Beispiel #1
0
def run_flux_sensitivity(**kwargs):

    index = kwargs.get('index', 2.0)
    sedshape = kwargs.get('sedshape', 'PowerLaw')
    cutoff = kwargs.get('cutoff', 1e3)
    curvindex = kwargs.get('curvindex', 1.0)
    beta = kwargs.get('beta', 0.0)
    emin = kwargs.get('emin', 10**1.5)
    emax = kwargs.get('emax', 10**6.0)
    nbin = kwargs.get('nbin', 18)
    glon = kwargs.get('glon', 0.0)
    glat = kwargs.get('glat', 0.0)
    ltcube_filepath = kwargs.get('ltcube', None)
    galdiff_filepath = kwargs.get('galdiff', None)
    isodiff_filepath = kwargs.get('isodiff', None)
    galdiff_fit_filepath = kwargs.get('galdiff_fit', None)
    isodiff_fit_filepath = kwargs.get('isodiff_fit', None)
    wcs_npix = kwargs.get('wcs_npix', 40)
    wcs_cdelt = kwargs.get('wcs_cdelt', 0.5)
    wcs_proj = kwargs.get('wcs_proj', 'AIT')
    map_type = kwargs.get('map_type', None)
    spatial_model = kwargs.get('spatial_model', 'PointSource')
    spatial_size = kwargs.get('spatial_size', 1E-2)

    obs_time_yr = kwargs.get('obs_time_yr', None)
    event_class = kwargs.get('event_class', 'P8R2_SOURCE_V6')
    min_counts = kwargs.get('min_counts', 3.0)
    ts_thresh = kwargs.get('ts_thresh', 25.0)
    nside = kwargs.get('hpx_nside', 16)
    output = kwargs.get('output', None)

    event_types = [['FRONT', 'BACK']]

    if sedshape == 'PowerLaw':
        fn = spectrum.PowerLaw([1E-13, -index], scale=1E3)
    elif sedshape == 'PLSuperExpCutoff':
        fn = spectrum.PLSuperExpCutoff([1E-13, -index, cutoff, curvindex],
                                       scale=1E3)
    elif sedshape == 'LogParabola':
        fn = spectrum.LogParabola([1E-13, -index, beta], scale=1E3)

    log_ebins = np.linspace(np.log10(emin), np.log10(emax), nbin + 1)
    ebins = 10**log_ebins
    ectr = np.exp(utils.edge_to_center(np.log(ebins)))

    c = SkyCoord(glon, glat, unit='deg', frame='galactic')

    if ltcube_filepath is None:

        if obs_time_yr is None:
            raise Exception('No observation time defined.')

        ltc = LTCube.create_from_obs_time(obs_time_yr * 365 * 24 * 3600.)
    else:
        ltc = LTCube.create(ltcube_filepath)
        if obs_time_yr is not None:
            ltc._counts *= obs_time_yr * 365 * \
                24 * 3600. / (ltc.tstop - ltc.tstart)

    gdiff = skymap.Map.create_from_fits(galdiff_filepath)
    gdiff_fit = None
    if galdiff_fit_filepath is not None:
        gdiff_fit = skymap.Map.create_from_fits(galdiff_fit_filepath)

    if isodiff_filepath is None:
        isodiff = utils.resolve_file_path('iso_%s_v06.txt' % event_class,
                                          search_dirs=[
                                              os.path.join(
                                                  '$FERMIPY_ROOT', 'data'),
                                              '$FERMI_DIFFUSE_DIR'
                                          ])
        isodiff = os.path.expandvars(isodiff)
    else:
        isodiff = isodiff_filepath

    iso = np.loadtxt(isodiff, unpack=True)
    iso_fit = None
    if isodiff_fit_filepath is not None:
        iso_fit = np.loadtxt(isodiff_fit_filepath, unpack=True)

    scalc = SensitivityCalc(gdiff,
                            iso,
                            ltc,
                            ebins,
                            event_class,
                            event_types,
                            gdiff_fit=gdiff_fit,
                            iso_fit=iso_fit,
                            spatial_model=spatial_model,
                            spatial_size=spatial_size)

