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systemFVM.py
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systemFVM.py
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import numpy as np
import random, time
print("FVM system generator")
outdir = './data/modelF/'
kdir = './data/perm/'
cval = 1.0
fval = 0.0
dd = 8
# load k(x)
NS = 10
NN = 64
Nf = NN*NS
for ii in range(NS):
locN = ii*NS + 0
infile0 = kdir+'/k'+str(locN)+'.txt'
with open(infile0) as f:
lines_list = f.readlines()
my_data0 = [float(val) for val in lines_list[1::2]]# with scipping
arr0 = np.reshape(my_data0, (NN, NN))
for jj in range(1, NS):
locN = ii*NS + jj
infileij = kdir+'/k'+str(locN)+'.txt'
with open(infileij) as f:
lines_list = f.readlines()
my_dataij = [float(val) for val in lines_list[1::2]]# with scipping
arrij = np.reshape(my_dataij, (NN, NN))
arr0 = np.concatenate((arr0, arrij), axis=1)# concatinate col-wise
if ii==0:
arrK = arr0 # concatinate row-wise
else:
arrK = np.concatenate((arrK, arr0))# concatinate col-wise
print(arrK.min(), arrK.max())
Nx, Ny = arrK.shape
print(Nx, Ny)
# rescale k(x)
NN = int(NN/dd)
arrK = arrK[::dd, ::dd]
Nx, Ny = arrK.shape
print(Nx, Ny, NN)
# generate T and S
import sys, math
import petsc4py
from petsc4py import PETSc
petsc4py.init(sys.argv)
hh = 1.0/Nx; volK = hh*hh
n = Nx*Ny
T = PETSc.Mat().createAIJ([n, n], nnz=5)
M = PETSc.Mat().createAIJ([n, n], nnz=1)
S = PETSc.Mat().createAIJ([n, n], nnz=1)
for i in range(Nx):
for j in range(Ny):
I = i*Ny+j
diagval = 0
if j!=0:
val = 2.0/(1.0/arrK[i,j-1]+1.0/arrK[i,j]); diagval += val
T.setValue(I, I-1, -val)
if j!=(Ny-1):
val = 2.0/(1.0/arrK[i,j+1]+1.0/arrK[i,j]); diagval += val
T.setValue(I, I+1, -val)
if i!=0:
val = 2.0/(1.0/arrK[i-1,j]+1.0/arrK[i,j]); diagval += val
T.setValue(I, I-Ny, -val)
if (i!=(Nx-1)):
val = 2.0/(1.0/arrK[i+1,j]+1.0/arrK[i,j]); diagval += val
T.setValue(I, I+Ny, -val)
T.setValue(I, I, diagval)
# M
mval = cval*volK
M.setValue(I, I, mval)
# S for GMsFEM
sval = arrK[i,j]*volK
S.setValue(I, I, sval)
T.assemblyBegin()
T.assemblyEnd()
M.assemblyBegin()
M.assemblyEnd()
S.assemblyBegin()
S.assemblyEnd()
print('generate T, S and M')
q = PETSc.Vec().createSeq(n)
for i in range(Nx):
for j in range(Ny):
I = i*Ny+j
q.setValue(I, fval*volK)
print('generate Rhs')
# save T and S for pres and RHS
# save T
filenameT = outdir + 'mat-K.txt'
fileT = open(filenameT, "w")
bufferT = ''
for I in range(n):
cols,vals = T.getRow(I)
for cj in range(len(cols)):
bufferT += str(I) + ' ' + str(cols[cj]) + ' ' + str(vals[cj]) + '\n'
fileT.write(bufferT)
fileT.close()
print('save mat T into ' + filenameT)
# save M
filenameT = outdir + 'mat-M.txt'
fileT = open(filenameT, "w")
bufferT = ''
for I in range(n):
cols,vals = M.getRow(I)
for cj in range(len(cols)):
bufferT += str(I) + ' ' + str(cols[cj]) + ' ' + str(vals[cj]) + '\n'
fileT.write(bufferT)
fileT.close()
print('save mat M into ' + filenameT)
# save S
filenameT = outdir + 'mat-S.txt'
fileT = open(filenameT, "w")
bufferT = ''
for I in range(n):
cols,vals = T.getRow(I)
for cj in range(len(cols)):
bufferT += str(I) + ' ' + str(cols[cj]) + ' ' + str(vals[cj]) + '\n'
fileT.write(bufferT)
fileT.close()
print('save mat S into ' + filenameT)
# save Rhs
outRhs = outdir + 'rhs.txt'
fileRhs = open(outRhs, "w")
bufferRhs = ''
for I in range(n):
sval = q.getValue(I)
bufferRhs += str(I) + ' ' + str(sval) + '\n'
fileRhs.write(bufferRhs)
fileRhs.close()
print('save rhs into ' + outRhs)
# DOF of DBC
hh = 1.0/Nx
mg = PETSc.Vec().createSeq(n)
g = PETSc.Vec().createSeq(n)
for i in range(Nx):
for j in range(Ny):
I = i*Ny+j
# if (i*hh < hh/2 or j*hh < hh/2 or i*hh > 1.0-hh-hh/2 or j*hh > 1.0-hh-hh/2):
if (j*hh < hh/2):
mg.setValue(I, 1.0)
g.setValue(I, 1.0)
else:
mg.setValue(I, 0.0)
g.setValue(I, 0.0)
print('generate Rhs')
# save DBC
outRhs = outdir + 'dbc.txt'
fileRhs = open(outRhs, "w")
bufferRhs = ''
for I in range(n):
bufferRhs += str(I) + ' ' + str(mg.getValue(I)) + '\n'
fileRhs.write(bufferRhs)
fileRhs.close()
print('save dbc into ' + outRhs)
outRhs = outdir + 'dbc-g.txt'
fileRhs = open(outRhs, "w")
bufferRhs = ''
for I in range(n):
bufferRhs += str(I) + ' ' + str(g.getValue(I)) + '\n'
fileRhs.write(bufferRhs)
fileRhs.close()
print('save g into ' + outRhs)
# save figs
from dolfin import *
import math
meshc = UnitSquareMesh(NS, NS)
Vc = FunctionSpace(meshc, 'DG', 0)
uc = Function(Vc)
uarrc = uc.vector().array()
mesh = UnitSquareMesh(Nx, Ny)
V = FunctionSpace(mesh, 'DG', 0)
u = Function(V)
uarr = u.vector().array()
print("functions fenics")
for i in range(Nx):
for j in range(Ny):
I = i*Ny + j
val = arrK[i,j]
uarr[2*I] = val
uarr[2*I+1] = uarr[2*I]
u.vector().set_local(uarr)
filef = File(outdir+"results/k.pvd")
filef << u
print('k saved')