slab = da.get_slab() all_atom_types = get_all_atom_types(slab, atom_numbers_to_optimize) blmin = closest_distances_generator(all_atom_types, ratio_of_covalent_radii=0.7) comp = InteratomicDistanceComparator(n_top=n_to_optimize, pair_cor_cum_diff=0.015, pair_cor_max=0.7, dE=0.02, mic=False) pairing = CutAndSplicePairing(slab, n_to_optimize, blmin) mutations = OperationSelector([1., 1., 1.], [ MirrorMutation(blmin, n_to_optimize), RattleMutation(blmin, n_to_optimize), PermutationMutation(n_to_optimize) ]) # Relax all unrelaxed structures (e.g. the starting population) while da.get_number_of_unrelaxed_candidates() > 0: a = da.get_an_unrelaxed_candidate() a.set_calculator(EMT()) print('Relaxing starting candidate {0}'.format(a.info['confid'])) dyn = BFGS(a, trajectory=None, logfile=None) dyn.run(fmax=0.05, steps=100) a.info['key_value_pairs']['raw_score'] = -a.get_potential_energy() da.add_relaxed_step(a) # create the population population = Population(data_connection=da, population_size=population_size,
use_tags=True) softmut = SoftMutation(blmin, bounds=[2., 5.], used_modes_file=None, use_tags=True) rotmut = RotationalMutation(blmin, fraction=0.3, min_angle=0.5 * np.pi) rattlemut = RattleMutation(blmin, n_top, rattle_prop=0.3, rattle_strength=0.5, use_tags=True, test_dist_to_slab=False) rattlerotmut = RattleRotationalMutation(rattlemut, rotmut) permut = PermutationMutation(n_top, probability=0.33, test_dist_to_slab=False, use_tags=True, blmin=blmin) combmut = CombinationMutation(rattlemut, rotmut, verbose=True) mutations = [ strainmut, softmut, rotmut, rattlemut, rattlerotmut, permut, combmut ] for i, mut in enumerate(mutations): a = [a1, a2][i % 2] a3 = None while a3 is None: a3, desc = mut.get_new_individual([a]) cell = a3.get_cell() assert cellbounds.is_within_bounds(cell)
def test_basic_example_main_run(seed, testdir): # set up the random number generator rng = np.random.RandomState(seed) # create the surface slab = fcc111('Au', size=(4, 4, 1), vacuum=10.0, orthogonal=True) slab.set_constraint(FixAtoms(mask=len(slab) * [True])) # define the volume in which the adsorbed cluster is optimized # the volume is defined by a corner position (p0) # and three spanning vectors (v1, v2, v3) pos = slab.get_positions() cell = slab.get_cell() p0 = np.array([0., 0., max(pos[:, 2]) + 2.]) v1 = cell[0, :] * 0.8 v2 = cell[1, :] * 0.8 v3 = cell[2, :] v3[2] = 3. # Define the composition of the atoms to optimize atom_numbers = 2 * [47] + 2 * [79] # define the closest distance two atoms of a given species can be to each other unique_atom_types = get_all_atom_types(slab, atom_numbers) blmin = closest_distances_generator(atom_numbers=unique_atom_types, ratio_of_covalent_radii=0.7) # create the starting population sg = StartGenerator(slab=slab, blocks=atom_numbers, blmin=blmin, box_to_place_in=[p0, [v1, v2, v3]], rng=rng) # generate the starting population population_size = 5 starting_population = [sg.get_new_candidate() for i in range(population_size)] # from ase.visualize import view # uncomment these lines # view(starting_population) # to see the starting population # create the database to store information in d = PrepareDB(db_file_name=db_file, simulation_cell=slab, stoichiometry=atom_numbers) for a in starting_population: d.add_unrelaxed_candidate(a) # XXXXXXXXXX This should be the beginning of a new test, # but we are using some resources from the precious part. # Maybe refactor those things as (module-level?) fixtures. # Change the following three parameters to suit your needs population_size = 5 mutation_probability = 0.3 n_to_test = 5 # Initialize the different components of the GA da = DataConnection('gadb.db') atom_numbers_to_optimize = da.get_atom_numbers_to_optimize() n_to_optimize = len(atom_numbers_to_optimize) slab = da.get_slab() all_atom_types = get_all_atom_types(slab, atom_numbers_to_optimize) blmin = closest_distances_generator(all_atom_types, ratio_of_covalent_radii=0.7) comp = InteratomicDistanceComparator(n_top=n_to_optimize, pair_cor_cum_diff=0.015, pair_cor_max=0.7, dE=0.02, mic=False) pairing = CutAndSplicePairing(slab, n_to_optimize, blmin, rng=rng) mutations = OperationSelector([1., 1., 1.], [MirrorMutation(blmin, n_to_optimize, rng=rng), RattleMutation(blmin, n_to_optimize, rng=rng), PermutationMutation(n_to_optimize, rng=rng)], rng=rng) # Relax all unrelaxed structures (e.g. the starting population) while da.get_number_of_unrelaxed_candidates() > 0: a = da.get_an_unrelaxed_candidate() a.calc = EMT() print('Relaxing starting candidate {0}'.format(a.info['confid'])) dyn = BFGS(a, trajectory=None, logfile=None) dyn.run(fmax=0.05, steps=100) set_raw_score(a, -a.get_potential_energy()) da.add_relaxed_step(a) # create the population population = Population(data_connection=da, population_size=population_size, comparator=comp, rng=rng) # test n_to_test new candidates for i in range(n_to_test): print('Now starting configuration number {0}'.format(i)) a1, a2 = population.get_two_candidates() a3, desc = pairing.get_new_individual([a1, a2]) if a3 is None: continue da.add_unrelaxed_candidate(a3, description=desc) # Check if we want to do a mutation if rng.rand() < mutation_probability: a3_mut, desc = mutations.get_new_individual([a3]) if a3_mut is not None: da.add_unrelaxed_step(a3_mut, desc) a3 = a3_mut # Relax the new candidate a3.calc = EMT() dyn = BFGS(a3, trajectory=None, logfile=None) dyn.run(fmax=0.05, steps=100) set_raw_score(a3, -a3.get_potential_energy()) da.add_relaxed_step(a3) population.update() write('all_candidates.traj', da.get_all_relaxed_candidates())
def test_bulk_operators(): h2 = Atoms('H2', positions=[[0, 0, 0], [0, 0, 0.75]]) blocks = [('H', 4), ('H2O', 3), (h2, 2)] # the building blocks volume = 40. * sum([x[1] for x in blocks]) # cell volume in angstrom^3 splits = {(2,): 1, (1,): 1} # cell splitting scheme stoichiometry = [] for block, count in blocks: if type(block) == str: stoichiometry += list(Atoms(block).numbers) * count else: stoichiometry += list(block.numbers) * count atom_numbers = list(set(stoichiometry)) blmin = closest_distances_generator(atom_numbers=atom_numbers, ratio_of_covalent_radii=1.3) cellbounds = CellBounds(bounds={'phi': [30, 150], 'chi': [30, 150], 'psi': [30, 150], 'a': [3, 50], 'b': [3, 50], 'c': [3, 50]}) sg = StartGenerator(blocks, blmin, volume, cellbounds=cellbounds, splits=splits) # Generate 2 candidates a1 = sg.get_new_candidate() a1.info['confid'] = 1 a2 = sg.get_new_candidate() a2.info['confid'] = 2 # Define and test genetic operators pairing = CutAndSplicePairing(blmin, p1=1., p2=0., minfrac=0.15, cellbounds=cellbounds, use_tags=True) a3, desc = pairing.get_new_individual([a1, a2]) cell = a3.get_cell() assert cellbounds.is_within_bounds(cell) assert not atoms_too_close(a3, blmin, use_tags=True) n_top = len(a1) strainmut = StrainMutation(blmin, stddev=0.7, cellbounds=cellbounds, use_tags=True) softmut = SoftMutation(blmin, bounds=[2., 5.], used_modes_file=None, use_tags=True) rotmut = RotationalMutation(blmin, fraction=0.3, min_angle=0.5 * np.pi) rattlemut = RattleMutation(blmin, n_top, rattle_prop=0.3, rattle_strength=0.5, use_tags=True, test_dist_to_slab=False) rattlerotmut = RattleRotationalMutation(rattlemut, rotmut) permut = PermutationMutation(n_top, probability=0.33, test_dist_to_slab=False, use_tags=True, blmin=blmin) combmut = CombinationMutation(rattlemut, rotmut, verbose=True) mutations = [strainmut, softmut, rotmut, rattlemut, rattlerotmut, permut, combmut] for i, mut in enumerate(mutations): a = [a1, a2][i % 2] a3 = None while a3 is None: a3, desc = mut.get_new_individual([a]) cell = a3.get_cell() assert cellbounds.is_within_bounds(cell) assert np.all(a3.numbers == a.numbers) assert