    # Compute Maps
    map_diff_flux = None
    map_diff_npred = None
    map_int_flux = None
    map_int_npred = None

    map_nstep = 500

    if map_type == 'hpx':

        hpx = HPX(nside, True, 'GAL', ebins=ebins)
        map_diff_flux = HpxMap(np.zeros((nbin, hpx.npix)), hpx)
        map_diff_npred = HpxMap(np.zeros((nbin, hpx.npix)), hpx)
        map_skydir = map_diff_flux.hpx.get_sky_dirs()

        for i in range(0, len(map_skydir), map_nstep):
            s = slice(i, i + map_nstep)
            o = scalc.diff_flux_threshold(map_skydir[s], fn, ts_thresh,
                                          min_counts)
            map_diff_flux.data[:, s] = o['flux'].T
            map_diff_npred.data[:, s] = o['npred'].T

        hpx = HPX(nside, True, 'GAL')
        map_int_flux = HpxMap(np.zeros((hpx.npix)), hpx)
        map_int_npred = HpxMap(np.zeros((hpx.npix)), hpx)
        map_skydir = map_int_flux.hpx.get_sky_dirs()

        for i in range(0, len(map_skydir), map_nstep):
            s = slice(i, i + map_nstep)
            o = scalc.int_flux_threshold(map_skydir[s], fn, ts_thresh,
                                         min_counts)
            map_int_flux.data[s] = o['flux']
            map_int_npred.data[s] = o['npred']

    elif map_type == 'wcs':

        wcs_shape = [wcs_npix, wcs_npix]
        wcs_size = wcs_npix * wcs_npix

        map_diff_flux = Map.create(c,
                                   wcs_cdelt,
                                   wcs_shape,
                                   'GAL',
                                   wcs_proj,
                                   ebins=ebins)
        map_diff_npred = Map.create(c,
                                    wcs_cdelt,
                                    wcs_shape,
                                    'GAL',
                                    wcs_proj,
                                    ebins=ebins)
        map_skydir = map_diff_flux.get_pixel_skydirs()

        for i in range(0, len(map_skydir), map_nstep):
            idx = np.unravel_index(np.arange(i, min(i + map_nstep, wcs_size)),
                                   wcs_shape)
            s = (slice(None), idx[1], idx[0])
            o = scalc.diff_flux_threshold(map_skydir[slice(i, i + map_nstep)],
                                          fn, ts_thresh, min_counts)
            map_diff_flux.data[s] = o['flux'].T
            map_diff_npred.data[s] = o['npred'].T

        map_int_flux = Map.create(c, wcs_cdelt, wcs_shape, 'GAL', wcs_proj)
        map_int_npred = Map.create(c, wcs_cdelt, wcs_shape, 'GAL', wcs_proj)
        map_skydir = map_int_flux.get_pixel_skydirs()

        for i in range(0, len(map_skydir), map_nstep):
            idx = np.unravel_index(np.arange(i, min(i + map_nstep, wcs_size)),
                                   wcs_shape)
            s = (idx[1], idx[0])
            o = scalc.int_flux_threshold(map_skydir[slice(i, i + map_nstep)],
                                         fn, ts_thresh, min_counts)
            map_int_flux.data[s] = o['flux']
            map_int_npred.data[s] = o['npred']

    o = scalc.diff_flux_threshold(c, fn, ts_thresh, min_counts)

    cols = [
        Column(name='e_min', dtype='f8', data=scalc.ebins[:-1], unit='MeV'),
        Column(name='e_ref', dtype='f8', data=o['e_ref'], unit='MeV'),
        Column(name='e_max', dtype='f8', data=scalc.ebins[1:], unit='MeV'),
        Column(name='flux', dtype='f8', data=o['flux'], unit='ph / (cm2 s)'),
        Column(name='eflux', dtype='f8', data=o['eflux'],
               unit='MeV / (cm2 s)'),
        Column(name='dnde',
               dtype='f8',
               data=o['dnde'],
               unit='ph / (MeV cm2 s)'),
        Column(name='e2dnde',
               dtype='f8',
               data=o['e2dnde'],
               unit='MeV / (cm2 s)'),
        Column(name='npred', dtype='f8', data=o['npred'], unit='ph')
    ]

    tab_diff = Table(cols)

    cols = [
        Column(name='index', dtype='f8'),
        Column(name='e_min', dtype='f8', unit='MeV'),
        Column(name='e_ref', dtype='f8', unit='MeV'),
        Column(name='e_max', dtype='f8', unit='MeV'),
        Column(name='flux', dtype='f8', unit='ph / (cm2 s)'),
        Column(name='eflux', dtype='f8', unit='MeV / (cm2 s)'),
        Column(name='dnde', dtype='f8', unit='ph / (MeV cm2 s)'),
        Column(name='e2dnde', dtype='f8', unit='MeV / (cm2 s)'),
        Column(name='npred', dtype='f8', unit='ph'),
        Column(name='ebin_e_min', dtype='f8', unit='MeV', shape=(len(ectr), )),
        Column(name='ebin_e_ref', dtype='f8', unit='MeV', shape=(len(ectr), )),
        Column(name='ebin_e_max', dtype='f8', unit='MeV', shape=(len(ectr), )),
        Column(name='ebin_flux',
               dtype='f8',
               unit='ph / (cm2 s)',
               shape=(len(ectr), )),
        Column(name='ebin_eflux',
               dtype='f8',
               unit='MeV / (cm2 s)',
               shape=(len(ectr), )),
        Column(name='ebin_dnde',
               dtype='f8',
               unit='ph / (MeV cm2 s)',
               shape=(len(ectr), )),
        Column(name='ebin_e2dnde',
               dtype='f8',
               unit='MeV / (cm2 s)',
               shape=(len(ectr), )),
        Column(name='ebin_npred', dtype='f8', unit='ph', shape=(len(ectr), ))
    ]

    cols_ebounds = [
        Column(name='E_MIN', dtype='f8', unit='MeV', data=ebins[:-1]),
        Column(name='E_MAX', dtype='f8', unit='MeV', data=ebins[1:]),
    ]

    tab_int = Table(cols)
    tab_ebounds = Table(cols_ebounds)

    index = np.linspace(1.0, 5.0, 4 * 4 + 1)

    for g in index:
        fn = spectrum.PowerLaw([1E-13, -g], scale=10**3.5)
        o = scalc.int_flux_threshold(c, fn, ts_thresh, 3.0)
        row = [g]
        for colname in tab_int.columns:
            if colname == 'index':
                continue
            if 'ebin' in colname:
                row += [o['bins'][colname.replace('ebin_', '')]]
            else:
                row += [o[colname]]

        tab_int.add_row(row)

    hdulist = fits.HDUList()
    hdulist.append(fits.table_to_hdu(tab_diff))
    hdulist.append(fits.table_to_hdu(tab_int))
    hdulist.append(fits.table_to_hdu(tab_ebounds))

    hdulist[1].name = 'DIFF_FLUX'
    hdulist[2].name = 'INT_FLUX'
    hdulist[3].name = 'EBOUNDS'

    if map_type is not None:
        hdu = map_diff_flux.create_image_hdu()
        hdu.name = 'MAP_DIFF_FLUX'
        hdulist.append(hdu)
        hdu = map_diff_npred.create_image_hdu()
        hdu.name = 'MAP_DIFF_NPRED'
        hdulist.append(hdu)

        hdu = map_int_flux.create_image_hdu()
        hdu.name = 'MAP_INT_FLUX'
        hdulist.append(hdu)
        hdu = map_int_npred.create_image_hdu()
        hdu.name = 'MAP_INT_NPRED'
        hdulist.append(hdu)

    hdulist.writeto(output, clobber=True)
Beispiel #2
0
def test_logparabola_spectrum():

    params = [1E-13,-2.3,0.5]
    fn = spectrum.LogParabola(params, scale=2E3)