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Bioreactor case study #1

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552 changes: 290 additions & 262 deletions .idea/workspace.xml

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Binary file added __pycache__/plots_RTO.cpython-37.pyc
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155 changes: 154 additions & 1 deletion plots_RTO.py
Original file line number Diff line number Diff line change
Expand Up @@ -725,4 +725,157 @@ def plot_obj_noise(obj):
plt.tight_layout()
plt.savefig('figs_noise_WO/noexplore_prior.png', dpi=400)
plt.close()
return print(1)
return print(1)


#
#
# X_opt_mc, y_opt_mc, TR_l_mc, xnew_mc, backtrack_1_mc = pickle.load(
# open('prior_with_exploration_ei_no_red_constraint_violation.p', 'rb'))
# plant = Bio_system(nk=6)
# cons_system = [] # l.WO_obj_ca
# for k in range(plant.nk):
# cons_system.append(functools.partial(plant.bio_con1_ca, k + 1))
# cons_system.append(functools.partial(plant.bio_con2_ca, k + 1))
#
# obj_system = plant.bio_obj_ca
# cons_h = np.zeros([8, 63, 12])
# obj = np.zeros([8, 63])
# for i in range(8):
# max_obj = 0.
#
# for j in range(63):
# for ik in range(12):
# cons_h[i, j, ik] = cons_system[ik](np.array(X_opt_mc)[i, j])
# if j >= 13:
# # for k in range(100):
# p = 0.
# if (cons_h[i, j,:] > 1e-7).all(): # not(np.array(backtrack_1_mc)[i,j-13]):#cons_system[ik](np.array(X_opt_mc)[i,j-k])>0:
# # p+=1
# print(cons_h[i, j, :] > 1e-7)
# if -obj_system(np.array(X_opt_mc)[i, j]) > max_obj:
# max_obj = -obj_system(np.array(X_opt_mc)[i, j])
# obj[i, j] = max_obj
# else:
# obj[i, j] = max_obj
# else:
# obj[i, j] = max_obj
#
# # if p==1 or j== 13:
# # obj[i,j] = obj_system(np.array(X_opt_mc)[i,j-k])
# # break
#
# else:
# obj[i, j] = -obj_system(np.array(X_opt_mc)[i, j])

# csfont = {'fontname': 'Times New Roman'}
#
# # plt.rcParams['font.sans-serif'] = "Arial"
# plt.rcParams['font.family'] = "Times New Roman"
# ni = 50
# ft = int(20)
# font = {'size': ft}
# plt.rc('font', **font)
# plt.rc('text', usetex=True)
# params = {'legend.fontsize': 15,
# 'legend.handlelength': 2}
# plt.rcParams.update(params)
# plt.plot(np.linspace(1, 50, 50),obj[0,13:].T,color='#AA3939', label='Proposed')
# plt.plot(np.linspace(1, 50, 50),obj[[0,1,2,3,4,5,7],13:].T,color='#AA3939')
#
# plt.plot(np.linspace(1, 50, 50), [0.171] * ni, 'k--', label='Real Optimum')
#
# plt.xlabel('RTO-iter')
# plt.ylabel('Objective')
# plt.xlim(1, 50)
# plt.legend()
# plt.tick_params(right=True, top=True, left=True, bottom=True)
# plt.tick_params(axis="y", direction="in")
# plt.tick_params(axis="x", direction="in")
# plt.tight_layout()
# plt.savefig('figs_WO/EI_bio.png', dpi=400)
# plt.close()
X_opt_mc, y_opt_mc, TR_l_mc, xnew_mc, backtrack_1_mc = pickle.load(open('no_prior_with_exploration_ei_no_red_constraint_violation_GP.p', 'rb'))
X_opt_mc_model, y_opt_mc, TR_l_mc, xnew_mc, backtrack_1_mc = pickle.load(open('prior_with_exploration_ei_no_red_constraint_violation.p', 'rb'))
csfont = {'fontname': 'Times New Roman'}

