Source code for openquake.hmtk.strain.geodetic_strain

# -*- coding: utf-8 -*-
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'''
:class:`openquake.hmtk.strain.geodectic_strain.GeodeticStain` is a
core class for storage and implementation of a geodetic strain rate
model
'''
import numpy as np
from copy import deepcopy

DATA_VARIABLES = ['longitude', 'latitude', 'exx', 'eyy', 'exy']


[docs]class GeodeticStrain(object): ''' :class:`openquake.hmtk.strain.geodetic_strain.GeodeticStrain` describes the geodetic strain model :param dict data: Strain data in the form of a dictionary where is vector of attributes is stored under the correponding dictionary key (i.e. - longitude - Longitude of point - latitude - Latitiude of point - exx - xx-component of strain tensor - eyy - yy-component of strain tensor - exy - xy-component of strain tensor :param numpy.ndarray seismicity_rate: Seismicity rate at each point associated with the strain model :param numpy.ndarray target_magnitudes: Magnitudes for the corresponding activity rates :param list data_variables: List of strain data attributes in the current class ''' def __init__(self): '''Instantiates''' self.data = None self.regions = None self.seismicity_rate = None self.regionalisation = None self.target_magnitudes = None self.data_variables = []
[docs] def get_secondary_strain_data(self, strain_data=None): ''' Calculate the following and add to data dictionary: 1) 2nd invarient of strain 2) Dilatation rate 3) e1h and e2h 4) err :param dict strain_data: Strain data dictionary (as described) - will overwrite current data if input ''' if strain_data: self.data = strain_data if not isinstance(self.data, dict): raise ValueError('Strain data not input or incorrectly formatted') # Check to ensure essential attributes are in data dictionary for essential_key in DATA_VARIABLES: if essential_key not in self.data: print(self.data) raise ValueError('Essential strain information %s missing!' % essential_key) self.data_variables = deepcopy(DATA_VARIABLES) # Second Invarient self.data['2nd_inv'] = np.sqrt( (self.data['exx'] ** 2.) + (self.data['eyy'] ** 2.) + 2.0 * (self.data['exy'] ** 2.)) # Dilatation self.data['dilatation'] = self.data['exx'] + self.data['eyy'] # err self.data['err'] = -1. * self.data['dilatation'] center_normal_rate = (self.data['exx'] + self.data['eyy']) / 2. radius_rate = np.sqrt((self.data['exx'] - center_normal_rate) ** 2. + (self.data['exy'] ** 2.)) # e1h and e2h self.data['e1h'] = center_normal_rate - radius_rate self.data['e2h'] = center_normal_rate + radius_rate self.data['area'] = np.zeros(self.get_number_observations()) self.data_variables.extend(['2nd_inv', 'dilatation', 'err', 'e1h', 'e2h'])
[docs] def get_number_observations(self): ''' Returns the number of observations in the data file ''' if isinstance(self.data, dict) and ('exx' in self.data.keys()): return len(self.data['exx']) else: return 0