def test1(): '''Simple test with a single triclinic crystal restrained to a target unit cell''' from math import pi from random import gauss from dials.test.algorithms.refinement.setup_geometry import Extract from dxtbx.model.experiment.experiment_list import ExperimentList, Experiment #### Import model parameterisations from dials.algorithms.refinement.parameterisation.prediction_parameters import \ XYPhiPredictionParameterisation from dials.algorithms.refinement.parameterisation.detector_parameters import \ DetectorParameterisationSinglePanel from dials.algorithms.refinement.parameterisation.beam_parameters import \ BeamParameterisation from dials.algorithms.refinement.parameterisation.crystal_parameters import \ CrystalOrientationParameterisation, \ CrystalUnitCellParameterisation overrides = """geometry.parameters.crystal.a.length.range = 10 50 geometry.parameters.crystal.b.length.range = 10 50 geometry.parameters.crystal.c.length.range = 10 50""" master_phil = parse(""" include scope dials.test.algorithms.refinement.geometry_phil """, process_includes=True) models = Extract(master_phil, overrides) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Build a mock scan for a 72 degree sweep sweep_range = (0., pi/5.) from dxtbx.model.scan import scan_factory sf = scan_factory() myscan = sf.make_scan(image_range = (1,720), exposure_times = 0.1, oscillation = (0, 0.1), epochs = range(720), deg = True) # Create parameterisations of these models det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Create an ExperimentList experiments = ExperimentList() experiments.append(Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None)) # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation(experiments, detector_parameterisations = [det_param], beam_parameterisations = [s0_param], xl_orientation_parameterisations = [xlo_param], xl_unit_cell_parameterisations = [xluc_param]) # Build a restraints parameterisation rp = RestraintsParameterisation(detector_parameterisations = [det_param], beam_parameterisations = [s0_param], xl_orientation_parameterisations = [xlo_param], xl_unit_cell_parameterisations = [xluc_param]) # make a unit cell target sigma = 1. uc = mycrystal.get_unit_cell().parameters() target_uc = [gauss(e, sigma) for e in uc] rp.add_restraints_to_target_xl_unit_cell(experiment_id=0, values=target_uc, sigma=[sigma]*6) # get analytical values and gradients vals, grads, weights = rp.get_residuals_gradients_and_weights() # get finite difference gradients p_vals = pred_param.get_param_vals() deltas = [1.e-7] * len(p_vals) fd_grad=[] for i in range(len(deltas)): val = p_vals[i] p_vals[i] -= deltas[i] / 2. pred_param.set_param_vals(p_vals) rev_state, foo, bar = rp.get_residuals_gradients_and_weights() rev_state = flex.double(rev_state) p_vals[i] += deltas[i] pred_param.set_param_vals(p_vals) fwd_state, foo, bar = rp.get_residuals_gradients_and_weights() fwd_state = flex.double(fwd_state) p_vals[i] = val fd = (fwd_state - rev_state) / deltas[i] fd_grad.append(fd) # for comparison, fd_grad is a list of flex.doubles, each of which corresponds # to a column of the sparse matrix grads. for i, fd in enumerate(fd_grad): # extract dense column from the sparse matrix an = grads.col(i).as_dense_vector() assert approx_equal(an, fd, eps=1e-5) print "OK"
epochs=range(1800), deg=True) # Build an ExperimentList experiments = ExperimentList() experiments.append( Experiment(beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None)) # Create the PredictionParameterisation pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [s0_param], [xlo_param], [xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detector by 1.0 mm each translation and 4 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 4., 4., 4.])] det_param.set_param_vals(p_vals) # shift beam by 4 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals)
# TEMPORARY TESTING HERE from dials.algorithms.refinement.restraints.restraints import SingleUnitCellTie uct = SingleUnitCellTie(xluc_param, [None]*6, [None]*6) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Fix crystal parameters #xluc_param.set_fixed([True, True, True, True, True, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [s0_param], [xlo_param], [xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detector by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2., 2., 2.])] det_param.set_param_vals(p_vals) # shift beam by 2 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals)
s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Create an ExperimentList experiments = ExperimentList() experiments.append(Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None)) #### Unit tests # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation(experiments, detector_parameterisations = [det_param], beam_parameterisations = [s0_param], xl_orientation_parameterisations = [xlo_param], xl_unit_cell_parameterisations = [xluc_param]) # Generate reflections resolution = 2.0 index_generator = IndexGenerator(mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution) indices = index_generator.to_array() # Predict rays within the sweep range ray_predictor = ScansRayPredictor(experiments, sweep_range) obs_refs = ray_predictor(indices) # Take only those rays that intersect the detector
# Create an ExperimentList experiments = ExperimentList() experiments.append( Experiment(beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None)) #### Unit tests # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation( experiments, detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param]) # Generate reflections resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution) indices = index_generator.to_array() # Predict rays within the sweep range ray_predictor = ScansRayPredictor(experiments, sweep_range) obs_refs = ray_predictor(indices) # Take only those rays that intersect the detector
def test(args=[]): ############################# # Setup experimental models # ############################# master_phil = parse( """ include scope dials.test.algorithms.refinement.geometry_phil include scope dials.test.algorithms.refinement.minimiser_phil """, process_includes=True, ) models = setup_geometry.Extract(master_phil, cmdline_args=args) single_panel_detector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Make a 3x3 multi panel detector filling the same space as the existing # single panel detector. Each panel of the multi-panel detector has pixels with # 1/3 the length dimensions of the single panel. multi_panel_detector = Detector() for x in range(3): for y in range(3): new_panel = make_panel_in_array((x, y), single_panel_detector[0]) multi_panel_detector.add_panel(new_panel) # Build a mock scan for a 180 degree sweep sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 1800), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(1800)), deg=True, ) sweep_range = myscan.get_oscillation_range(deg=False) im_width = myscan.get_oscillation(deg=False)[1] assert sweep_range == (0.0, pi) assert approx_equal(im_width, 0.1 * pi / 180.0) # Build ExperimentLists experiments_single_panel = ExperimentList() experiments_multi_panel = ExperimentList() experiments_single_panel.append( Experiment( beam=mybeam, detector=single_panel_detector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) experiments_multi_panel.append( Experiment( beam=mybeam, detector=multi_panel_detector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) ########################### # Parameterise the models # ########################### det_param = DetectorParameterisationSinglePanel(single_panel_detector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) multi_det_param = DetectorParameterisationMultiPanel( multi_panel_detector, mybeam) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Fix crystal parameters # xluc_param.set_fixed([True, True, True, True, True, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation(experiments_single_panel, [det_param], [s0_param], [xlo_param], [xluc_param]) pred_param2 = XYPhiPredictionParameterisation( experiments_multi_panel, [multi_det_param], [s0_param], [xlo_param], [xluc_param], ) ################################ # Apply known parameter shifts # ################################ # shift detectors by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [ a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0]) ] det_param.set_param_vals(p_vals) multi_det_p_vals = multi_det_param.get_param_vals() p_vals = [ a + b for a, b in zip(multi_det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0]) ] multi_det_param.set_param_vals(p_vals) # shift beam by 2 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals) p_vals[0] += 2.0 s0_param.set_param_vals(p_vals) # rotate crystal a bit (=2 mrad each rotation) xlo_p_vals = xlo_param.get_param_vals() p_vals = [a + b for a, b in zip(xlo_p_vals, [2.0, 2.0, 2.0])] xlo_param.set_param_vals(p_vals) # change unit cell a bit (=0.1 Angstrom length upsets, 0.1 degree of # gamma angle) xluc_p_vals = xluc_param.get_param_vals() cell_params = mycrystal.get_unit_cell().parameters() cell_params = [ a + b for a, b in zip(cell_params, [0.1, 0.1, 0.1, 0.0, 0.0, 0.1]) ] new_uc = unit_cell(cell_params) newB = matrix.sqr(new_uc.fractionalization_matrix()).transpose() S = symmetrize_reduce_enlarge(mycrystal.get_space_group()) S.set_orientation(orientation=newB) X = tuple([e * 1.0e5 for e in S.forward_independent_parameters()]) xluc_param.set_param_vals(X) ############################# # Generate some reflections # ############################# # All indices in a 2.0 Angstrom sphere resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution, ) indices = index_generator.to_array() # for the reflection predictor, it doesn't matter which experiment list is # passed, as the detector is not used ref_predictor = ScansRayPredictor(experiments_single_panel, sweep_range) # get two sets of identical reflections obs_refs = ref_predictor(indices) obs_refs2 = ref_predictor(indices) for r1, r2 in zip(obs_refs, obs_refs2): assert r1["s1"] == r2["s1"] # get the panel intersections sel = ray_intersection(single_panel_detector, obs_refs) obs_refs = obs_refs.select(sel) sel = ray_intersection(multi_panel_detector, obs_refs2) obs_refs2 = obs_refs2.select(sel) assert len(obs_refs) == len(obs_refs2) # Set 'observed' centroids from the predicted ones obs_refs["xyzobs.mm.value"] = obs_refs["xyzcal.mm"] obs_refs2["xyzobs.mm.value"] = obs_refs2["xyzcal.mm"] # Invent some variances for the centroid positions of the simulated data im_width = 0.1 * pi / 180.0 px_size = single_panel_detector[0].get_pixel_size() var_x = flex.double(len(obs_refs), (px_size[0] / 2.0)**2) var_y = flex.double(len(obs_refs), (px_size[1] / 2.0)**2) var_phi = flex.double(len(obs_refs), (im_width / 2.0)**2) # set the variances and frame numbers obs_refs["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) obs_refs2["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) # Add in flags and ID columns by copying into standard reflection tables tmp = flex.reflection_table.empty_standard(len(obs_refs)) tmp.update(obs_refs) obs_refs = tmp tmp = flex.reflection_table.empty_standard(len(obs_refs2)) tmp.update(obs_refs2) obs_refs2 = tmp ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) multi_det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) ##################################### # Select reflections for refinement # ##################################### refman = ReflectionManager(obs_refs, experiments_single_panel) refman2 = ReflectionManager(obs_refs, experiments_multi_panel) ############################### # Set up the target functions # ############################### mytarget = LeastSquaresPositionalResidualWithRmsdCutoff( experiments_single_panel, ScansExperimentsPredictor(experiments_single_panel), refman, pred_param, restraints_parameterisation=None, ) mytarget2 = LeastSquaresPositionalResidualWithRmsdCutoff( experiments_multi_panel, ScansExperimentsPredictor(experiments_multi_panel), refman2, pred_param2, restraints_parameterisation=None, ) ################################# # Set up the refinement engines # ################################# refiner = setup_minimiser.Extract(master_phil, mytarget, pred_param, cmdline_args=args).refiner refiner2 = setup_minimiser.Extract(master_phil, mytarget2, pred_param2, cmdline_args=args).refiner refiner.run() # reset parameters and run refinement with the multi panel detector s0_param.set_param_vals(s0_p_vals) multi_det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) refiner2.run() # same number of steps assert refiner.get_num_steps() == refiner2.get_num_steps() # same rmsds for rmsd, rmsd2 in zip(refiner.history["rmsd"], refiner2.history["rmsd"]): assert approx_equal(rmsd, rmsd2) # same parameter values each step for params, params2 in zip(refiner.history["parameter_vector"], refiner.history["parameter_vector"]): assert approx_equal(params, params2)
def test1(): dials_regression = libtbx.env.find_in_repositories( relative_path="dials_regression", test=os.path.isdir) # use a datablock that contains a CS-PAD detector description data_dir = os.path.join(dials_regression, "refinement_test_data", "hierarchy_test") datablock_path = os.path.join(data_dir, "datablock.json") assert os.path.exists(datablock_path) # load models from dxtbx.datablock import DataBlockFactory datablock = DataBlockFactory.from_serialized_format(datablock_path, check_format=False) im_set = datablock[0].extract_imagesets()[0] from copy import deepcopy detector = deepcopy(im_set.get_detector()) beam = im_set.get_beam() # we'll invent a crystal, goniometer and scan for this test from dxtbx.model import Crystal crystal = Crystal((40., 0., 0.), (0., 40., 0.), (0., 0., 40.), space_group_symbol="P1") from dxtbx.model import GoniometerFactory goniometer = GoniometerFactory.known_axis((1., 0., 0.)) # Build a mock scan for a 180 degree sweep from dxtbx.model import ScanFactory sf = ScanFactory() scan = sf.make_scan(image_range=(1, 1800), exposure_times=0.1, oscillation=(0, 0.1), epochs=range(1800), deg=True) sweep_range = scan.get_oscillation_range(deg=False) im_width = scan.get_oscillation(deg=False)[1] assert sweep_range == (0., pi) assert approx_equal(im_width, 0.1 * pi / 180.) from dxtbx.model.experiment_list import ExperimentList, Experiment # Build an experiment list experiments = ExperimentList() experiments.append( Experiment(beam=beam, detector=detector, goniometer=goniometer, scan=scan, crystal=crystal, imageset=None)) # simulate some