Exemple #1
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 def test_from_diff_fit(self):
     exp = ElasticTensorExpansion.from_diff_fit(self.strains,
                                                self.pk_stresses)
Exemple #2
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    def run_task(self, fw_spec):
        ref_struct = self['structure']
        d = {"analysis": {}, "initial_structure": self['structure'].as_dict()}

        # Get optimized structure
        calc_locs_opt = [
            cl for cl in fw_spec.get('calc_locs', [])
            if 'optimiz' in cl['name']
        ]
        if calc_locs_opt:
            optimize_loc = calc_locs_opt[-1]['path']
            logger.info("Parsing initial optimization directory: {}".format(
                optimize_loc))
            drone = VaspDrone()
            optimize_doc = drone.assimilate(optimize_loc)
            opt_struct = Structure.from_dict(
                optimize_doc["calcs_reversed"][0]["output"]["structure"])
            d.update({"optimized_structure": opt_struct.as_dict()})
            ref_struct = opt_struct
            eq_stress = -0.1 * Stress(optimize_doc["calcs_reversed"][0]
                                      ["output"]["ionic_steps"][-1]["stress"])
        else:
            eq_stress = None

        if self.get("fw_spec_field"):
            d.update({
                self.get("fw_spec_field"):
                fw_spec.get(self.get("fw_spec_field"))
            })

        # Get the stresses, strains, deformations from deformation tasks
        defo_dicts = fw_spec["deformation_tasks"].values()
        stresses, strains, deformations = [], [], []
        for defo_dict in defo_dicts:
            stresses.append(Stress(defo_dict["stress"]))
            strains.append(Strain(defo_dict["strain"]))
            deformations.append(Deformation(defo_dict["deformation_matrix"]))
            # Add derived stresses and strains if symmops is present
            for symmop in defo_dict.get("symmops", []):
                stresses.append(Stress(defo_dict["stress"]).transform(symmop))
                strains.append(Strain(defo_dict["strain"]).transform(symmop))
                deformations.append(
                    Deformation(
                        defo_dict["deformation_matrix"]).transform(symmop))

        stresses = [-0.1 * s for s in stresses]
        pk_stresses = [
            stress.piola_kirchoff_2(deformation)
            for stress, deformation in zip(stresses, deformations)
        ]

        d['fitting_data'] = {
            'cauchy_stresses': stresses,
            'eq_stress': eq_stress,
            'strains': strains,
            'pk_stresses': pk_stresses,
            'deformations': deformations
        }

        logger.info("Analyzing stress/strain data")
        # TODO: @montoyjh: what if it's a cubic system? don't need 6. -computron
        # TODO: Can add population method but want to think about how it should
        #           be done. -montoyjh
        order = self.get('order', 2)
        if order > 2:
            method = 'finite_difference'
        else:
            method = self.get('fitting_method', 'finite_difference')

        if method == 'finite_difference':
            result = ElasticTensorExpansion.from_diff_fit(strains,
                                                          pk_stresses,
                                                          eq_stress=eq_stress,
                                                          order=order)
            if order == 2:
                result = ElasticTensor(result[0])
        elif method == 'pseudoinverse':
            result = ElasticTensor.from_pseudoinverse(strains, pk_stresses)
        elif method == 'independent':
            result = ElasticTensor.from_independent_strains(
                strains, pk_stresses, eq_stress=eq_stress)
        else:
            raise ValueError(
                "Unsupported method, method must be finite_difference, "
                "pseudoinverse, or independent")

        ieee = result.convert_to_ieee(ref_struct)
        d.update({
            "elastic_tensor": {
                "raw": result.voigt,
                "ieee_format": ieee.voigt
            }
        })
        if order == 2:
            d.update({
                "derived_properties":
                ieee.get_structure_property_dict(ref_struct)
            })
        else:
            soec = ElasticTensor(ieee[0])
            d.update({
                "derived_properties":
                soec.get_structure_property_dict(ref_struct)
            })

        d["formula_pretty"] = ref_struct.composition.reduced_formula
        d["fitting_method"] = method
        d["order"] = order

        d = jsanitize(d)

        # Save analysis results in json or db
        db_file = env_chk(self.get('db_file'), fw_spec)
        if not db_file:
            with open("elasticity.json", "w") as f:
                f.write(json.dumps(d, default=DATETIME_HANDLER))
        else:
            db = VaspCalcDb.from_db_file(db_file, admin=True)
            db.collection = db.db["elasticity"]
            db.collection.insert_one(d)
            logger.info("Elastic analysis complete.")