# plt.rcParams['font.sans-serif'] = "Arial"
plt.rcParams['font.family'] = "Times New Roman"
ni = 50
ft = int(20)
font = {'size': ft}
plt.rc('font', **font)
plt.rc('text', usetex=True)
params = {'legend.fontsize': 15,
'legend.handlelength': 2}
plt.rcParams.update(params)
u1_opt = np.array([282.21090606, 282.21090606, 281.84839532, 280.74131362, 120.00896333, 120.01589492,
222.34601803])
# plt.step(np.linspace(0,6,7),(40-0)*np.array([np.array(X_opt_mc)[3,-1,1].T,*np.array(X_opt_mc)[3,-1,1::2].T])+0, where='pre',
# color='#AA3939', label='Proposed')
plt.step(np.linspace(0,6,7),u1_opt, where='pre',
color='#AA3939', label='Optimal')
u1 = np.array(X_opt_mc)[:,:,::2]

plt.fill_between(np.linspace(0,6,7),
np.quantile((400-120)*np.array([np.array(u1)[:,-1,1].T,
*np.array(u1)[:,-1].T])+120,0.05,axis=1),
np.quantile((400-120)*np.array([np.array(u1)[:,-1,1].T,
*np.array(u1)[:,-1].T])+120,0.95,axis=1),'-',step='pre'
,color='#226666',alpha=0.2)
plt.step(np.linspace(0,6,7),((400-120)*np.array([np.array(u1)[:,-1,1].T,*np.array(u1)[:,-1].T])).mean(1)+120,'--',where='pre'
,color='#226666', label='Proposed')

plt.ylabel('$I [\mu$mol m$^{-2}$s$^{-1}]$ ')
plt.xlabel('Normalized time [-]')
plt.xlim(0, 6)
plt.legend()
plt.tick_params(right=True, top=True, left=True, bottom=True)
plt.tick_params(axis="y", direction="in")
plt.tick_params(axis="x", direction="in")
plt.tight_layout()
plt.savefig('figs_WO/I2.png', dpi=400)
plt.close()

#
#X_opt_mc, y_opt_mc, TR_l_mc, xnew_mc, backtrack_1_mc = pickle.load(open('no_prior_with_exploration_ei_no_red_constraint_violation_GP.p', 'rb'))
X_opt_mc_model, y_opt_mc, TR_l_mc, xnew_mc, backtrack_1_mc = pickle.load(open('prior_with_exploration_ei_no_red_constraint_violation.p', 'rb'))
csfont = {'fontname': 'Times New Roman'}

# plt.rcParams['font.sans-serif'] = "Arial"
plt.rcParams['font.family'] = "Times New Roman"
ni = 50
ft = int(20)
font = {'size': ft}
plt.rc('font', **font)
plt.rc('text', usetex=True)
params = {'legend.fontsize': 15,
'legend.handlelength': 2}
plt.rcParams.update(params)

# plt.step(np.linspace(0,6,7),(40-0)*np.array([np.array(X_opt_mc)[3,-1,1].T,*np.array(X_opt_mc)[3,-1,1::2].T])+0, where='pre',
# color='#AA3939', label='Proposed')
u2_opt = np.array([25.06421834, 25.06421834, 16.03066446, 37.62476903, 39.99997563, 39.9999762, 39.99997472])
plt.step(np.linspace(0,6,7),u2_opt, where='pre',
color='#AA3939', label='Optimal')
u2 = np.array(X_opt_mc)[:,:,1::2]
plt.fill_between(np.linspace(0,6,7),
np.quantile((40)*np.array([np.array(u2)[:,-1,1].T,
*np.array(u2)[:,-1].T]),0.05,axis=1),
np.quantile((40)*np.array([np.array(u2)[:,-1,1].T,
*np.array(u2)[:,-1].T]),0.95,axis=1),'-',step='pre'
,color='#226666',alpha=0.2)
plt.step(np.linspace(0,6,7),((40)*np.array([np.array(u2)[:,-1,1].T,*np.array(u2)[:,-1].T])).mean(1),'--',where='pre'
,color='#226666', label='Proposed')

plt.ylabel('$F_{\sf N} [$mg L$^{-1}$h$^{-1}]$ ')
plt.xlabel('Normalized time [-]')
plt.xlim(0, 6)
plt.legend()
plt.tick_params(right=True, top=True, left=True, bottom=True)
plt.tick_params(axis="y", direction="in")
plt.tick_params(axis="x", direction="in")
plt.tight_layout()
plt.savefig('figs_WO/f_N2.png', dpi=400)
plt.close()

Empty file added run_Bio/__init__.py
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Binary file added run_Bio/figs_WO/EI_bio_GP.png
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