reflections refs, ref_predictor = generate_reflections(experiments) # move the detector quadrants apart by 2mm both horizontally and vertically from dials.algorithms.refinement.parameterisation \ import DetectorParameterisationHierarchical det_param = DetectorParameterisationHierarchical(detector, level=1) det_p_vals = det_param.get_param_vals() p_vals = list(det_p_vals) p_vals[1] += 2 p_vals[2] -= 2 p_vals[7] += 2 p_vals[8] += 2 p_vals[13] -= 2 p_vals[14] += 2 p_vals[19] -= 2 p_vals[20] -= 2 det_param.set_param_vals(p_vals) # reparameterise the detector at the new perturbed geometry det_param = DetectorParameterisationHierarchical(detector, level=1) # parameterise other models from dials.algorithms.refinement.parameterisation.beam_parameters import \ BeamParameterisation from dials.algorithms.refinement.parameterisation.crystal_parameters import \ CrystalOrientationParameterisation, CrystalUnitCellParameterisation beam_param = BeamParameterisation(beam, goniometer) xlo_param = CrystalOrientationParameterisation(crystal) xluc_param = CrystalUnitCellParameterisation(crystal) # fix beam beam_param.set_fixed([True] * 3) # fix crystal xluc_param.set_fixed([True] * 6) xlo_param.set_fixed([True] * 3) # parameterisation of the prediction equation from dials.algorithms.refinement.parameterisation.prediction_parameters import \ XYPhiPredictionParameterisation from dials.algorithms.refinement.parameterisation.parameter_report import \ ParameterReporter pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [beam_param], [xlo_param], [xluc_param]) param_reporter = ParameterReporter([det_param], [beam_param], [xlo_param], [xluc_param]) # reflection manager and target function from dials.algorithms.refinement.target import \ LeastSquaresPositionalResidualWithRmsdCutoff from dials.algorithms.refinement.reflection_manager import ReflectionManager refman = ReflectionManager(refs, experiments, nref_per_degree=20) # set a very tight rmsd target of 1/10000 of a pixel target = LeastSquaresPositionalResidualWithRmsdCutoff( experiments, ref_predictor, refman, pred_param, restraints_parameterisation=None, frac_binsize_cutoff=0.0001) # minimisation engine from dials.algorithms.refinement.engine \ import LevenbergMarquardtIterations as Refinery refinery = Refinery(target=target, prediction_parameterisation=pred_param, log=None, verbosity=0, max_iterations=20) # Refiner from dials.algorithms.refinement.refiner import Refiner refiner = Refiner(reflections=refs, experiments=experiments, pred_param=pred_param, param_reporter=param_reporter, refman=refman, target=target, refinery=refinery, verbosity=0) history = refiner.run() assert history.reason_for_termination == "RMSD target achieved" #compare detector with original detector orig_det = im_set.get_detector() refined_det = refiner.get_experiments()[0].detector from scitbx import matrix import math for op, rp in zip(orig_det, refined_det): # compare the origin vectors by... o1 = matrix.col(op.get_origin()) o2 = matrix.col(rp.get_origin()) # ...their relative lengths assert approx_equal(math.fabs(o1.length() - o2.length()) / o1.length(), 0, eps=1e-5) # ...the angle between them assert approx_equal(o1.accute_angle(o2), 0, eps=1e-5) print "OK" return
def test_single_crystal_restraints_gradients(): """Simple test with a single triclinic crystal restrained to a target unit cell""" from dxtbx.model.experiment_list import Experiment, ExperimentList from dials.algorithms.refinement.parameterisation.beam_parameters import ( BeamParameterisation, ) from dials.algorithms.refinement.parameterisation.crystal_parameters import ( CrystalOrientationParameterisation, CrystalUnitCellParameterisation, ) from dials.algorithms.refinement.parameterisation.detector_parameters import ( DetectorParameterisationSinglePanel, ) from dials.algorithms.refinement.parameterisation.prediction_parameters import ( XYPhiPredictionParameterisation, ) from dials.test.algorithms.refinement.setup_geometry import Extract overrides = """geometry.parameters.crystal.a.length.range = 10 50 geometry.parameters.crystal.b.length.range = 10 50 geometry.parameters.crystal.c.length.range = 10 50""" master_phil = parse( """ include scope dials.test.algorithms.refinement.geometry_phil """, process_includes=True, ) models = Extract(master_phil, overrides) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Build a mock scan for a 72 degree sequence from dxtbx.model import ScanFactory sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 720), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(720)), deg=True, ) # Create parameterisations of these models det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Create an ExperimentList experiments = ExperimentList() experiments.append( Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation( experiments, detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param], ) # Build a restraints parameterisation rp = RestraintsParameterisation( detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param], ) # make a unit cell target sigma = 1.0 uc = mycrystal.get_unit_cell().parameters() target_uc = [random.gauss(e, sigma) for e in uc] rp.add_restraints_to_target_xl_unit_cell(experiment_id=0, values=target_uc, sigma=[sigma] * 6) # get analytical values and gradients vals, grads, weights = rp.get_residuals_gradients_and_weights() assert len(vals) == rp.num_residuals # get finite difference gradients p_vals = pred_param.get_param_vals() deltas = [1.0e-7] * len(p_vals) fd_grad = [] for i, delta in enumerate(deltas): val = p_vals[i] p_vals[i] -= delta / 2.0 pred_param.set_param_vals(p_vals) rev_state, foo, bar = rp.get_residuals_gradients_and_weights() rev_state = flex.double(rev_state) p_vals[i] += delta pred_param.set_param_vals(p_vals) fwd_state, foo, bar = rp.get_residuals_gradients_and_weights() fwd_state = flex.double(fwd_state) p_vals[i] = val fd = (fwd_state - rev_state) / delta fd_grad.append(fd) # for comparison, fd_grad is a list of flex.doubles, each of which corresponds # to a column of the sparse matrix grads. for i, fd in enumerate(fd_grad): # extract dense column from the sparse matrix an = grads.col(i).as_dense_vector() assert an == pytest.approx(fd, abs=1e-5)
