaker(methods=["aeff-max"], aeff_percent=10)

    spectral_model = PowerLawSpectralModel(index=2.6,
                                           amplitude=2.0e-11 *
                                           u.Unit("1 / (cm2 s TeV)"),
                                           reference=1 * u.TeV)
    spectral_model.index.frozen = False

    model = spectral_model.copy()
    model.name = "crab"

    datasets_1d = []

    for observation in observations:

        dataset = dataset_maker.run(dataset=empty.copy(),
                                    observation=observation)

        dataset_on_off = bkg_maker.run(dataset, observation)
        dataset_on_off = safe_mask_masker.run(dataset_on_off, observation)
        datasets_1d.append(dataset_on_off)

    for dataset in datasets_1d:
        model = spectral_model.copy()
        model.name = "crab"
        dataset.model = model

    return datasets_1d
Ejemplo n.º 5
0
def data_prep():
    data_store = DataStore.from_dir("$GAMMAPY_DATA/hess-dl3-dr1/")
    OBS_ID = 23523
    obs_ids = OBS_ID * np.ones(N_OBS)
    observations = data_store.get_observations(obs_ids)

    target_position = SkyCoord(ra=83.63, dec=22.01, unit="deg", frame="icrs")
    on_region_radius = Angle("0.11 deg")
    on_region = CircleSkyRegion(center=target_position,
                                radius=on_region_radius)

    exclusion_region = CircleSkyRegion(
        center=SkyCoord(183.604, -8.708, unit="deg", frame="galactic"),
        radius=0.5 * u.deg,
    )

    skydir = target_position.galactic
    exclusion_mask = Map.create(npix=(150, 150),
                                binsz=0.05,
                                skydir=skydir,
                                proj="TAN",
                                coordsys="GAL")

    mask = exclusion_mask.geom.region_mask([exclusion_region], inside=False)
    exclusion_mask.data = mask

    e_reco = MapAxis.from_bounds(0.1, 40, nbin=40, interp="log",
                                 unit="TeV").edges
    e_true = MapAxis.from_bounds(0.05, 100, nbin=200, interp="log",
                                 unit="TeV").edges

    stacked = SpectrumDatasetOnOff.create(e_reco=e_reco, e_true=e_true)
    stacked.name = "stacked"

    dataset_maker = SpectrumDatasetMaker(region=on_region,
                                         e_reco=e_reco,
                                         e_true=e_true,
                                         containment_correction=False)
    bkg_maker = ReflectedRegionsBackgroundMaker(exclusion_mask=exclusion_mask)
    safe_mask_masker = SafeMaskMaker(methods=["aeff-max"], aeff_percent=10)

    for observation in observations:
        dataset = dataset_maker.run(observation,
                                    selection=["counts", "aeff", "edisp"])
        dataset_on_off = bkg_maker.run(dataset, observation)
        dataset_on_off = safe_mask_masker.run(dataset_on_off, observation)
        stacked.stack(dataset_on_off)
    return stacked
Ejemplo n.º 6
0
def reflected_regions_bkg_maker():
    pos = SkyCoord(83.63, 22.01, unit="deg", frame="icrs")
    exclusion_region = CircleSkyRegion(pos, Angle(0.3, "deg"))
    geom = WcsGeom.create(skydir=pos, binsz=0.02, width=10.0)
    mask = geom.region_mask([exclusion_region], inside=False)
    exclusion_mask = WcsNDMap(geom, data=mask)

    return ReflectedRegionsBackgroundMaker(exclusion_mask=exclusion_mask,
                                           min_distance_input="0.2 deg")
Ejemplo n.º 7
0
def run_analysis_1d(target_dict):
    """Run spectral analysis for the selected target"""
    tag = target_dict["tag"]
    name = target_dict["name"]

    log.info(f"running 1d analysis, {tag}")
    path_res = Path(tag + "/results/")

    ra = target_dict["ra"]
    dec = target_dict["dec"]
    on_size = target_dict["on_size"]
    e_decorr = target_dict["e_decorr"]

    target_pos = SkyCoord(ra, dec, unit="deg", frame="icrs")
    on_radius = Angle(on_size * u.deg)
    containment_corr = True

    # Observations selection
    data_store = DataStore.from_dir("$GAMMAPY_DATA/hess-dl3-dr1/")
    mask = data_store.obs_table["TARGET_NAME"] == name
    obs_table = data_store.obs_table[mask]
    observations = data_store.get_observations(obs_table["OBS_ID"])

    if DEBUG is True:
        observations = [observations[0]]

    # Reflected regions background estimation
    on_region = CircleSkyRegion(center=target_pos, radius=on_radius)
    dataset_maker = SpectrumDatasetMaker(
        region=on_region,
        e_reco=E_RECO,
        e_true=E_RECO,
        containment_correction=containment_corr,
    )
    bkg_maker = ReflectedRegionsBackgroundMaker()
    safe_mask_masker = SafeMaskMaker(methods=["edisp-bias"], bias_percent=10)

    datasets = []

    for observation in observations:
        dataset = dataset_maker.run(observation, selection=["counts", "aeff", "edisp"])
        dataset_on_off = bkg_maker.run(dataset, observation)
        dataset_on_off = safe_mask_masker.run(dataset_on_off, observation)
        datasets.append(dataset_on_off)