not atoms_too_close(a3, blmin, use_tags=True) modes_file = 'modes.txt' softmut_with = SoftMutation(blmin, bounds=[2., 5.], use_tags=True, used_modes_file=modes_file) no_muts = 3 for _ in range(no_muts): softmut_with.get_new_individual([a1]) softmut_with.read_used_modes(modes_file) assert len(list(softmut_with.used_modes.values())[0]) == no_muts os.remove(modes_file) comparator = OFPComparator(recalculate=True) gold = bulk('Au') * (2, 2, 2) assert comparator.looks_like(gold, gold) # This move should not exceed the default threshold gc = gold.copy() gc[0].x += .1 assert comparator.looks_like(gold, gc) # An additional step will exceed the threshold gc[0].x += .2 assert not comparator.looks_like(gold, gc)
assert len(slab) == len(slab2) assert np.all(slab.get_positions() == slab2.get_positions()) dp = np.sum((top2.get_positions() - top1.get_positions())**2, axis=1)**0.5 # check that all displacements are smaller than the rattle strength we # cannot check if 40 % of the structures have been rattled since it is # probabilistic and because the probability will be lower if two atoms # get too close for p in dp: assert p < 0.8 * 3**0.5 # now we check the permutation mutation mmut = PermutationMutation(n_top, probability=0.5) c3, desc = mmut.get_new_individual([c1]) assert np.all(c1.numbers == c3.numbers) top1 = c1[-n_top:] top2 = c3[-n_top:] slab2 = c3[0:(len(c1) - n_top)] assert len(slab) == len(slab2) assert np.all(slab.get_positions() == slab2.get_positions()) dp = np.sum((top2.get_positions() - top1.get_positions())**2, axis=1)**0.5 # verify that two positions have been changed assert len(dp[dp > 0]) == 2
def test_mutations(seed): from ase.ga.startgenerator import StartGenerator from ase.ga.utilities import closest_distances_generator from ase.ga.standardmutations import RattleMutation, PermutationMutation import numpy as np from ase.build import fcc111 from ase.constraints import FixAtoms # set up the random number generator rng = np.random.RandomState(seed) # first create two random starting candidates slab = fcc111('Au', size=(4, 4, 2), vacuum=10.0, orthogonal=True) slab.set_constraint(FixAtoms(mask=slab.positions[:, 2] <= 10.)) pos = slab.get_positions() cell = slab.get_cell() p0 = np.array([0., 0., max(pos[:, 2]) + 2.]) v1 = cell[0, :] * 0.8 v2 = cell[1, :] * 0.8 v3 = cell[2, :] v3[2] = 3. blmin = closest_distances_generator(atom_numbers=[47, 79], ratio_of_covalent_radii=0.7) atom_numbers = 2 * [47] + 2 * [79] n_top = len(atom_numbers) sg = StartGenerator(slab=slab, blocks=atom_numbers, blmin=blmin, box_to_place_in=[p0, [v1, v2, v3]], rng=rng) c1 = sg.get_new_candidate() c1.info['confid'] = 1 # first verify that the rattle mutation works rmut = RattleMutation(blmin, n_top, rattle_strength=0.8, rattle_prop=0.4, rng=rng) c2, desc = rmut.get_new_individual([c1]) assert np.all(c1.numbers == c2.numbers) top1 = c1[-n_top:] top2 = c2[-n_top:] slab2 = c2[0:(len(c1) - n_top)] assert len(slab) == len(slab2) assert np.all(slab.get_positions() == slab2.get_positions()) dp = np.sum((top2.get_positions() - top1.get_positions())**2, axis=1)**0.5 # check that all displacements are smaller than the rattle strength we # cannot check if 40 % of the structures have been rattled since it is # probabilistic and because the probability will be lower if two atoms # get too close for p in dp: assert p < 0.8 * 3**0.5 # now we check the permutation mutation mmut = PermutationMutation(n_top, probability=0.5, rng=rng) c3, desc = mmut.get_new_individual([c1]) assert np.all(c1.numbers == c3.numbers) top1 = c1[-n_top:] top2 = c3[-n_top:] slab2 = c3[0:(len(c1) - n_top)] assert len(slab) == len(slab2) assert np.all(slab.get_positions() == slab2.get_positions()) dp = np.sum((top2.get_positions() - top1.get_positions())**2, axis=1)**0.5 # verify that two positions have been changed assert len(dp[dp > 0]) == 2