        return FWAction()
Exemple #3
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    def run_task(self, fw_spec):
        ref_struct = self['structure']
        d = {
            "analysis": {},
            "initial_structure": self['structure'].as_dict()
        }

        # Get optimized structure
        calc_locs_opt = [cl for cl in fw_spec.get('calc_locs', []) if 'optimiz' in cl['name']]
        if calc_locs_opt:
            optimize_loc = calc_locs_opt[-1]['path']
            logger.info("Parsing initial optimization directory: {}".format(optimize_loc))
            drone = VaspDrone()
            optimize_doc = drone.assimilate(optimize_loc)
            opt_struct = Structure.from_dict(optimize_doc["calcs_reversed"][0]["output"]["structure"])
            d.update({"optimized_structure": opt_struct.as_dict()})
            ref_struct = opt_struct
            eq_stress = -0.1*Stress(optimize_doc["calcs_reversed"][0]["output"]["ionic_steps"][-1]["stress"])
        else:
            eq_stress = None

        if self.get("fw_spec_field"):
            d.update({self.get("fw_spec_field"): fw_spec.get(self.get("fw_spec_field"))})

        # Get the stresses, strains, deformations from deformation tasks
        defo_dicts = fw_spec["deformation_tasks"].values()
        stresses, strains, deformations = [], [], []
        for defo_dict in defo_dicts:
            stresses.append(Stress(defo_dict["stress"]))
            strains.append(Strain(defo_dict["strain"]))
            deformations.append(Deformation(defo_dict["deformation_matrix"]))
            # Add derived stresses and strains if symmops is present
            for symmop in defo_dict.get("symmops", []):
                stresses.append(Stress(defo_dict["stress"]).transform(symmop))
                strains.append(Strain(defo_dict["strain"]).transform(symmop))
                deformations.append(Deformation(defo_dict["deformation_matrix"]).transform(symmop))

        stresses = [-0.1*s for s in stresses]
        pk_stresses = [stress.piola_kirchoff_2(deformation)
                       for stress, deformation in zip(stresses, deformations)]

        d['fitting_data'] = {'cauchy_stresses': stresses,
                             'eq_stress': eq_stress,
                             'strains': strains,
                             'pk_stresses': pk_stresses,
                             'deformations': deformations
                             }

        logger.info("Analyzing stress/strain data")
        # TODO: @montoyjh: what if it's a cubic system? don't need 6. -computron
        # TODO: Can add population method but want to think about how it should
        #           be done. -montoyjh
        order = self.get('order', 2)
        if order > 2:
            method = 'finite_difference'
        else:
            method = self.get('fitting_method', 'finite_difference')

        if method == 'finite_difference':
            result = ElasticTensorExpansion.from_diff_fit(
                    strains, pk_stresses, eq_stress=eq_stress, order=order)
            if order == 2:
                result = ElasticTensor(result[0])
        elif method == 'pseudoinverse':
            result = ElasticTensor.from_pseudoinverse(strains, pk_stresses)
        elif method == 'independent':
            result = ElasticTensor.from_independent_strains(strains, pk_stresses, eq_stress=eq_stress)
        else:
            raise ValueError("Unsupported method, method must be finite_difference, "
                             "pseudoinverse, or independent")

        ieee = result.convert_to_ieee(ref_struct)
        d.update({
            "elastic_tensor": {
                "raw": result.voigt,
                "ieee_format": ieee.voigt
            }
        })
        if order == 2:
            d.update({"derived_properties": ieee.get_structure_property_dict(ref_struct)})
        else:
            soec = ElasticTensor(ieee[0])
            d.update({"derived_properties": soec.get_structure_property_dict(ref_struct)})

        d["formula_pretty"] = ref_struct.composition.reduced_formula
        d["fitting_method"] = method
        d["order"] = order

        d = jsanitize(d)

        # Save analysis results in json or db
        db_file = env_chk(self.get('db_file'), fw_spec)
        if not db_file:
            with open("elasticity.json", "w") as f:
                f.write(json.dumps(d, default=DATETIME_HANDLER))
        else:
            db = VaspCalcDb.from_db_file(db_file, admin=True)
            db.collection = db.db["elasticity"]
            db.collection.insert_one(d)
            logger.info("Elastic analysis complete.")
        
        return FWAction()
Exemple #4
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def get_elastic_analysis(opt_task, defo_tasks):
    """
    Performs the analysis of opt_tasks and defo_tasks necessary for
    an elastic analysis

    Args:
        opt_task: task doc corresponding to optimization
        defo_tasks: task_doc corresponding to deformations