def test(): # Python and cctbx imports from math import pi from scitbx import matrix from scitbx.array_family import flex from libtbx.phil import parse from libtbx.test_utils import approx_equal # Get modules to build models and minimiser using PHIL import dials.test.algorithms.refinement.setup_geometry as setup_geometry import dials.test.algorithms.refinement.setup_minimiser as setup_minimiser # We will set up a mock scan and a mock experiment list from dxtbx.model import ScanFactory from dxtbx.model.experiment_list import ExperimentList, Experiment # Model parameterisations from dials.algorithms.refinement.parameterisation.detector_parameters import ( DetectorParameterisationSinglePanel, ) from dials.algorithms.refinement.parameterisation.beam_parameters import ( BeamParameterisation, ) from dials.algorithms.refinement.parameterisation.crystal_parameters import ( CrystalOrientationParameterisation, CrystalUnitCellParameterisation, ) # Symmetry constrained parameterisation for the unit cell from cctbx.uctbx import unit_cell from rstbx.symmetry.constraints.parameter_reduction import symmetrize_reduce_enlarge # Reflection prediction from dials.algorithms.spot_prediction import IndexGenerator, ray_intersection from dials.algorithms.refinement.prediction.managed_predictors import ( ScansRayPredictor, ScansExperimentsPredictor, ) from cctbx.sgtbx import space_group, space_group_symbols # Parameterisation of the prediction equation from dials.algorithms.refinement.parameterisation.prediction_parameters import ( XYPhiPredictionParameterisation, ) # Imports for the target function from dials.algorithms.refinement.target import ( LeastSquaresPositionalResidualWithRmsdCutoff, ) from dials.algorithms.refinement.reflection_manager import ReflectionManager ############################# # Setup experimental models # ############################# override = """geometry.parameters { beam.wavelength.random=False beam.wavelength.value=1.0 beam.direction.inclination.random=False crystal.a.length.random=False crystal.a.length.value=12.0 crystal.a.direction.method=exactly crystal.a.direction.exactly.direction=1.0 0.002 -0.004 crystal.b.length.random=False crystal.b.length.value=14.0 crystal.b.direction.method=exactly crystal.b.direction.exactly.direction=-0.002 1.0 0.002 crystal.c.length.random=False crystal.c.length.value=13.0 crystal.c.direction.method=exactly crystal.c.direction.exactly.direction=0.002 -0.004 1.0 detector.directions.method=exactly detector.directions.exactly.dir1=0.99 0.002 -0.004 detector.directions.exactly.norm=0.002 -0.001 0.99 detector.centre.method=exactly detector.centre.exactly.value=1.0 -0.5 199.0 }""" master_phil = parse( """ include scope dials.test.algorithms.refinement.geometry_phil include scope dials.test.algorithms.refinement.minimiser_phil """, process_includes=True, ) models = setup_geometry.Extract(master_phil, local_overrides=override, verbose=False) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam ########################### # Parameterise the models # ########################### det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## # Build a mock scan for a 180 degree sweep sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 1800), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(1800)), deg=True, ) # Build an ExperimentList experiments = ExperimentList() experiments.append( Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) # Create the PredictionParameterisation pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [s0_param], [xlo_param], [xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detector by 1.0 mm each translation and 4 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [ a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 4.0, 4.0, 4.0]) ] det_param.set_param_vals(p_vals) # shift beam by 4 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals) p_vals[0] += 4.0 s0_param.set_param_vals(p_vals) # rotate crystal a bit (=3 mrad each rotation) xlo_p_vals = xlo_param.get_param_vals() p_vals = [a + b for a, b in zip(xlo_p_vals, [3.0, 3.0, 3.0])] xlo_param.set_param_vals(p_vals) # change unit cell a bit (=0.1 Angstrom length upsets, 0.1 degree of # alpha and beta angles) xluc_p_vals = xluc_param.get_param_vals() cell_params = mycrystal.get_unit_cell().parameters() cell_params = [ a + b for a, b in zip(cell_params, [0.1, -0.1, 0.1, 0.1, -0.1, 0.0]) ] new_uc = unit_cell(cell_params) newB = matrix.sqr(new_uc.fractionalization_matrix()).transpose() S = symmetrize_reduce_enlarge(mycrystal.get_space_group()) S.set_orientation(orientation=newB) X = tuple([e * 1.0e5 for e in S.forward_independent_parameters()]) xluc_param.set_param_vals(X) ############################# # Generate some reflections # ############################# # All indices in a 2.0 Angstrom sphere resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution, ) indices = index_generator.to_array() sweep_range = myscan.get_oscillation_range(deg=False) im_width = myscan.get_oscillation(deg=False)[1] assert sweep_range == (0.0, pi) assert approx_equal(im_width, 0.1 * pi / 180.0) # Predict rays within the sweep range ray_predictor = ScansRayPredictor(experiments, sweep_range) obs_refs = ray_predictor(indices) # Take only those rays that intersect the detector intersects = ray_intersection(mydetector, obs_refs) obs_refs = obs_refs.select(intersects) # Make a reflection predictor and re-predict for all these reflections. The # result is the same, but we gain also the flags and xyzcal.px columns ref_predictor = ScansExperimentsPredictor(experiments) obs_refs["id"] = flex.int(len(obs_refs), 0) obs_refs = ref_predictor(obs_refs) # Set 'observed' centroids from the predicted ones obs_refs["xyzobs.mm.value"] = obs_refs["xyzcal.mm"] # Invent some variances for the centroid positions of the simulated data im_width = 0.1 * pi / 180.0 px_size = mydetector[0].get_pixel_size() var_x = flex.double(len(obs_refs), (px_size[0] / 2.0)**2) var_y = flex.double(len(obs_refs), (px_size[1] / 2.0)**2) var_phi = flex.double(len(obs_refs), (im_width / 2.0)**2) obs_refs["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) # The total number of observations should be 1128 assert len(obs_refs) == 1128 ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) ##################################### # Select reflections for refinement # ##################################### refman = ReflectionManager(obs_refs, experiments, outlier_detector=None, close_to_spindle_cutoff=0.1) ############################## # Set up the target function # ############################## # The current 'achieved' criterion compares RMSD against 1/3 the pixel size and # 1/3 the image width in radians. For the simulated data, these are just made up mytarget = LeastSquaresPositionalResidualWithRmsdCutoff( experiments, ref_predictor, refman, pred_param, restraints_parameterisation=None) ###################################### # Set up the LSTBX refinement engine # ###################################### overrides = """minimiser.parameters.engine=GaussNewton minimiser.parameters.logfile=None""" refiner = setup_minimiser.Extract(master_phil, mytarget, pred_param, local_overrides=overrides).refiner refiner.run() assert mytarget.achieved() assert refiner.get_num_steps() == 1 assert approx_equal( mytarget.rmsds(), (0.00508252354876, 0.00420954552156, 8.97303428289e-05)) ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) ###################################################### # Set up the LBFGS with curvatures refinement engine # ###################################################### overrides = """minimiser.parameters.engine=LBFGScurvs minimiser.parameters.logfile=None""" refiner = setup_minimiser.Extract(master_phil, mytarget, pred_param, local_overrides=overrides).refiner refiner.run() assert mytarget.achieved() assert refiner.get_num_steps() == 9 assert approx_equal(mytarget.rmsds(), (0.0558857700305, 0.0333446685335, 0.000347402754278))
