import scipy.io as sio import numpy as np import matplotlib.pyplot as plt from mpl_toolkits.axes_grid1.inset_locator import inset_axes plt.rcParams.update({'font.size': 22}) # load grid x= np.loadtxt("x.dat") y= np.loadtxt("y.dat") ni=len(x) nj=len(y) viscos=1./950 # read data file 1 vectz= np.loadtxt("vect_uuvvwwz.dat") ntstep=int(vectz[0]) n=len(vectz) nn=10 iu=range(1,n,nn) iv=range(2,n,nn) ieps=range(3,n,nn) iuu=range(4,n,nn) ivv=range(5,n,nn) iww=range(6,n,nn) iuv=range(7,n,nn) ik=range(8,n,nn) ivis=range(9,n,nn) ipksgs=range(10,n,nn) u=vectz[iu]/ntstep v=vectz[iv]/ntstep eps=vectz[ieps]/ntstep uu=vectz[iuu]/ntstep vv=vectz[ivv]/ntstep ww=vectz[iww]/ntstep uv=vectz[iuv]/ntstep rk=vectz[ik]/ntstep vis=vectz[ivis]/ntstep pksgs=vectz[ipksgs]/ntstep # uu is total inst. velocity squared. Hence the resolved turbulent resolved stresses are obtained as uu=uu-u**2 vv=vv-v**2 uv=uv-u*v u_2d=np.reshape(u,(ni,nj)) v_2d=np.reshape(v,(ni,nj)) eps_2d=np.reshape(eps,(ni,nj)) uu_2d=np.maximum(np.reshape(uu,(ni,nj)),0.) vv_2d=np.maximum(np.reshape(vv,(ni,nj)),0.) uu_2d=np.maximum(np.reshape(uu,(ni,nj)),0.) vv_2d=np.maximum(np.reshape(vv,(ni,nj)),0.) ww_2d=np.maximum(np.reshape(ww,(ni,nj)),0.) uv_2d=np.reshape(uv,(ni,nj)) rk2d=np.reshape(rk,(ni,nj)) vis_2d=np.reshape(vis,(ni,nj))/viscos #this is to total viscosity, i.e. vis_tot=vis+vis_turb pksgs_2d=np.reshape(pksgs,(ni,nj)) # compute terms in u-ekv dudx_2d,dudy_2d = np.gradient(u_2d,x,y) # The arrays have have the dimension (ni,nj). The first index # represents moving in the $x_1$ direction. For example # # u_2d(:,0): nodes at the lower wall (low y) # u_2d(:,nj-1): nodes at the upper wall (high y) # u_2d(0,:): nodes at the inlet (low x) # u_2d(ni-1,:): nodes at the outlet (high x) ########################################## uu v. y fig1 = plt.figure("Figure 1") plt.clf() #clear the figure # plot uu vs. y i=24 # x=1.175 plt.plot(y,uu_2d[i,:]**0.5,'b-',label='x=1.175') i=59 # x=2.925 plt.plot(y,uu_2d[i,:]**0.5,'r--',label='x=2.925') plt.legend() plt.axis([0,2,0,4.5]) plt.xlabel('$y$') plt.ylabel('$\overline{u^\prime u^\prime}$') plt.savefig('uu_vs_y_python.eps') ########################################## uu v. x fig2 = plt.figure("Figure 2") plt.clf() #clear the figure # plot uu vs. x j=29 #y=0.24 plt.plot(x,uu_2d[:,j]**0.5,'b-',label='y=0.24') j=44 #y=1.35 plt.plot(x,uu_2d[:,j]**0.5,'r--',label='y=1.35') plt.legend() plt.ylabel('$y$') plt.xlabel('$\overline{u^\prime u^\prime}$') plt.axis([0,2,0,4.5]) plt.savefig('uu_vs_x_python.eps')