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42 lines
1.2 KiB
Python
42 lines
1.2 KiB
Python
from hydrogen import *
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from qmc_stats import *
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def MonteCarlo(a,tau,nmax):
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E = 0.
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N = 0.
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accep_rate = 0.
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sq_tau = np.sqrt(tau)
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r_old = np.random.normal(loc=0., scale=1.0, size=(3))
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d_old = drift(a,r_old)
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d2_old = np.dot(d_old,d_old)
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psi_old = psi(a,r_old)
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for istep in range(nmax):
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chi = np.random.normal(loc=0., scale=1.0, size=(3))
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r_new = r_old + tau * d_old + sq_tau * chi
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d_new = drift(a,r_new)
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d2_new = np.dot(d_new,d_new)
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psi_new = psi(a,r_new)
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# Metropolis
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prod = np.dot((d_new + d_old), (r_new - r_old))
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argexpo = 0.5 * (d2_new - d2_old)*tau + prod
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q = psi_new / psi_old
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q = np.exp(-argexpo) * q*q
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if np.random.uniform() < q:
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accep_rate += 1.
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r_old = r_new
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d_old = d_new
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d2_old = d2_new
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psi_old = psi_new
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N += 1.
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E += e_loc(a,r_old)
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return E/N, accep_rate/N
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a = 0.9
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nmax = 100000
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tau = 1.0
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X = [MonteCarlo(a,tau,nmax) for i in range(30)]
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E, deltaE = ave_error([x[0] for x in X])
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A, deltaA = ave_error([x[1] for x in X])
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print(f"E = {E} +/- {deltaE}\nA = {A} +/- {deltaA}")
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