def test(init_test): single_panel_detector = init_test.experiments_single_panel.detectors()[0] multi_panel_detector = init_test.experiments_multi_panel.detectors()[0] beam = init_test.experiments_single_panel.beams()[0] gonio = init_test.experiments_single_panel.goniometers()[0] crystal = init_test.experiments_single_panel.crystals()[0] # Parameterise the models det_param = DetectorParameterisationSinglePanel(single_panel_detector) s0_param = BeamParameterisation(beam, gonio) xlo_param = CrystalOrientationParameterisation(crystal) xluc_param = CrystalUnitCellParameterisation(crystal) multi_det_param = DetectorParameterisationMultiPanel(multi_panel_detector, beam) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Link model parameterisations together into a parameterisation of the # prediction equation, first for the single panel detector pred_param = XYPhiPredictionParameterisation( init_test.experiments_single_panel, [det_param], [s0_param], [xlo_param], [xluc_param], ) # ... and now for the multi-panel detector pred_param2 = XYPhiPredictionParameterisation( init_test.experiments_multi_panel, [multi_det_param], [s0_param], [xlo_param], [xluc_param], ) ################################ # Apply known parameter shifts # ################################ # shift detectors by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0])] det_param.set_param_vals(p_vals) multi_det_p_vals = multi_det_param.get_param_vals() p_vals = [a + b for a, b in zip(multi_det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0])] multi_det_param.set_param_vals(p_vals) # shift beam by 2 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals) p_vals[0] += 2.0 s0_param.set_param_vals(p_vals) # rotate crystal a bit (=2 mrad each rotation) xlo_p_vals = xlo_param.get_param_vals() p_vals = [a + b for a, b in zip(xlo_p_vals, [2.0, 2.0, 2.0])] xlo_param.set_param_vals(p_vals) # change unit cell a bit (=0.1 Angstrom length upsets, 0.1 degree of # gamma angle) xluc_p_vals = xluc_param.get_param_vals() cell_params = crystal.get_unit_cell().parameters() cell_params = [a + b for a, b in zip(cell_params, [0.1, 0.1, 0.1, 0.0, 0.0, 0.1])] new_uc = unit_cell(cell_params) newB = matrix.sqr(new_uc.fractionalization_matrix()).transpose() S = symmetrize_reduce_enlarge(crystal.get_space_group()) S.set_orientation(orientation=newB) X = tuple([e * 1.0e5 for e in S.forward_independent_parameters()]) xluc_param.set_param_vals(X) ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) multi_det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) ##################################### # Select reflections for refinement # ##################################### refman = ReflectionManager( init_test.observations_single_panel, init_test.experiments_single_panel ) refman2 = ReflectionManager( init_test.observations_multi_panel, init_test.experiments_multi_panel ) ############################### # Set up the target functions # ############################### target = LeastSquaresPositionalResidualWithRmsdCutoff( init_test.experiments_single_panel, ScansExperimentsPredictor(init_test.experiments_single_panel), refman, pred_param, restraints_parameterisation=None, ) target2 = LeastSquaresPositionalResidualWithRmsdCutoff( init_test.experiments_multi_panel, ScansExperimentsPredictor(init_test.experiments_multi_panel), refman2, pred_param2, restraints_parameterisation=None, ) ################################# # Set up the refinement engines # ################################# refiner = setup_minimiser.Extract(master_phil, target, pred_param).refiner refiner2 = setup_minimiser.Extract(master_phil, target2, pred_param2).refiner refiner.run() # reset parameters and run refinement with the multi panel detector s0_param.set_param_vals(s0_p_vals) multi_det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) refiner2.run() # same number of steps assert refiner.get_num_steps() == refiner2.get_num_steps() # same rmsds for rmsd, rmsd2 in zip(refiner.history["rmsd"], refiner2.history["rmsd"]): assert approx_equal(rmsd, rmsd2) # same parameter values each step for params, params2 in zip( refiner.history["parameter_vector"], refiner.history["parameter_vector"] ): assert approx_equal(params, params2)
xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Fix crystal parameters # xluc_param.set_fixed([True, True, True, True, True, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [s0_param], [xlo_param], [xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detector by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0])] det_param.set_param_vals(p_vals) # shift beam by 2 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals)
xluc_param = CrystalUnitCellParameterisation(mycrystal) multi_det_param = DetectorParameterisationMultiPanel(multi_panel_detector, mybeam) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Fix crystal parameters #xluc_param.set_fixed([True, True, True, True, True, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation(experiments_single_panel, [det_param], [s0_param], [xlo_param], [xluc_param]) pred_param2 = XYPhiPredictionParameterisation(experiments_multi_panel, [multi_det_param], [s0_param], [xlo_param],[xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detectors by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2., 2., 2.])] det_param.set_param_vals(p_vals) multi_det_p_vals = multi_det_param.get_param_vals()
def test(args=[]): # Python and cctbx imports from math import pi import random from scitbx import matrix from scitbx.array_family import flex from libtbx.phil import parse from libtbx.test_utils import approx_equal # Experimental model builder from dials.test.algorithms.refinement.setup_geometry import Extract # We will set up a mock scan and a mock experiment list from dxtbx.model import ScanFactory from dxtbx.model.experiment_list import ExperimentList, Experiment # Model parameterisations from dials.algorithms.refinement.parameterisation.detector_parameters import ( DetectorParameterisationSinglePanel, ) from dials.algorithms.refinement.parameterisation.beam_parameters import ( BeamParameterisation, ) from dials.algorithms.refinement.parameterisation.crystal_parameters import ( CrystalOrientationParameterisation, CrystalUnitCellParameterisation, ) # Reflection prediction from dials.algorithms.spot_prediction import IndexGenerator, ray_intersection from dials.algorithms.refinement.prediction.managed_predictors import ( ScansRayPredictor, ScansExperimentsPredictor, ) from cctbx.sgtbx import space_group, space_group_symbols # Parameterisation of the prediction equation from dials.algorithms.refinement.parameterisation.prediction_parameters import ( XYPhiPredictionParameterisation, ) # Imports for the target function from dials.algorithms.refinement.target import ( LeastSquaresPositionalResidualWithRmsdCutoff, ) from dials.algorithms.refinement.reflection_manager import ReflectionManager # Local functions def random_direction_close_to(vector, sd=0.5): return vector.rotate_around_origin( matrix.col((random.random(), random.random(), random.random())).normalize(), random.gauss(0, sd), deg=True, ) ############################# # Setup experimental models # ############################# # make a small cell to speed up calculations overrides = """geometry.parameters.crystal.a.length.range = 10 15 geometry.parameters.crystal.b.length.range = 10 15 geometry.parameters.crystal.c.length.range = 10 15""" master_phil = parse( """ include scope dials.test.algorithms.refinement.geometry_phil """, process_includes=True, ) models = Extract(master_phil, overrides, cmdline_args=args) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Build