DAMASK_EICMD/python/damask/dadf5.py

645 lines
22 KiB
Python

from queue import Queue
import re
import glob
import h5py
import numpy as np
from . import util
from . import version
# ------------------------------------------------------------------
class DADF5():
"""
Read and write to DADF5 files.
DADF5 files contain DAMASK results.
"""
# ------------------------------------------------------------------
def __init__(self,filename):
"""
Opens an existing DADF5 file.
Parameters
----------
filename : str
name of the DADF5 file to be openend.
"""
with h5py.File(filename,'r') as f:
if f.attrs['DADF5-major'] != 0 or f.attrs['DADF5-minor'] != 2:
raise TypeError('Unsupported DADF5 version {} '.format(f.attrs['DADF5-version']))
self.structured = 'grid' in f['geometry'].attrs.keys()
if self.structured:
self.grid = f['geometry'].attrs['grid']
self.size = f['geometry'].attrs['size']
r=re.compile('inc[0-9]+')
self.increments = [i for i in f.keys() if r.match(i)]
self.times = [round(f[i].attrs['time/s'],12) for i in self.increments]
self.Nmaterialpoints, self.Nconstituents = np.shape(f['mapping/cellResults/constituent'])
self.materialpoints = [m.decode() for m in np.unique(f['mapping/cellResults/materialpoint']['Name'])]
self.constituents = [c.decode() for c in np.unique(f['mapping/cellResults/constituent'] ['Name'])]
self.con_physics = []
for c in self.constituents:
self.con_physics += f['/'.join([self.increments[0],'constituent',c])].keys()
self.con_physics = list(set(self.con_physics)) # make unique
self.mat_physics = []
for m in self.materialpoints:
self.mat_physics += f['/'.join([self.increments[0],'materialpoint',m])].keys()
self.mat_physics = list(set(self.mat_physics)) # make unique
self.visible= {'increments': self.increments,
'constituents': self.constituents,
'materialpoints': self.materialpoints,
'constituent': range(self.Nconstituents), # ToDo: stupid naming
'con_physics': self.con_physics,
'mat_physics': self.mat_physics}
self.filename = filename
def __manage_visible(self,datasets,what,action):
"""
Manages the visibility of the groups.
Parameters
----------
datasets : list of str or Boolean
name of datasets as list, supports ? and * wildcards.
True is equivalent to [*], False is equivalent to []
what : str
attribute to change (must be in self.visible)
action : str
select from 'set', 'add', and 'del'
"""
# allow True/False and string arguments
if datasets is True:
datasets = ['*']
elif datasets is False:
datasets = []
choice = [datasets] if isinstance(datasets,str) else datasets
valid = [e for e_ in [glob.fnmatch.filter(getattr(self,what),s) for s in choice] for e in e_]
existing = set(self.visible[what])
if action == 'set':
self.visible[what] = valid
elif action == 'add':
self.visible[what] = list(existing.union(valid))
elif action == 'del':
self.visible[what] = list(existing.difference_update(valid))
def __time_to_inc(self,start,end):
selected = []
for i,time in enumerate(self.times):
if start <= time < end:
selected.append(self.increments[i])
return selected
def set_by_time(self,start,end):
"""
Sets active time increments based on start and end time.
Parameters
----------
start : float
start time (included)
end : float
end time (exclcuded)
"""
self.__manage_visible(self.__time_to_inc(start,end),'increments','set')
def add_by_time(self,start,end):
"""
Adds to active time increments based on start and end time.
Parameters
----------
start : float
start time (included)
end : float
end time (exclcuded)
"""
self.__manage_visible(self.__time_to_inc(start,end),'increments','add')
def del_by_time(self,start,end):
"""
Delets from active time increments based on start and end time.
Parameters
----------
start : float
start time (included)
end : float
end time (exclcuded)
"""
self.__manage_visible(self.__time_to_inc(start,end),'increments','del')
def iter_visible(self,what):
"""
Iterates over visible items by setting each one visible.
Parameters
----------
what : str
attribute to change (must be in self.visible)
"""
datasets = self.visible[what]
last_datasets = datasets.copy()
for dataset in datasets:
if last_datasets != self.visible[what]:
self.__manage_visible(datasets,what,'set')
raise Exception
self.__manage_visible(dataset,what,'set')
last_datasets = self.visible[what]
yield dataset
self.__manage_visible(datasets,what,'set')
def set_visible(self,what,datasets):
"""
Sets active groups.
Parameters
----------
datasets : list of str or Boolean
name of datasets as list, supports ? and * wildcards.
True is equivalent to [*], False is equivalent to []
what : str
attribute to change (must be in self.visible)
"""
self.__manage_visible(datasets,what,'set')
def add_visible(self,what,datasets):
"""
Adds to active groups.