    Returns:
        elastic document with fitted elastic tensor and analysis

    """
    elastic_doc = {"warnings": []}
    opt_struct = Structure.from_dict(opt_task['output']['structure'])
    input_struct = Structure.from_dict(opt_task['input']['structure'])
    # For now, discern order (i.e. TOEC) using parameters from optimization
    # TODO: figure this out more intelligently
    diff = get(opt_task, "input.incar.EDIFFG", 0)
    order = 3 if np.isclose(diff, -0.001) else 2
    explicit, derived = process_elastic_calcs(opt_task, defo_tasks)
    all_calcs = explicit + derived
    stresses = [c.get("cauchy_stress") for c in all_calcs]
    pk_stresses = [c.get("pk_stress") for c in all_calcs]
    strains = [c.get("strain") for c in all_calcs]
    elastic_doc['calculations'] = all_calcs
    vstrains = [s.zeroed(0.002).voigt for s in strains]
    if np.linalg.matrix_rank(vstrains) == 6:
        if order == 2:
            et_fit = legacy_fit(strains, stresses)
        elif order == 3:
            # Test for TOEC
            if len(strains) < 70:
                logger.info("insufficient valid strains for {} TOEC".format(
                    opt_task['formula_pretty']))
                return None
            eq_stress = -0.1 * Stress(opt_task['output']['stress'])
            # strains = [s.zeroed(0.0001) for s in strains]
            # et_expansion = pdb_function(ElasticTensorExpansion.from_diff_fit,
            #     strains, pk_stresses, eq_stress=eq_stress, tol=1e-5)
            et_exp_raw = ElasticTensorExpansion.from_diff_fit(
                strains, pk_stresses, eq_stress=eq_stress, tol=1e-6)
            et_exp = et_exp_raw.voigt_symmetrized.convert_to_ieee(opt_struct)
            et_exp = et_exp.round(1)
            et_fit = ElasticTensor(et_exp[0])
            # Update elastic doc with TOEC stuff
            tec = et_exp.thermal_expansion_coeff(opt_struct, 300)
            elastic_doc.update({
                "elastic_tensor_expansion":
                elastic_sanitize(et_exp),
                "elastic_tensor_expansion_original":
                elastic_sanitize(et_exp_raw),
                "thermal_expansion_tensor":
                tec,
                "average_linear_thermal_expansion":
                np.trace(tec) / 3
            })
        et = et_fit.voigt_symmetrized.convert_to_ieee(opt_struct)
        vasp_input = opt_task['input']
        if 'structure' in vasp_input:
            vasp_input.pop('structure')
        completed_at = max([d['completed_at'] for d in defo_tasks])
        elastic_doc.update({
            "optimization_task_id":
            opt_task['task_id'],
            "optimization_dir_name":
            opt_task['dir_name'],
            "cauchy_stresses":
            stresses,
            "strains":
            strains,
            "elastic_tensor":
            elastic_sanitize(et.zeroed(0.01).round(0)),
            # Convert compliance to 10^-12 Pa
            "compliance_tensor":
            elastic_sanitize(et.compliance_tensor * 1000),
            "elastic_tensor_original":
            elastic_sanitize(et_fit),
            "optimized_structure":
            opt_struct,
            "spacegroup":
            input_struct.get_space_group_info()[0],
            "input_structure":
            input_struct,
            "completed_at":
            completed_at,
            "optimization_input":
            vasp_input,
            "order":
            order,
            "pretty_formula":
            opt_struct.composition.reduced_formula
        })
        # Add magnetic type
        mag = CollinearMagneticStructureAnalyzer(opt_struct).ordering.value
        elastic_doc['magnetic_type'] = mag_types[mag]
        try:
            prop_dict = et.get_structure_property_dict(opt_struct)
            prop_dict.pop('structure')
        except ValueError:
            logger.debug("Negative K or G found, structure property "
                         "dict not computed")
            prop_dict = et.property_dict
        for k, v in prop_dict.items():
            if k in ['homogeneous_poisson', 'universal_anisotropy']:
                prop_dict[k] = np.round(v, 2)
            else:
                prop_dict[k] = np.round(v, 0)
        elastic_doc.update(prop_dict)
        # Update with state and warnings
        state, warnings = get_state_and_warnings(elastic_doc)
        elastic_doc.update({"state": state, "warnings": warnings})
        # TODO: add kpoints params?
        return elastic_doc
    else:
        logger.info("insufficient valid strains for {}".format(
            opt_task['formula_pretty']))
        return None
 def test_from_diff_fit(self):
     exp = ElasticTensorExpansion.from_diff_fit(self.strains, self.pk_stresses)