a mock scan for a 180 degree sweep of 0.1 degree images sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 1800), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(1800)), deg=True, ) sweep_range = myscan.get_oscillation_range(deg=False) im_width = myscan.get_oscillation(deg=False)[1] assert sweep_range == (0.0, pi) assert approx_equal(im_width, 0.1 * pi / 180.0) experiments = ExperimentList() experiments.append( Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) ########################### # Parameterise the models # ########################### det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation(experiments, [det_param], [s0_param], [xlo_param], [xluc_param]) ################################ # Apply known parameter shifts # ################################ # shift detector by 0.2 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [ a + b for a, b in zip(det_p_vals, [2.0, 2.0, 2.0, 2.0, 2.0, 2.0]) ] det_param.set_param_vals(p_vals) # shift beam by 2 mrad in one axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals) p_vals[1] += 2.0 s0_param.set_param_vals(p_vals) # rotate crystal a bit (=2 mrad each rotation) xlo_p_vals = xlo_param.get_param_vals() p_vals = [a + b for a, b in zip(xlo_p_vals, [2.0, 2.0, 2.0])] xlo_param.set_param_vals(p_vals) ############################# # Generate some reflections # ############################# # All indices in a 2.0 Angstrom sphere resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution, ) indices = index_generator.to_array() # Predict rays within the sweep range ray_predictor = ScansRayPredictor(experiments, sweep_range) obs_refs = ray_predictor(indices) # Take only those rays that intersect the detector intersects = ray_intersection(mydetector, obs_refs) obs_refs = obs_refs.select(intersects) # Make a reflection predictor and re-predict for all these reflections. The # result is the same, but we gain also the flags and xyzcal.px columns ref_predictor = ScansExperimentsPredictor(experiments) obs_refs["id"] = flex.int(len(obs_refs), 0) obs_refs = ref_predictor(obs_refs) # Set 'observed' centroids from the predicted ones obs_refs["xyzobs.mm.value"] = obs_refs["xyzcal.mm"] # Invent some variances for the centroid positions of the simulated data im_width = 0.1 * pi / 180.0 px_size = mydetector[0].get_pixel_size() var_x = flex.double(len(obs_refs), (px_size[0] / 2.0)**2) var_y = flex.double(len(obs_refs), (px_size[1] / 2.0)**2) var_phi = flex.double(len(obs_refs), (im_width / 2.0)**2) obs_refs["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) ##################################### # Select reflections for refinement # ##################################### refman = ReflectionManager(obs_refs, experiments) ############################## # Set up the target function # ############################## # Redefine the reflection predictor to use the type expected by the Target class ref_predictor = ScansExperimentsPredictor(experiments) mytarget = LeastSquaresPositionalResidualWithRmsdCutoff( experiments, ref_predictor, refman, pred_param, restraints_parameterisation=None) # get the functional and gradients mytarget.predict() L, dL_dp, curvs = mytarget.compute_functional_gradients_and_curvatures() #################################### # Do FD calculation for comparison # #################################### # function for calculating finite difference gradients of the target function def get_fd_gradients(target, pred_param, deltas): """Calculate centered finite difference gradients for each of the parameters of the target function. "deltas" must be a sequence of the same length as the parameter list, and contains the step size for the difference calculations for each parameter. """ p_vals = pred_param.get_param_vals() assert len(deltas) == len(p_vals) fd_grad = [] fd_curvs = [] for i in range(len(deltas)): val = p_vals[i] p_vals[i] -= deltas[i] / 2.0 pred_param.set_param_vals(p_vals) target.predict() rev_state = target.compute_functional_gradients_and_curvatures() p_vals[i] += deltas[i] pred_param.set_param_vals(p_vals) target.predict() fwd_state = target.compute_functional_gradients_and_curvatures() # finite difference estimation of first derivatives fd_grad.append((fwd_state[0] - rev_state[0]) / deltas[i]) # finite difference estimation of curvatures, using the analytical # first derivatives fd_curvs.append((fwd_state[1][i] - rev_state[1][i]) / deltas[i]) # set parameter back to centred value p_vals[i] = val # return to the initial state pred_param.set_param_vals(p_vals) return fd_grad, fd_curvs # test normalised differences between FD and analytical calculations fdgrads = get_fd_gradients(mytarget, pred_param, [1.0e-7] * len(pred_param)) diffs = [a - b for a, b in zip(dL_dp, fdgrads[0])] norm_diffs = tuple([a / b for a, b in zip(diffs, fdgrads[0])]) for e in norm_diffs: assert abs(e) < 0.001 # check differences less than 0.1% # test normalised differences between FD curvatures and analytical least # squares approximation. We don't expect this to be especially close if curvs: diffs = [a - b for a, b in zip(curvs, fdgrads[1])] norm_diffs = tuple([a / b for a, b in zip(diffs, fdgrads[1])]) for e in norm_diffs: assert abs(e) < 0.1 # check differences less than 10%
def test(): from cctbx.sgtbx import space_group, space_group_symbols from dxtbx.model.experiment_list import Experiment, ExperimentList from libtbx.phil import parse from scitbx.array_family import flex from dials.algorithms.refinement.parameterisation.beam_parameters import ( BeamParameterisation, ) from dials.algorithms.refinement.parameterisation.crystal_parameters import ( CrystalOrientationParameterisation, CrystalUnitCellParameterisation, ) from dials.algorithms.refinement.parameterisation.detector_parameters import ( DetectorParameterisationSinglePanel, ) from dials.algorithms.refinement.parameterisation.goniometer_parameters import ( GoniometerParameterisation, ) #### Import model parameterisations from dials.algorithms.refinement.parameterisation.prediction_parameters import ( XYPhiPredictionParameterisation, ) from dials.algorithms.refinement.prediction.managed_predictors import ( ScansExperimentsPredictor, ScansRayPredictor, ) ##### Imports for reflection prediction from dials.algorithms.spot_prediction import IndexGenerator, ray_intersection ##### Import model builder from dials.tests.algorithms.refinement.setup_geometry import Extract #### Create models overrides = """geometry.parameters.crystal.a.length.range = 10 50 geometry.parameters.crystal.b.length.range = 10 50 geometry.parameters.crystal.c.length.range = 10 50""" master_phil = parse( """ include scope dials.tests.algorithms.refinement.geometry_phil """, process_includes=True, ) models = Extract(master_phil, overrides) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Build a mock scan for a 72 degree sequence sequence_range = (0.0, math.pi / 5.0) from dxtbx.model import ScanFactory sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 720), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(720)), deg=True, ) #### Create parameterisations of these models det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) gon_param = GoniometerParameterisation(mygonio, mybeam) # Create an ExperimentList experiments = ExperimentList() experiments.append( Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, )) #### Unit tests # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation( experiments, detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param], goniometer_parameterisations=[gon_param], ) # Generate reflections resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution, ) indices = index_generator.to_array() # Predict rays within the sequence range ray_predictor = ScansRayPredictor(experiments, sequence_range) obs_refs = ray_predictor(indices) # Take only those rays that intersect the detector intersects = ray_intersection(mydetector, obs_refs) obs_refs = obs_refs.select(intersects) # Make a reflection predictor and re-predict for all these reflections. The # result is the same, but we gain also the flags and xyzcal.px columns ref_predictor = ScansExperimentsPredictor(experiments) obs_refs["id"] = flex.int(len(obs_refs), 0) obs_refs = ref_predictor(obs_refs) # Set 'observed' centroids from the predicted ones obs_refs["xyzobs.mm.value"] = obs_refs["xyzcal.mm"] # Invent some variances for the centroid positions of the simulated data im_width = 0.1 * math.pi / 180.0 px_size = mydetector[0].get_pixel_size() var_x = flex.double(len(obs_refs), (px_size[0] / 2.0)**2) var_y = flex.double(len(obs_refs), (px_size[1] / 2.0)**2) var_phi = flex.double(len(obs_refs), (im_width / 2.0)**2) obs_refs["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) # use a ReflectionManager to exclude reflections too close to the spindle from dials.algorithms.refinement.reflection_manager import ReflectionManager refman = ReflectionManager(obs_refs, experiments, outlier_detector=None) refman.finalise() # Redefine the reflection predictor to use the type expected by the Target class ref_predictor = ScansExperimentsPredictor(experiments) # keep only those reflections that pass inclusion criteria and have predictions reflections = refman.get_matches() # get analytical gradients an_grads = pred_param.get_gradients(reflections) # get finite difference gradients p_vals = pred_param.get_param_vals() deltas = [1.0e-7] * len(p_vals) for i, delta in enumerate(deltas): val = p_vals[i] p_vals[i] -= delta / 2.0 pred_param.set_param_vals(p_vals) ref_predictor(reflections) rev_state = reflections["xyzcal.mm"].deep_copy() p_vals[i] += delta pred_param.set_param_vals(p_vals) ref_predictor(reflections) fwd_state = reflections["xyzcal.mm"].deep_copy() p_vals[i] = val fd = fwd_state - rev_state x_grads, y_grads, phi_grads = fd.parts() x_grads /= delta y_grads /= delta phi_grads /= delta # compare with analytical calculation assert x_grads == pytest.approx(an_grads[i]["dX_dp"], abs=5.0e-6) assert y_grads == pytest.approx(an_grads[i]["dY_dp"], abs=5.5e-6) assert phi_grads == pytest.approx(an_grads[i]["dphi_dp"], abs=5.0e-6) # return to the initial state pred_param.set_param_vals(p_vals)
def test(args=[]): from math import pi from cctbx.sgtbx import space_group, space_group_symbols # Symmetry constrained parameterisation for the unit cell from cctbx.uctbx import unit_cell # We will set up a mock scan and a mock experiment list from dxtbx.model import ScanFactory from dxtbx.model.experiment_list import Experiment, ExperimentList from libtbx.phil import parse from libtbx.test_utils import approx_equal from rstbx.symmetry.constraints.parameter_reduction import symmetrize_reduce_enlarge from scitbx import matrix from scitbx.array_family import flex # Get modules to build models and minimiser using PHIL import dials.tests.algorithms.refinement.setup_geometry as setup_geometry import dials.tests.algorithms.refinement.setup_minimiser as setup_minimiser from dials.algorithms.refinement.parameterisation.beam_parameters import ( BeamParameterisation, ) from dials.algorithms.refinement.parameterisation.crystal_parameters import ( CrystalOrientationParameterisation, CrystalUnitCellParameterisation, ) # Model parameterisations from dials.algorithms.refinement.parameterisation.detector_parameters import ( DetectorParameterisationSinglePanel, ) # Parameterisation of the prediction equation from dials.algorithms.refinement.parameterisation.prediction_parameters import ( XYPhiPredictionParameterisation, ) from dials.algorithms.refinement.prediction.managed_predictors import ( ScansExperimentsPredictor, ScansRayPredictor, ) from dials.algorithms.refinement.reflection_manager import ReflectionManager # Imports for the target function from dials.algorithms.refinement.target import ( LeastSquaresPositionalResidualWithRmsdCutoff, ) # Reflection prediction from dials.algorithms.spot_prediction import IndexGenerator, ray_intersection ############################# # Setup experimental models # ############################# master_phil = parse( """ include scope dials.tests.algorithms.refinement.geometry_phil include scope dials.tests.algorithms.refinement.minimiser_phil """, process_includes=True, ) models = setup_geometry.Extract(master_phil, cmdline_args=args) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal mybeam = models.beam # Build a mock scan for a 180 degree sequence sf = ScanFactory() myscan = sf.make_scan( image_range=(1, 1800), exposure_times=0.1, oscillation=(0, 0.1), epochs=list(range(1800)), deg=True, ) sequence_range = myscan.get_oscillation_range(deg=False) im_width = myscan.get_oscillation(deg=False)[1] assert sequence_range == (0.0, pi) assert approx_equal(im_width, 0.1 * pi / 180.0) # Build an experiment list experiments = ExperimentList() experiments.append( Experiment( beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None, ) ) ########################### # Parameterise the models # ########################### det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) # Fix beam to the X-Z plane (imgCIF geometry), fix wavelength s0_param.set_fixed([True, False, True]) # Fix crystal parameters # xluc_param.set_fixed([True, True, True, True, True, True]) ######################################################################## # Link model parameterisations together into a parameterisation of the # # prediction equation # ######################################################################## pred_param = XYPhiPredictionParameterisation( experiments, [det_param], [s0_param], [xlo_param], [xluc_param] ) ################################ # Apply known parameter shifts # ################################ # shift detector by 1.0 mm each translation and 2 mrad each rotation det_p_vals = det_param.get_param_vals() p_vals = [a + b for a, b in zip(det_p_vals, [1.0, 1.0, 1.0, 2.0, 2.0, 2.0])] det_param.set_param_vals(p_vals) # shift beam by 2 mrad in free axis s0_p_vals = s0_param.get_param_vals() p_vals = list(s0_p_vals) p_vals[0] += 2.0 s0_param.set_param_vals(p_vals) # rotate crystal a bit (=2 mrad each rotation) xlo_p_vals = xlo_param.get_param_vals() p_vals = [a + b for a, b in zip(xlo_p_vals, [2.0, 2.0, 2.0])] xlo_param.set_param_vals(p_vals) # change unit cell a bit (=0.1 Angstrom length upsets, 0.1 degree of # gamma angle) xluc_p_vals = xluc_param.get_param_vals() cell_params = mycrystal.get_unit_cell().parameters() cell_params = [a + b for a, b in zip(cell_params, [0.1, 0.1, 0.1, 0.0, 0.0, 0.1])] new_uc = unit_cell(cell_params) newB = matrix.sqr(new_uc.fractionalization_matrix()).transpose() S = symmetrize_reduce_enlarge(mycrystal.get_space_group()) S.set_orientation(orientation=newB) X = tuple([e * 1.0e5 for e in S.forward_independent_parameters()]) xluc_param.set_param_vals(X) ############################# # Generate some reflections # ############################# print("Reflections will be generated with the following geometry:") print(mybeam) print(mydetector) print(mycrystal) print("Target values of parameters are") msg = "Parameters: " + "%.5f " * len(pred_param) print(msg % tuple(pred_param.get_param_vals())) print() # All indices in a 2.0 Angstrom sphere resolution = 2.0 index_generator = IndexGenerator( mycrystal.get_unit_cell(), space_group(space_group_symbols(1).hall()).type(), resolution, ) indices = index_generator.to_array() # Predict rays within the sequence range ray_predictor = ScansRayPredictor(experiments, sequence_range) obs_refs = ray_predictor(indices) print("Total number of reflections excited", len(obs_refs)) # Take only those rays that intersect the detector intersects = ray_intersection(mydetector, obs_refs) obs_refs = obs_refs.select(intersects) # Make a reflection predictor and re-predict for all these reflections. The # result is the same, but we gain also the flags and xyzcal.px columns ref_predictor = ScansExperimentsPredictor(experiments) obs_refs["id"] = flex.int(len(obs_refs), 0) obs_refs = ref_predictor(obs_refs) # Set 'observed' centroids from the predicted ones obs_refs["xyzobs.mm.value"] = obs_refs["xyzcal.mm"] # Invent some variances for the centroid positions of the simulated data im_width = 0.1 * pi / 180.0 px_size = mydetector[0].get_pixel_size() var_x = flex.double(len(obs_refs), (px_size[0] / 2.0) ** 2) var_y = flex.double(len(obs_refs), (px_size[1] / 2.0) ** 2) var_phi = flex.double(len(obs_refs), (im_width / 2.0) ** 2) obs_refs["xyzobs.mm.variance"] = flex.vec3_double(var_x, var_y, var_phi) print("Total number of observations made", len(obs_refs)) ############################### # Undo known parameter shifts # ############################### s0_param.set_param_vals(s0_p_vals) det_param.set_param_vals(det_p_vals) xlo_param.set_param_vals(xlo_p_vals) xluc_param.set_param_vals(xluc_p_vals) print("Initial values of parameters are") msg = "Parameters: " + "%.5f " * len(pred_param) print(msg % tuple(pred_param.get_param_vals())) print() ##################################### # Select reflections for refinement # ##################################### refman = ReflectionManager(obs_refs, experiments) ############################## # Set up the target function # ############################## # The current 'achieved' criterion compares RMSD against 1/3 the pixel size and # 1/3 the image width in radians. For the simulated data, these are just made up mytarget = LeastSquaresPositionalResidualWithRmsdCutoff( experiments, ref_predictor, refman, pred_param, restraints_parameterisation=None ) ################################ # Set up the refinement engine # ################################ refiner = setup_minimiser.Extract( master_phil, mytarget, pred_param, cmdline_args=args ).refiner print("Prior to refinement the experimental model is:") print(mybeam) print(mydetector) print(mycrystal) refiner.run() print() print("Refinement has completed with the following geometry:") print(mybeam) print(mydetector) print(mycrystal)
def test2(): '''Simple test with two triclinic crystals restrained to a target unit cell''' from math import pi from random import gauss from dials.test.algorithms.refinement.setup_geometry import Extract from dxtbx.model.experiment.experiment_list import ExperimentList, Experiment #### Import model parameterisations from dials.algorithms.refinement.parameterisation.prediction_parameters import \ XYPhiPredictionParameterisation from dials.algorithms.refinement.parameterisation.detector_parameters import \ DetectorParameterisationSinglePanel from dials.algorithms.refinement.parameterisation.beam_parameters import \ BeamParameterisation from dials.algorithms.refinement.parameterisation.crystal_parameters import \ CrystalOrientationParameterisation, \ CrystalUnitCellParameterisation overrides = """geometry.parameters.crystal.a.length.range = 10 50 geometry.parameters.crystal.b.length.range = 10 50 geometry.parameters.crystal.c.length.range = 10 50""" master_phil = parse(""" include scope dials.test.algorithms.refinement.geometry_phil """, process_includes=True) models = Extract(master_phil, overrides) mydetector = models.detector mygonio = models.goniometer mycrystal = models.crystal # duplicate the crystal from copy import deepcopy mycrystal2 = deepcopy(mycrystal) mybeam = models.beam # Build a mock scan for a 72 degree sweep sweep_range = (0., pi / 5.) from dxtbx.model.scan import scan_factory sf = scan_factory() myscan = sf.make_scan(image_range=(1, 720), exposure_times=0.1, oscillation=(0, 0.1), epochs=range(720), deg=True) # Create parameterisations of these models det_param = DetectorParameterisationSinglePanel(mydetector) s0_param = BeamParameterisation(mybeam, mygonio) xlo_param = CrystalOrientationParameterisation(mycrystal) xluc_param = CrystalUnitCellParameterisation(mycrystal) xluc_param2 = CrystalUnitCellParameterisation(mycrystal2, experiment_ids=[1]) # Create an ExperimentList with the crystal duplicated experiments = ExperimentList() experiments.append( Experiment(beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal, imageset=None)) experiments.append( Experiment(beam=mybeam, detector=mydetector, goniometer=mygonio, scan=myscan, crystal=mycrystal2, imageset=None)) # Build a prediction parameterisation pred_param = XYPhiPredictionParameterisation( experiments, detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param, xluc_param2]) # Build a restraints parameterisation rp = RestraintsParameterisation( detector_parameterisations=[det_param], beam_parameterisations=[s0_param], xl_orientation_parameterisations=[xlo_param], xl_unit_cell_parameterisations=[xluc_param, xluc_param2]) # make a unit cell target sigma = 1. uc = mycrystal.get_unit_cell().parameters() target_uc = [gauss(e, sigma) for e in uc] rp.add_restraints_to_target_xl_unit_cell(experiment_id=0, values=target_uc, sigma=[sigma] * 6) rp.add_restraints_to_target_xl_unit_cell(experiment_id=1, values=target_uc, sigma=[sigma] * 6) # get analytical values and gradients vals, grads, weights = rp.get_residuals_gradients_and_weights() # get finite difference gradients p_vals = pred_param.get_param_vals() deltas = [1.e-7] * len(p_vals) fd_grad = [] for i in range(len(deltas)): val = p_vals[i] p_vals[i] -= deltas[i] / 2. pred_param.set_param_vals(p_vals) rev_state, foo, bar = rp.get_residuals_gradients_and_weights() rev_state = flex.double(rev_state) p_vals[i] += deltas[i] pred_param.set_param_vals(p_vals) fwd_state, foo, bar = rp.get_residuals_gradients_and_weights() fwd_state = flex.double(fwd_state) p_vals[i] = val fd = (fwd_state - rev_state) / deltas[i] fd_grad.append(fd) # for comparison, fd_grad is a list of flex.doubles, each of which corresponds # to a column of the sparse matrix grads. for i, fd in enumerate(fd_grad): # extract dense column from the sparse matrix an = grads.col(i).as_dense_vector() assert approx_equal(an, fd, eps=1e-5) print "OK"