Parameters
----------
datasets : list of str or Boolean
name of datasets as list, supports ? and * wildcards.
True is equivalent to [*], False is equivalent to []
what : str
attribute to change (must be in self.visible)
"""
self.__manage_visible(datasets,what,'add')
def del_visible(self,what,datasets):
"""
Removes from active groupse.
Parameters
----------
datasets : list of str or Boolean
name of datasets as list, supports ? and * wildcards.
True is equivalent to [*], False is equivalent to []
what : str
attribute to change (must be in self.visible)
"""
self.__manage_visible(datasets,what,'del')
def groups_with_datasets(self,datasets):
"""
Get groups that contain all requested datasets.
Only groups within inc?????/constituent/*_*/* inc?????/materialpoint/*_*/*
are considered as they contain the data.
Single strings will be treated as list with one entry.
Wild card matching is allowed, but the number of arguments need to fit.
Parameters
----------
datasets : iterable or str or boolean
Examples
--------
datasets = False matches no group
datasets = True matches all groups
datasets = ['F','P'] matches a group with ['F','P','sigma']
datasets = ['*','P'] matches a group with ['F','P']
datasets = ['*'] does not match a group with ['F','P','sigma']
datasets = ['*','*'] does not match a group with ['F','P','sigma']
datasets = ['*','*','*'] matches a group with ['F','P','sigma']
"""
if datasets is False: return []
sets = [datasets] if isinstance(datasets,str) else datasets
groups = []
with h5py.File(self.filename,'r') as f:
for i in self.iter_visible('increments'):
for o,p in zip(['constituents','materialpoints'],['con_physics','mat_physics']):
for oo in self.iter_visible(o):
for pp in self.iter_visible(p):
group = '/'.join([i,o[:-1],oo,pp]) # o[:-1]: plural/singular issue
if sets is True:
groups.append(group)
else:
match = [e for e_ in [glob.fnmatch.filter(f[group].keys(),s) for s in sets] for e in e_]
if len(set(match)) == len(sets) : groups.append(group)
return groups
def list_data(self):
"""Gives information on all active datasets in the file."""
message = ''
with h5py.File(self.filename,'r') as f:
for i in self.iter_visible('increments'):
message+='\n{}\n'.format(i)
for o,p in zip(['constituents','materialpoints'],['con_physics','mat_physics']):
for oo in self.iter_visible(o):
message+=' {}\n'.format(oo)
for pp in self.iter_visible(p):
message+=' {}\n'.format(pp)
group = '/'.join([i,o[:-1],oo,pp]) # o[:-1]: plural/singular issue
for d in f[group].keys():
try:
message+=' {} ({})\n'.format(d,f['/'.join([group,d])].attrs['Description'].decode())
except KeyError:
pass
return message
def get_dataset_location(self,label):
"""Returns the location of all active datasets with given label."""
path = []
with h5py.File(self.filename,'r') as f:
for i in self.iter_visible('increments'):
for o,p in zip(['constituents','materialpoints'],['con_physics','mat_physics']):
for oo in self.iter_visible(o):
for pp in self.iter_visible(p):
k = '/'.join([i,o[:-1],oo,pp,label])
try:
f[k]
path.append(k)
except KeyError as e:
print('unable to locate constituents dataset: '+ str(e))
return path
def read_dataset(self,path,c):
"""
Dataset for all points/cells.
If more than one path is given, the dataset is composed of the individual contributions
"""
with h5py.File(self.filename,'r') as f:
shape = (self.Nmaterialpoints,) + np.shape(f[path[0]])[1:]
if len(shape) == 1: shape = shape +(1,)
dataset = np.full(shape,np.nan)
for pa in path:
label = pa.split('/')[2]
p = np.where(f['mapping/cellResults/constituent'][:,c]['Name'] == str.encode(label))[0]
if len(p)>0:
u = (f['mapping/cellResults/constituent'][p,c]['Position'])
a = np.array(f[pa])
if len(a.shape) == 1:
a=a.reshape([a.shape[0],1])
dataset[p,:] = a[u,:]
p = np.where(f['mapping/cellResults/materialpoint']['Name'] == str.encode(label))[0]
if len(p)>0:
u = (f['mapping/cellResults/materialpoint'][p.tolist()]['Position'])
a = np.array(f[pa])
if len(a.shape) == 1:
a=a.reshape([a.shape[0],1])
dataset[p,:] = a[u,:]
return dataset
def add_Cauchy(self,P='P',F='F'):
"""
Adds Cauchy stress calculated from 1st Piola-Kirchhoff stress and deformation gradient.
Resulting tensor is symmetrized as the Cauchy stress should be symmetric.