    # Fit spectrum
    model = PowerLawSpectralModel(
        index=2, amplitude=2e-11 * u.Unit("cm-2 s-1 TeV-1"), reference=e_decorr * u.TeV
    )

    for dataset in datasets:
        dataset.model = model

    fit_joint = Fit(datasets)
    result_joint = fit_joint.run()

    parameters = model.parameters
    parameters.covariance = result_joint.parameters.covariance
    write_fit_summary(parameters, str(path_res / "results-summary-fit-1d.yaml"))

    # Flux points
    fpe = FluxPointsEstimator(datasets=datasets, e_edges=FLUXP_EDGES)
    flux_points = fpe.run()
    flux_points.table["is_ul"] = flux_points.table["ts"] < 4
    keys = ["e_ref", "e_min", "e_max", "dnde", "dnde_errp", "dnde_errn", "is_ul"]
    flux_points.table_formatted[keys].write(
        path_res / "flux-points-1d.ecsv", format="ascii.ecsv"
    )
Ejemplo n.º 8
0
# and using the on-off (often called WSTAT) likelihood function.

# In[ ]:

e_reco = np.logspace(-1, np.log10(40), 40) * u.TeV
e_true = np.logspace(np.log10(0.05), 2, 200) * u.TeV

dataset_empty = SpectrumDataset.create(e_reco=e_reco,
                                       e_true=e_true,
                                       region=on_region)

# In[ ]:

dataset_maker = SpectrumDatasetMaker(containment_correction=False,
                                     selection=["counts", "aeff", "edisp"])
bkg_maker = ReflectedRegionsBackgroundMaker(exclusion_mask=exclusion_mask)
safe_mask_masker = SafeMaskMaker(methods=["aeff-max"], aeff_percent=10)

# In[ ]:

get_ipython().run_cell_magic(
    'time', '',
    'datasets = []\n\nfor observation in observations:\n    dataset = dataset_maker.run(dataset_empty, observation)\n    dataset_on_off = bkg_maker.run(dataset, observation)\n    dataset_on_off = safe_mask_masker.run(dataset_on_off, observation)\n    datasets.append(dataset_on_off)'
)

# In[ ]:

plt.figure(figsize=(8, 8))
_, ax, _ = images["counts"].smooth("0.03 deg").plot(vmax=8)

on_region.to_pixel(ax.wcs).plot(ax=ax, edgecolor="white")
)

data_store = DataStore.from_dir("$GAMMAPY_DATA/hess-dl3-dr1/")
mask = data_store.obs_table["TARGET_NAME"] == "Crab"
obs_ids = data_store.obs_table["OBS_ID"][mask].data
observations = data_store.get_observations(obs_ids)

crab_position = SkyCoord(83.63, 22.01, unit="deg", frame="icrs")

# The ON region center is defined in the icrs frame. The angle is defined w.r.t. to its axis.
rectangle = RectangleSkyRegion(
    center=crab_position, width=0.5 * u.deg, height=0.4 * u.deg, angle=0 * u.deg
)


bkg_maker = ReflectedRegionsBackgroundMaker(min_distance=0.1 * u.rad)

dataset_maker = SpectrumDatasetMaker(
    region=rectangle, e_reco=np.logspace(-1, 2, 30) * u.TeV
)

datasets = []

for obs in observations:
    dataset = dataset_maker.run(obs, selection=["counts"])
    dataset_on_off = bkg_maker.run(observation=obs, dataset=dataset)
    datasets.append(dataset_on_off)

m = Map.create(skydir=crab_position, width=(8, 8), proj="TAN")

_, ax, _ = m.plot(vmin=-1, vmax=0)
Ejemplo n.º 10
0
def reflected_bkg_maker(exclusion_mask):
    return ReflectedRegionsBackgroundMaker(exclusion_mask=exclusion_mask)
Ejemplo n.º 11
0
e_reco = MapAxis.from_energy_bounds(0.1, 40, 100, "TeV").edges
e_true = MapAxis.from_energy_bounds(0.05, 100, 100, "TeV").edges

target_position = SkyCoord(83.63308 * u.deg, 22.01450 * u.deg, frame="icrs")
on_region_radius = Angle("0.11 deg")
on_region = CircleSkyRegion(center=target_position, radius=on_region_radius)

# ### Creation of the data reduction makers
#
# We now create the dataset and background makers for the selected geometry.

# In[ ]:

dataset_maker = SpectrumDatasetMaker(containment_correction=True,
                                     selection=["counts", "aeff", "edisp"])
bkg_maker = ReflectedRegionsBackgroundMaker()
safe_mask_masker = SafeMaskMaker(methods=["aeff-max"], aeff_percent=10)

# ### Creation of the datasets
#
# Now we perform the actual data reduction in the time_intervals.

# In[ ]:

datasets = []

dataset_empty = SpectrumDataset.create(e_reco=e_reco,
                                       e_true=e_true,
                                       region=on_region)

for obs in observations: