def make_psf(vis_mxds, img_xds, grid_parms, vis_sel_parms, img_sel_parms): """ Creates a cube or continuum point spread function (psf) image from the user specified uvw and imaging weight data. Only the prolate spheroidal convolutional gridding function is supported (this will change in a future releases.) Parameters ---------- vis_mxds : xarray.core.dataset.Dataset Input multi-xarray Dataset with global data. img_xds : xarray.core.dataset.Dataset Input image dataset. grid_parms : dictionary grid_parms['image_size'] : list of int, length = 2 The image size (no padding). grid_parms['cell_size'] : list of number, length = 2, units = arcseconds The image cell size. grid_parms['chan_mode'] : {'continuum'/'cube'}, default = 'continuum' Create a continuum or cube image. grid_parms['fft_padding'] : number, acceptable range [1,100], default = 1.2 The factor that determines how much the gridded visibilities are padded before the fft is done. vis_sel_parms : dictionary vis_sel_parms['xds'] : str The xds within the mxds to use to calculate the imaging weights for. vis_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the xds to use. img_sel_parms : dictionary img_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the image xds to use. img_sel_parms['psf'] : str, default ='PSF' The created image name. img_sel_parms['psf_sum_weight'] : str, default ='PSF_SUM_WEIGHT' The created sum of weights name. Returns ------- img_xds : xarray.core.dataset.Dataset The image_dataset will contain the image created and the sum of weights. """ print('######################### Start make_psf #########################') import numpy as np from numba import jit import time import math import dask.array.fft as dafft import xarray as xr import dask.array as da import matplotlib.pylab as plt import dask import copy, os from numcodecs import Blosc from itertools import cycle from cngi._utils._check_parms import _check_sel_parms, _check_existence_sel_parms from ._imaging_utils._check_imaging_parms import _check_grid_parms from ._imaging_utils._gridding_convolutional_kernels import _create_prolate_spheroidal_kernel, _create_prolate_spheroidal_kernel_1D from ._imaging_utils._standard_grid import _graph_standard_grid from ._imaging_utils._remove_padding import _remove_padding from ._imaging_utils._aperture_grid import _graph_aperture_grid from cngi.image import make_empty_sky_image from cngi.image import fit_gaussian #print('****',sel_parms,'****') _mxds = vis_mxds.copy(deep=True) _img_xds = img_xds.copy(deep=True) _vis_sel_parms = copy.deepcopy(vis_sel_parms) _img_sel_parms = copy.deepcopy(img_sel_parms) _grid_parms = copy.deepcopy(grid_parms) ##############Parameter Checking and Set Defaults############## assert(_check_grid_parms(_grid_parms)), "######### ERROR: grid_parms checking failed" assert('xds' in _vis_sel_parms), "######### ERROR: xds must be specified in sel_parms" #Can't have a default since xds names are not fixed. _vis_xds = _mxds.attrs[_vis_sel_parms['xds']] #Check vis data_group _check_sel_parms(_vis_xds,_vis_sel_parms) #Check img data_group _check_sel_parms(_img_xds,_img_sel_parms,new_or_modified_data_variables={'sum_weight':'PSF_SUM_WEIGHT','psf':'PSF','psf_fit':'PSF_FIT'},append_to_in_id=True) ################################################################################## # Creating gridding kernel _grid_parms['oversampling'] = 100 _grid_parms['support'] = 7 cgk, correcting_cgk_image = _create_prolate_spheroidal_kernel(_grid_parms['oversampling'], _grid_parms['support'], _grid_parms['image_size_padded']) cgk_1D = _create_prolate_spheroidal_kernel_1D(_grid_parms['oversampling'], _grid_parms['support']) _grid_parms['complex_grid'] = False _grid_parms['do_psf'] = True _grid_parms['do_imaging_weight'] = False grids_and_sum_weights = _graph_standard_grid(_vis_xds, cgk_1D, _grid_parms, _vis_sel_parms) uncorrected_dirty_image = dafft.fftshift(dafft.ifft2(dafft.ifftshift(grids_and_sum_weights[0], axes=(0, 1)), axes=(0, 1)), axes=(0, 1)) #Remove Padding correcting_cgk_image = _remove_padding(correcting_cgk_image,_grid_parms['image_size']) uncorrected_dirty_image = _remove_padding(uncorrected_dirty_image,_grid_parms['image_size']).real * (_grid_parms['image_size_padded'][0] * _grid_parms['image_size_padded'][1]) #############Normalize############# def correct_image(uncorrected_dirty_image, sum_weights, correcting_cgk): sum_weights_copy = copy.deepcopy(sum_weights) ##Don't mutate inputs, therefore do deep copy (https://docs.dask.org/en/latest/delayed-best-practices.html). sum_weights_copy[sum_weights_copy == 0] = 1 # corrected_image = (uncorrected_dirty_image/sum_weights[:,:,None,None])/correcting_cgk[None,None,:,:] corrected_image = (uncorrected_dirty_image / sum_weights_copy) / correcting_cgk return corrected_image corrected_dirty_image = da.map_blocks(correct_image, uncorrected_dirty_image, grids_and_sum_weights[1][None, None, :, :],correcting_cgk_image[:, :, None, None]) #################################################### if _grid_parms['chan_mode'] == 'continuum': freq_coords = [da.mean(_vis_xds.coords['chan'].values)] chan_width = da.from_array([da.mean(_vis_xds['chan_width'].data)],chunks=(1,)) imag_chan_chunk_size = 1 elif _grid_parms['chan_mode'] == 'cube': freq_coords = _vis_xds.coords['chan'].values chan_width = _vis_xds['chan_width'].data imag_chan_chunk_size = _vis_xds.DATA.chunks[2][0] phase_center = _grid_parms['phase_center'] image_size = _grid_parms['image_size'] cell_size = _grid_parms['cell_size'] phase_center = _grid_parms['phase_center'] pol_coords = _vis_xds.pol.data time_coords = [_vis_xds.time.mean().data] _img_xds = make_empty_sky_image(_img_xds,phase_center,image_size,cell_size,freq_coords,chan_width,pol_coords,time_coords) _img_xds[_img_sel_parms['data_group_out']['sum_weight']] = xr.DataArray(grids_and_sum_weights[1][None,:,:], dims=['time','chan','pol']) _img_xds[_img_sel_parms['data_group_out']['psf']] = xr.DataArray(corrected_dirty_image[:,:,None,:,:], dims=['l', 'm', 'time', 'chan', 'pol']) _img_xds.attrs['data_groups'][0] = {**_img_xds.attrs['data_groups'][0],**{_img_sel_parms['data_group_out']['id']:_img_sel_parms['data_group_out']}} _img_xds = fit_gaussian(_img_xds,dv=_img_sel_parms['data_group_out']['psf'],beam_set_name=_img_sel_parms['data_group_out']['psf_fit']) print('######################### Created graph for make_psf #########################') return _img_xds '''
def make_psf_with_gcf(mxds, gcf_dataset, img_dataset, grid_parms, norm_parms, vis_sel_parms, img_sel_parms): """ Creates a cube or continuum dirty image from the user specified visibility, uvw and imaging weight data. A gridding convolution function (gcf_dataset), primary beam image (img_dataset) and a primary beam weight image (img_dataset) must be supplied. Parameters ---------- vis_dataset : xarray.core.dataset.Dataset Input visibility dataset. gcf_dataset : xarray.core.dataset.Dataset Input gridding convolution dataset. img_dataset : xarray.core.dataset.Dataset Input image dataset. grid_parms : dictionary grid_parms['image_size'] : list of int, length = 2 The image size (no padding). grid_parms['cell_size'] : list of number, length = 2, units = arcseconds The image cell size. grid_parms['chan_mode'] : {'continuum'/'cube'}, default = 'continuum' Create a continuum or cube image. grid_parms['fft_padding'] : number, acceptable range [1,100], default = 1.2 The factor that determines how much the gridded visibilities are padded before the fft is done. norm_parms : dictionary norm_parms['norm_type'] : {'none'/'flat_noise'/'flat_sky'}, default = 'flat_sky' Gridded (and FT'd) images represent the PB-weighted sky image. Qualitatively it can be approximated as two instances of the PB applied to the sky image (one naturally present in the data and one introduced during gridding via the convolution functions). normtype='flat_noise' : Divide the raw image by sqrt(sel_parms['weight_pb']) so that the input to the minor cycle represents the product of the sky and PB. The noise is 'flat' across the region covered by each PB. normtype='flat_sky' : Divide the raw image by sel_parms['weight_pb'] so that the input to the minor cycle represents only the sky. The noise is higher in the outer regions of the primary beam where the sensitivity is low. normtype='none' : No normalization after gridding and FFT. sel_parms : dictionary sel_parms['uvw'] : str, default ='UVW' The name of uvw data variable that will be used to grid the visibilities. sel_parms['data'] : str, default = 'DATA' The name of the visibility data to be gridded. sel_parms['imaging_weight'] : str, default ='IMAGING_WEIGHT' The name of the imaging weights to be used. sel_parms['image'] : str, default ='IMAGE' The created image name. sel_parms['sum_weight'] : str, default ='SUM_WEIGHT' The created sum of weights name. sel_parms['pb'] : str, default ='PB' The primary beam image to use for normalization. sel_parms['weight_pb'] : str, default ='WEIGHT_PB' The primary beam weight image to use for normalization. Returns ------- image_dataset : xarray.core.dataset.Dataset The image_dataset will contain the image created and the sum of weights. """ print( '######################### Start make_psf_with_gcf #########################' ) import numpy as np from numba import jit import time import math import dask.array.fft as dafft import xarray as xr import dask.array as da import matplotlib.pylab as plt import dask import copy, os from numcodecs import Blosc from itertools import cycle from cngi._utils._check_parms import _check_sel_parms, _check_existence_sel_parms from ._imaging_utils._check_imaging_parms import _check_grid_parms, _check_norm_parms #from ._imaging_utils._gridding_convolutional_kernels import _create_prolate_spheroidal_kernel, _create_prolate_spheroidal_kernel_1D from ._imaging_utils._standard_grid import _graph_standard_grid from ._imaging_utils._remove_padding import _remove_padding from ._imaging_utils._aperture_grid import _graph_aperture_grid from ._imaging_utils._normalize import _normalize from cngi.image import make_empty_sky_image from cngi.image import fit_gaussian #Deep copy so that inputs are not modified _mxds = mxds.copy(deep=True) _img_dataset = img_dataset.copy(deep=True) _vis_sel_parms = copy.deepcopy(vis_sel_parms) _img_sel_parms = copy.deepcopy(img_sel_parms) _grid_parms = copy.deepcopy(grid_parms) _norm_parms = copy.deepcopy(norm_parms) ##############Parameter Checking and Set Defaults############## assert ( 'xds' in _vis_sel_parms ), "######### ERROR: xds must be specified in sel_parms" #Can't have a default since xds names are not fixed. _vis_dataset = _mxds.attrs[_vis_sel_parms['xds']] assert (_check_grid_parms(_grid_parms) ), "######### ERROR: grid_parms checking failed" assert (_check_norm_parms(_norm_parms) ), "######### ERROR: norm_parms checking failed" #Check vis data_group _check_sel_parms(_vis_dataset, _vis_sel_parms) #Check img data_group _check_sel_parms(_img_dataset, _img_sel_parms, new_or_modified_data_variables={ 'sum_weight': 'PSF_SUM_WEIGHT', 'psf': 'PSF', 'psf_fit': 'PSF_FIT' }, required_data_variables={ 'pb': 'PB', 'weight_pb': 'WEIGHT_PB' }, append_to_in_id=False) #'pb':'PB','weight_pb':'WEIGHT_PB', #print('did this work',_img_sel_parms) _grid_parms['grid_weights'] = False _grid_parms['do_psf'] = True _grid_parms['oversampling'] = np.array(gcf_dataset.oversampling) grids_and_sum_weights = _graph_aperture_grid(_vis_dataset, gcf_dataset, _grid_parms, _vis_sel_parms) uncorrected_dirty_image = dafft.fftshift(dafft.ifft2(dafft.ifftshift( grids_and_sum_weights[0], axes=(0, 1)), axes=(0, 1)), axes=(0, 1)) #Remove Padding #print('grid sizes',_grid_parms['image_size_padded'][0], _grid_parms['image_size_padded'][1]) uncorrected_dirty_image = _remove_padding( uncorrected_dirty_image, _grid_parms['image_size']).real * ( _grid_parms['image_size_padded'][0] * _grid_parms['image_size_padded'][1]) #print(_img_sel_parms) normalized_image = _normalize(uncorrected_dirty_image, grids_and_sum_weights[1], img_dataset, gcf_dataset, 'forward', _norm_parms, _img_sel_parms) normalized_image = normalized_image / normalized_image[ _grid_parms['image_center'][0], _grid_parms['image_center'][1], :, :] if _grid_parms['chan_mode'] == 'continuum': freq_coords = [da.mean(_vis_dataset.coords['chan'].values)] chan_width = da.from_array([da.mean(_vis_dataset['chan_width'].data)], chunks=(1, )) imag_chan_chunk_size = 1 elif _grid_parms['chan_mode'] == 'cube': freq_coords = _vis_dataset.coords['chan'].values chan_width = _vis_dataset['chan_width'].data imag_chan_chunk_size = _vis_dataset.DATA.chunks[2][0] ###Create Image Dataset chunks = _vis_dataset.DATA.chunks n_imag_pol = chunks[3][0] #coords = {'d0': np.arange(_grid_parms['image_size'][0]), 'd1': np.arange(_grid_parms['image_size'][1]), # 'chan': freq_coords, 'pol': np.arange(n_imag_pol), 'chan_width' : ('chan',chan_width)} #img_dataset = img_dataset.assign_coords(coords) #img_dataset[_sel_parms['sum_weight']] = xr.DataArray(grids_and_sum_weights[1], dims=['chan','pol']) #img_dataset[_sel_parms['image']] = xr.DataArray(normalized_image, dims=['d0', 'd1', 'chan', 'pol']) phase_center = _grid_parms['phase_center'] image_size = _grid_parms['image_size'] cell_size = _grid_parms['cell_size'] phase_center = _grid_parms['phase_center'] pol_coords = _vis_dataset.pol.data time_coords = [_vis_dataset.time.mean().data] _img_dataset = make_empty_sky_image(_img_dataset, phase_center, image_size, cell_size, freq_coords, chan_width, pol_coords, time_coords) _img_dataset[_img_sel_parms['data_group_out'] ['sum_weight']] = xr.DataArray( grids_and_sum_weights[1][None, :, :], dims=['time', 'chan', 'pol']) _img_dataset[_img_sel_parms['data_group_out']['psf']] = xr.DataArray( normalized_image[:, :, None, :, :], dims=['l', 'm', 'time', 'chan', 'pol']) _img_dataset.attrs['data_groups'][0] = { **_img_dataset.attrs['data_groups'][0], **{ _img_sel_parms['data_group_out']['id']: _img_sel_parms['data_group_out'] } } #list_xarray_data_variables = [img_dataset[_sel_parms['image']],img_dataset[_sel_parms['sum_weight']]] #return _store(img_dataset,list_xarray_data_variables,_storage_parms) _img_dataset = fit_gaussian( _img_dataset, dv=_img_sel_parms['data_group_out']['psf'], beam_set_name=_img_sel_parms['data_group_out']['psf_fit']) print( '######################### Created graph for make_psf_with_gcf #########################' ) return _img_dataset '''
def make_mosaic_pb(mxds, gcf_dataset, img_dataset, vis_sel_parms, img_sel_parms, grid_parms): """ The make_pb function currently supports rotationally symmetric airy disk primary beams. Primary beams can be generated for any number of dishes. The make_pb_parms['list_dish_diameters'] and make_pb_parms['list_blockage_diameters'] must be specified for each dish. Parameters ---------- vis_dataset : xarray.core.dataset.Dataset Input visibility dataset. gcf_dataset : xarray.core.dataset.Dataset Input gridding convolution function dataset. img_dataset : xarray.core.dataset.Dataset Input image dataset. () make_pb_parms : dictionary make_pb_parms['function'] : {'airy'}, default='airy' Only the airy disk function is currently supported. grid_parms['imsize'] : list of int, length = 2 The image size (no padding). grid_parms['cell'] : list of number, length = 2, units = arcseconds The image cell size. make_pb_parms['list_dish_diameters'] : list of number The list of dish diameters. make_pb_parms['list_blockage_diameters'] = list of number The list of blockage diameters for each dish. vis_sel_parms : dictionary vis_sel_parms['xds'] : str The xds within the mxds to use to calculate the imaging weights for. vis_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the xds to use. img_sel_parms : dictionary img_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the image xds to use. img_sel_parms['pb'] : str, default ='PB' The mosaic primary beam. img_sel_parms['weight_pb'] : str, default ='WEIGHT_PB' The weight image. img_sel_parms['weight_pb_sum_weight'] : str, default ='WEIGHT_PB_SUM_WEIGHT' The sum of weight calculated when gridding the gcfs to create the weight image. Returns ------- img_xds : xarray.core.dataset.Dataset """ print( '######################### Start make_mosaic_pb #########################' ) #from ngcasa._ngcasa_utils._store import _store #from ngcasa._ngcasa_utils._check_parms import _check_storage_parms, _check_sel_parms, _check_existence_sel_parms from cngi._utils._check_parms import _check_sel_parms, _check_existence_sel_parms from ._imaging_utils._check_imaging_parms import _check_grid_parms, _check_mosaic_pb_parms from ._imaging_utils._aperture_grid import _graph_aperture_grid import dask.array.fft as dafft import matplotlib.pylab as plt import numpy as np import dask.array as da import copy import xarray as xr from ._imaging_utils._remove_padding import _remove_padding from ._imaging_utils._normalize import _normalize from cngi.image import make_empty_sky_image import dask #Deep copy so that inputs are not modified _mxds = mxds.copy(deep=True) _img_dataset = img_dataset.copy(deep=True) _vis_sel_parms = copy.deepcopy(vis_sel_parms) _img_sel_parms = copy.deepcopy(img_sel_parms) _grid_parms = copy.deepcopy(grid_parms) ##############Parameter Checking and Set Defaults############## assert ( 'xds' in _vis_sel_parms ), "######### ERROR: xds must be specified in sel_parms" #Can't have a default since xds names are not fixed. _vis_dataset = _mxds.attrs[_vis_sel_parms['xds']] assert (_check_grid_parms(_grid_parms) ), "######### ERROR: grid_parms checking failed" #Check vis data_group _check_sel_parms(_vis_dataset, _vis_sel_parms) #print(_vis_sel_parms) #Check img data_group _check_sel_parms(_img_dataset, _img_sel_parms, new_or_modified_data_variables={ 'pb': 'PB', 'weight_pb': 'WEIGHT_PB', 'weight_pb_sum_weight': 'WEIGHT_PB_SUM_WEIGHT' }, append_to_in_id=True) #print('did this work',_img_sel_parms) _grid_parms['grid_weights'] = True _grid_parms['do_psf'] = False #_grid_parms['image_size_padded'] = _grid_parms['image_size'] _grid_parms['oversampling'] = np.array(gcf_dataset.attrs['oversampling']) grids_and_sum_weights = _graph_aperture_grid(_vis_dataset, gcf_dataset, _grid_parms, _vis_sel_parms) #grids_and_sum_weights = _graph_aperture_grid(_vis_dataset,gcf_dataset,_grid_parms) weight_image = _remove_padding( dafft.fftshift(dafft.ifft2(dafft.ifftshift(grids_and_sum_weights[0], axes=(0, 1)), axes=(0, 1)), axes=(0, 1)), _grid_parms['image_size']).real * ( _grid_parms['image_size_padded'][0] * _grid_parms['image_size_padded'][1]) #############Move this to Normalizer############# def correct_image(weight_image, sum_weights): sum_weights_copy = copy.deepcopy( sum_weights ) ##Don't mutate inputs, therefore do deep copy (https://docs.dask.org/en/latest/delayed-best-practices.html). sum_weights_copy[sum_weights_copy == 0] = 1 weight_image = (weight_image / sum_weights_copy[None, None, :, :]) return weight_image weight_image = da.map_blocks(correct_image, weight_image, grids_and_sum_weights[1], dtype=np.double) mosaic_primary_beam = da.sqrt(np.abs(weight_image)) if _grid_parms['chan_mode'] == 'continuum': freq_coords = [da.mean(_vis_dataset.coords['chan'].values)] chan_width = da.from_array([da.mean(_vis_dataset['chan_width'].data)], chunks=(1, )) imag_chan_chunk_size = 1 elif _grid_parms['chan_mode'] == 'cube': freq_coords = _vis_dataset.coords['chan'].values chan_width = _vis_dataset['chan_width'].data imag_chan_chunk_size = _vis_dataset.DATA.chunks[2][0] phase_center = _grid_parms['phase_center'] image_size = _grid_parms['image_size'] cell_size = _grid_parms['cell_size'] phase_center = _grid_parms['phase_center'] pol_coords = _vis_dataset.pol.data time_coords = [_vis_dataset.time.mean().data] _img_dataset = make_empty_sky_image(_img_dataset, phase_center, image_size, cell_size, freq_coords, chan_width, pol_coords, time_coords) _img_dataset[_img_sel_parms['data_group_out']['pb']] = xr.DataArray( mosaic_primary_beam[:, :, None, :, :], dims=['l', 'm', 'time', 'chan', 'pol']) _img_dataset[_img_sel_parms['data_group_out']['weight_pb']] = xr.DataArray( weight_image[:, :, None, :, :], dims=['l', 'm', 'time', 'chan', 'pol']) _img_dataset[_img_sel_parms['data_group_out'] ['weight_pb_sum_weight']] = xr.DataArray( grids_and_sum_weights[1][None, :, :], dims=['time', 'chan', 'pol']) _img_dataset.attrs['data_groups'][0] = { **_img_dataset.attrs['data_groups'][0], **{ _img_sel_parms['data_group_out']['id']: _img_sel_parms['data_group_out'] } } #list_xarray_data_variables = [_img_dataset[_sel_parms['pb']],_img_dataset[_sel_parms['weight']]] #return _store(_img_dataset,list_xarray_data_variables,_storage_parms) print( '######################### Created graph for make_mosaic_pb #########################' ) return _img_dataset '''
def synthesis_imaging_cube(vis_mxds, img_xds, grid_parms, imaging_weights_parms, pb_parms, vis_sel_parms, img_sel_parms): print('v3') print( '######################### Start Synthesis Imaging Cube #########################' ) import numpy as np from numba import jit import time import math import dask.array.fft as dafft import xarray as xr import dask.array as da import matplotlib.pylab as plt import dask import copy, os from numcodecs import Blosc from itertools import cycle import itertools from cngi._utils._check_parms import _check_sel_parms, _check_existence_sel_parms from ._imaging_utils._check_imaging_parms import _check_imaging_weights_parms, _check_grid_parms, _check_pb_parms from ._imaging_utils._make_pb_symmetric import _airy_disk, _casa_airy_disk from cngi.image import make_empty_sky_image _mxds = vis_mxds.copy(deep=True) _vis_sel_parms = copy.deepcopy(vis_sel_parms) _img_sel_parms = copy.deepcopy(img_sel_parms) _grid_parms = copy.deepcopy(grid_parms) _imaging_weights_parms = copy.deepcopy(imaging_weights_parms) _img_xds = copy.deepcopy(img_xds) _pb_parms = copy.deepcopy(pb_parms) assert ( 'xds' in _vis_sel_parms ), "######### ERROR: xds must be specified in sel_parms" #Can't have a default since xds names are not fixed. _vis_xds = _mxds.attrs[_vis_sel_parms['xds']] assert _vis_xds.dims['pol'] <= 2, "Full polarization is not supported." assert (_check_imaging_weights_parms(_imaging_weights_parms) ), "######### ERROR: imaging_weights_parms checking failed" assert (_check_grid_parms(_grid_parms) ), "######### ERROR: grid_parms checking failed" assert (_check_pb_parms(_img_xds, _pb_parms) ), "######### ERROR: user_imaging_weights_parms checking failed" #Check vis data_group _check_sel_parms(_vis_xds, _vis_sel_parms) #Check img data_group _check_sel_parms(_img_xds, _img_sel_parms, new_or_modified_data_variables={ 'image_sum_weight': 'IMAGE_SUM_WEIGHT', 'image': 'IMAGE', 'psf_sum_weight': 'PSF_SUM_WEIGHT', 'psf': 'PSF', 'pb': 'PB', 'restore_parms': 'RESTORE_PARMS' }, append_to_in_id=True) parms = { 'grid_parms': _grid_parms, 'imaging_weights_parms': _imaging_weights_parms, 'pb_parms': _pb_parms, 'vis_sel_parms': _vis_sel_parms, 'img_sel_parms': _img_sel_parms } chunk_sizes = list( _vis_xds[_vis_sel_parms["data_group_in"]["data"]].chunks) chunk_sizes[0] = (np.sum(chunk_sizes[2]), ) chunk_sizes[1] = (np.sum(chunk_sizes[1]), ) chunk_sizes[3] = (np.sum(chunk_sizes[3]), ) n_pol = _vis_xds.dims['pol'] #assert n_chunks_in_each_dim[3] == 1, "Chunking is not allowed on pol dim." n_chunks_in_each_dim = list( _vis_xds[_vis_sel_parms["data_group_in"]["data"]].data.numblocks) n_chunks_in_each_dim[0] = 1 #time n_chunks_in_each_dim[1] = 1 #baseline n_chunks_in_each_dim[3] = 1 #pol #Iter over time,baseline,chan iter_chunks_indx = itertools.product(np.arange(n_chunks_in_each_dim[0]), np.arange(n_chunks_in_each_dim[1]), np.arange(n_chunks_in_each_dim[2]), np.arange(n_chunks_in_each_dim[3])) image_list = _ndim_list(n_chunks_in_each_dim) image_sum_weight_list = _ndim_list(n_chunks_in_each_dim[2:]) psf_list = _ndim_list(n_chunks_in_each_dim) psf_sum_weight_list = _ndim_list(n_chunks_in_each_dim[2:]) pb_list = _ndim_list(tuple(n_chunks_in_each_dim) + (1, )) ellipse_parms_list = _ndim_list(tuple(n_chunks_in_each_dim[2:]) + (1, )) n_dish_type = len(_pb_parms['list_dish_diameters']) n_elps = 3 freq_chan = da.from_array( _vis_xds.coords['chan'].values, chunks=(_vis_xds[_vis_sel_parms["data_group_in"]["data"]].chunks[2])) # Build graph for c_time, c_baseline, c_chan, c_pol in iter_chunks_indx: #c_time, c_baseline, c_chan, c_pol #print(_vis_xds[_vis_sel_parms["data_group_in"]["data"]].data.partitions[:, :, c_chan, :].shape) synthesis_chunk = dask.delayed(_synthesis_imaging_cube_std_chunk)( _vis_xds[_vis_sel_parms["data_group_in"] ["data"]].data.partitions[:, :, c_chan, :], _vis_xds[_vis_sel_parms["data_group_in"] ["uvw"]].data.partitions[:, :, :], _vis_xds[_vis_sel_parms["data_group_in"] ["weight"]].data.partitions[:, :, c_chan, :], _vis_xds[_vis_sel_parms["data_group_in"] ["flag"]].data.partitions[:, :, c_chan, :], freq_chan.partitions[c_chan], dask.delayed(parms)) image_list[c_time][c_baseline][c_chan][c_pol] = da.from_delayed( synthesis_chunk[0], (_grid_parms['image_size'][0], _grid_parms['image_size'][1], chunk_sizes[2][c_chan], chunk_sizes[3][c_pol]), dtype=np.double) image_sum_weight_list[c_chan][c_pol] = da.from_delayed( synthesis_chunk[1], (chunk_sizes[2][c_chan], chunk_sizes[3][c_pol]), dtype=np.double) psf_list[c_time][c_baseline][c_chan][c_pol] = da.from_delayed( synthesis_chunk[2], (_grid_parms['image_size'][0], _grid_parms['image_size'][1], chunk_sizes[2][c_chan], chunk_sizes[3][c_pol]), dtype=np.double) psf_sum_weight_list[c_chan][c_pol] = da.from_delayed( synthesis_chunk[3], (chunk_sizes[2][c_chan], chunk_sizes[3][c_pol]), dtype=np.double) pb_list[c_time][c_baseline][c_chan][c_pol][0] = da.from_delayed( synthesis_chunk[4], (_grid_parms['image_size'][0], _grid_parms['image_size'][1], chunk_sizes[2][c_chan], chunk_sizes[3][c_pol], n_dish_type), dtype=np.double) ellipse_parms_list[c_chan][c_pol][0] = da.from_delayed( synthesis_chunk[5], (chunk_sizes[2][c_chan], chunk_sizes[3][c_pol], n_elps), dtype=np.double) #return image, image_sum_weight, psf, psf_sum_weight, pb if _grid_parms['chan_mode'] == 'continuum': freq_coords = [da.mean(_vis_xds.coords['chan'].values)] chan_width = da.from_array([da.mean(_vis_xds['chan_width'].data)], chunks=(1, )) imag_chan_chunk_size = 1 elif _grid_parms['chan_mode'] == 'cube': freq_coords = _vis_xds.coords['chan'].values chan_width = _vis_xds['chan_width'].data imag_chan_chunk_size = _vis_xds.DATA.chunks[2][0] phase_center = _grid_parms['phase_center'] image_size = _grid_parms['image_size'] cell_size = _grid_parms['cell_size'] phase_center = _grid_parms['phase_center'] pol_coords = _vis_xds.pol.data time_coords = [_vis_xds.time.mean().data] _img_xds = make_empty_sky_image(_img_xds, phase_center, image_size, cell_size, freq_coords, chan_width, pol_coords, time_coords) #print(da.block(image_list)) #print(da.block(psf_list)) #print(pb_list) #print(da.block(pb_list)) _img_xds[_img_sel_parms['data_group_out']['image']] = xr.DataArray( da.block(image_list)[:, :, None, :, :], dims=['l', 'm', 'time', 'chan', 'pol']) _img_xds[_img_sel_parms['data_group_out'] ['image_sum_weight']] = xr.DataArray( da.block(image_sum_weight_list)[None, :, :], dims=['time', 'chan', 'pol']) print(da.block(ellipse_parms_list)) _img_xds[_img_sel_parms['data_group_out']['restore_parms']] = xr.DataArray( da.block(ellipse_parms_list)[None, :, :, :], dims=['time', 'chan', 'pol', 'elps_index']) _img_xds[_img_sel_parms['data_group_out']['psf']] = xr.DataArray( da.block(psf_list)[:, :, None, :, :], dims=['l', 'm', 'time', 'chan', 'pol']) _img_xds[_img_sel_parms['data_group_out'] ['psf_sum_weight']] = xr.DataArray( da.block(psf_sum_weight_list)[None, :, :], dims=['time', 'chan', 'pol']) _img_xds[_img_sel_parms['data_group_out']['pb']] = xr.DataArray( da.block(pb_list)[:, :, None, :, :, :], dims=['l', 'm', 'time', 'chan', 'pol', 'dish_type']) _img_xds = _img_xds.assign_coords( {'dish_type': np.arange(len(_pb_parms['list_dish_diameters']))}) _img_xds.attrs['data_groups'][0] = { **_img_xds.attrs['data_groups'][0], **{ _img_sel_parms['data_group_out']['id']: _img_sel_parms['data_group_out'] } } return _img_xds
def make_grid(vis_mxds, img_xds, grid_parms, vis_sel_parms, img_sel_parms): """ Parameters ---------- vis_mxds : xarray.core.dataset.Dataset Input multi-xarray Dataset with global data. img_xds : xarray.core.dataset.Dataset Input image dataset. grid_parms : dictionary grid_parms['image_size'] : list of int, length = 2 The image size (no padding). grid_parms['cell_size'] : list of number, length = 2, units = arcseconds The image cell size. grid_parms['chan_mode'] : {'continuum'/'cube'}, default = 'continuum' Create a continuum or cube image. grid_parms['fft_padding'] : number, acceptable range [1,100], default = 1.2 The factor that determines how much the gridded visibilities are padded before the fft is done. vis_sel_parms : dictionary vis_sel_parms['xds'] : str The xds within the mxds to use to calculate the imaging weights for. vis_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the xds to use. img_sel_parms : dictionary img_sel_parms['data_group_in_id'] : int, default = first id in xds.data_groups The data group in the image xds to use. img_sel_parms['image'] : str, default ='IMAGE' The created image name. img_sel_parms['sum_weight'] : str, default ='SUM_WEIGHT' The created sum of weights name. Returns ------- img_xds : xarray.core.dataset.Dataset The image_dataset will contain the image created and the sum of weights. """ print('######################### Start make_image #########################') import numpy as np from numba import jit import time import math import dask.array.fft as dafft import xarray as xr import dask.array as da import matplotlib.pylab as plt import dask import copy, os from numcodecs import Blosc from itertools import cycle from cngi._utils._check_parms import _check_sel_parms, _check_existence_sel_parms from ._imaging_utils._check_imaging_parms import _check_grid_parms from ._imaging_utils._gridding_convolutional_kernels import _create_prolate_spheroidal_kernel, _create_prolate_spheroidal_kernel_1D from ._imaging_utils._standard_grid import _graph_standard_grid from ._imaging_utils._remove_padding import _remove_padding from ._imaging_utils._aperture_grid import _graph_aperture_grid from cngi.image import make_empty_sky_image #print('****',sel_parms,'****') _mxds = vis_mxds.copy(deep=True) _img_xds = img_xds.copy(deep=True) _vis_sel_parms = copy.deepcopy(vis_sel_parms) _img_sel_parms = copy.deepcopy(img_sel_parms) _grid_parms = copy.deepcopy(grid_parms) ##############Parameter Checking and Set Defaults############## assert(_check_grid_parms(_grid_parms)), "######### ERROR: grid_parms checking failed" assert('xds' in _vis_sel_parms), "######### ERROR: xds must be specified in sel_parms" #Can't have a default since xds names are not fixed. _vis_xds = _mxds.attrs[_vis_sel_parms['xds']] #Check vis data_group _check_sel_parms(_vis_xds,_vis_sel_parms) #Check img data_group _check_sel_parms(_img_xds,_img_sel_parms,new_or_modified_data_variables={'sum_weight':'SUM_WEIGHT','grid':'GRID'},append_to_in_id=True) ################################################################################## # Creating gridding kernel _grid_parms['oversampling'] = 100 _grid_parms['support'] = 7 cgk, correcting_cgk_image = _create_prolate_spheroidal_kernel(_grid_parms['oversampling'], _grid_parms['support'], _grid_parms['image_size_padded']) cgk_1D = _create_prolate_spheroidal_kernel_1D(_grid_parms['oversampling'], _grid_parms['support']) _grid_parms['complex_grid'] = True _grid_parms['do_psf'] = False grids_and_sum_weights = _graph_standard_grid(_vis_xds, cgk_1D, _grid_parms, _vis_sel_parms) if _grid_parms['chan_mode'] == 'continuum': freq_coords = [da.mean(_vis_xds.coords['chan'].values)] chan_width = da.from_array([da.mean(_vis_xds['chan_width'].data)],chunks=(1,)) imag_chan_chunk_size = 1 elif _grid_parms['chan_mode'] == 'cube': freq_coords = _vis_xds.coords['chan'].values chan_width = _vis_xds['chan_width'].data imag_chan_chunk_size = _vis_xds.DATA.chunks[2][0] phase_center = _grid_parms['phase_center'] image_size = _grid_parms['image_size'] cell_size = _grid_parms['cell_size'] phase_center = _grid_parms['phase_center'] pol_coords = _vis_xds.pol.data time_coords = [_vis_xds.time.mean().data] _img_xds = make_empty_sky_image(_img_xds,grid_parms['phase_center'],image_size,cell_size,freq_coords,chan_width,pol_coords,time_coords) _img_xds[_img_sel_parms['data_group_out']['sum_weight']] = xr.DataArray(grids_and_sum_weights[1][None,:,:], dims=['time','chan','pol']) _img_xds[_img_sel_parms['data_group_out']['grid']] = xr.DataArray(grids_and_sum_weights[0][:,:,None,:,:], dims=['u', 'v', 'time', 'chan', 'pol']) _img_xds.attrs['data_groups'][0] = {**_img_xds.attrs['data_groups'][0],**{_img_sel_parms['data_group_out']['id']:_img_sel_parms['data_group_out']}} print('######################### Created graph for make_image #########################') return _img_xds