"""
def Cauchy(F,P):
sigma = np.einsum('i,ijk,ilk->ijl',1.0/np.linalg.det(F['data']),P['data'],F['data'])
sigma = (sigma + np.transpose(sigma,(0,2,1)))*0.5 # enforce symmetry
return {
'data' : sigma,
'label' : 'sigma',
'meta' : {
'Unit' : P['meta']['Unit'],
'Description' : 'Cauchy stress calculated from {} ({}) '.format(P['label'],P['meta']['Description'])+\
'and deformation gradient {} ({})'.format(F['label'],F['meta']['Description']),
'Creator' : 'dadf5.py:add_Cauchy v{}'.format(version)
}
}
requested = [{'label':F,'arg':'F'},
{'label':P,'arg':'P'} ]
self.__add_generic_pointwise(Cauchy,requested)
def add_Mises(self,x):
"""Adds the equivalent Mises stress or strain of a tensor."""
def Mises(x):
if x['meta']['Unit'] == b'Pa': #ToDo: Should we use this? Then add_Cauchy and add_strain_tensors also should perform sanity checks
factor = 3.0/2.0
t = 'stress'
elif x['meta']['Unit'] == b'1':
factor = 2.0/3.0
t = 'strain'
else:
print(x['meta']['Unit'])
raise ValueError
d = x['data']
dev = d - np.einsum('ijk,i->ijk',np.broadcast_to(np.eye(3),[d.shape[0],3,3]),np.trace(d,axis1=1,axis2=2)/3.0)
#dev_sym = (dev + np.einsum('ikj',dev))*0.5 # ToDo: this is not needed (only if the input is not symmetric, but then the whole concept breaks down)
return {
'data' : np.sqrt(np.einsum('ijk->i',dev**2)*factor),
'label' : '{}_vM'.format(x['label']),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : 'Mises equivalent {} of {} ({})'.format(t,x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_Mises_stress v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(Mises,requested)
def add_norm(self,x,ord=None):
"""
Adds norm of vector or tensor.
See numpy.linalg.norm manual for details.
"""
def norm(x,ord):
o = ord
if len(x['data'].shape) == 2:
axis = 1
t = 'vector'
if o is None: o = 2
elif len(x['data'].shape) == 3:
axis = (1,2)
t = 'tensor'
if o is None: o = 'fro'
else:
raise ValueError
return {
'data' : np.linalg.norm(x['data'],ord=o,axis=axis,keepdims=True),
'label' : '|{}|_{}'.format(x['label'],o),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : '{}-Norm of {} {} ({})'.format(ord,t,x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_norm v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(norm,requested,{'ord':ord})
def add_absolute(self,x):
"""Adds absolute value."""
def absolute(x):
return {
'data' : np.abs(x['data']),
'label' : '|{}|'.format(x['label']),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : 'Absolute value of {} ({})'.format(x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_abs v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(absolute,requested)
def add_determinant(self,x):
"""Adds the determinant component of a tensor."""
def determinant(x):
return {
'data' : np.linalg.det(x['data']),
'label' : 'det({})'.format(x['label']),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : 'Determinant of tensor {} ({})'.format(x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_determinant v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(determinant,requested)
def add_spherical(self,x):
"""Adds the spherical component of a tensor."""
def spherical(x):
if not np.all(np.array(x['data'].shape[1:]) == np.array([3,3])):
raise ValueError
return {
'data' : np.trace(x['data'],axis1=1,axis2=2)/3.0,
'label' : 'sph({})'.format(x['label']),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : 'Spherical component of tensor {} ({})'.format(x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_spherical v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(spherical,requested)
def add_deviator(self,x):
"""Adds the deviator of a tensor."""
def deviator(x):
d = x['data']
if not np.all(np.array(d.shape[1:]) == np.array([3,3])):
raise ValueError
return {
'data' : d - np.einsum('ijk,i->ijk',np.broadcast_to(np.eye(3),[d.shape[0],3,3]),np.trace(d,axis1=1,axis2=2)/3.0),
'label' : 'dev({})'.format(x['label']),
'meta' : {
'Unit' : x['meta']['Unit'],
'Description' : 'Deviator of tensor {} ({})'.format(x['label'],x['meta']['Description']),
'Creator' : 'dadf5.py:add_deviator v{}'.format(version)
}
}
requested = [{'label':x,'arg':'x'}]
self.__add_generic_pointwise(deviator,requested)
def add_calculation(self,formula,label,unit='n/a',description=None,vectorized=True):
"""
General formula.
Works currently only for vectorized expressions
"""
if vectorized is not True:
raise NotImplementedError
def calculation(**kwargs):
formula = kwargs['formula']
for d in re.findall(r'#(.*?)#',formula):
formula = re.sub('#{}#'.format(d),"kwargs['{}']['data']".format(d),formula)
return {
'data' : eval(formula),
'label' : kwargs['label'],
'meta' : {
'Unit' : kwargs['unit'],
'Description' : '{}'.format(kwargs['description']),
'Creator' : 'dadf5.py:add_calculation v{}'.format(version)
}
}
requested = [{'label':d,'arg':d} for d in re.findall(r'#(.*?)#',formula)] # datasets used in the formula
pass_through = {'formula':formula,'label':label,'unit':unit,'description':description}
self.__add_generic_pointwise(calculation,requested,pass_through)
def add_strain_tensor(self,t,ord,defgrad='F'): #ToDo: Use t and ord
"""
Adds the a strain tensor.
Albrecht Bertram: Elasticity and Plasticity of Large Deformations An Introduction (3rd Edition, 2012), p. 102.
"""
def strain_tensor(defgrad,t,ord):
operator = {
'V#ln': lambda V: np.log(V),
'U#ln': lambda U: np.log(U),
'V#Biot': lambda V: np.broadcast_to(np.ones(3),[V.shape[0],3]) - 1.0/V,
'U#Biot': lambda U: U - np.broadcast_to(np.ones(3),[U.shape[0],3]),
'V#Green':lambda V: np.broadcast_to(np.ones(3),[V.shape[0],3]) - 1.0/V**2,
'U#Green':lambda U: U**2 - np.broadcast_to(np.ones(3),[U.shape[0],3]),
}
(U,S,Vh) = np.linalg.svd(defgrad['data']) # singular value decomposition
R_inv = np.transpose(np.matmul(U,Vh),(0,2,1)) # transposed rotation of polar decomposition
U = np.matmul(R_inv,defgrad['data']) # F = RU
(D,V) = np.linalg.eigh((U+np.transpose(U,(0,2,1)))*.5) # eigen decomposition (of symmetric(ed) matrix)
neg = np.where(D < 0.0) # find negative eigenvalues ...
D[neg[0],neg[1]] = D[neg[0],neg[1]]* -1 # ... flip value ...
V[neg[0],:,neg[1]] = V[neg[0],:,neg[1]]* -1 # ... and vector
d = operator['V#ln'](D)
a = np.matmul(V,np.einsum('ij,ikj->ijk',d,V))
return {
'data' : a,
'label' : 'ln(V)({})'.format(defgrad['label']),
'meta' : {
'Unit' : defgrad['meta']['Unit'],
'Description' : 'Strain tensor ln(V){} ({})'.format(defgrad['label'],defgrad['meta']['Description']),
'Creator' : 'dadf5.py:add_deviator v{}'.format(version)
}
}
requested = [{'label':defgrad,'arg':'defgrad'}]
self.__add_generic_pointwise(strain_tensor,requested,{'t':t,'ord':ord})
def __add_generic_pointwise(self,func,datasets_requested,extra_args={}):
"""
General function to add pointwise data.
Parameters
----------
func : function
Function that calculates a new dataset from one or more datasets per HDF5 group.
datasets_requested : list of dictionaries
Details of the datasets to be used: label (in HDF5 file) and arg (argument to which the data is parsed in func).
extra_args : dictionary, optional
Any extra arguments parsed to func.
"""
def job(args):
"""Call function with input data + extra arguments, returns results + group."""
args['results'].put({**args['func'](**args['in']),'group':args['group']})
N_threads = 1 # ToDo: should be a parameter
results = Queue(N_threads)
pool = util.ThreadPool(N_threads)
N_added = N_threads + 1
todo = []
# ToDo: It would be more memory efficient to read only from file when required, i.e. do to it in pool.add_task
for group in self.groups_with_datasets([d['label'] for d in datasets_requested]):
with h5py.File(self.filename,'r') as f:
datasets_in = {}
for d in datasets_requested:
loc = f[group+'/'+d['label']]
data = loc[()]
meta = {k:loc.attrs[k] for k in loc.attrs.keys()}
datasets_in[d['arg']] = {'data': data, 'meta' : meta, 'label' : d['label']}
todo.append({'in':{**datasets_in,**extra_args},'func':func,'group':group,'results':results})
pool.map(job, todo[:N_added]) # initialize
N_not_calculated = len(todo)
while N_not_calculated > 0:
result = results.get()
with h5py.File(self.filename,'a') as f: # write to file
dataset_out = f[result['group']].create_dataset(result['label'],data=result['data'])
for k in result['meta'].keys():
dataset_out.attrs[k] = result['meta'][k]
N_not_calculated-=1
if N_added < len(todo): # add more jobs
pool.add_task(job,todo[N_added])
N_added +=1
pool.wait_completion()