cpp/test.py
2024-11-04 19:39:53 +01:00

184 lines
5.6 KiB
Python

import pathlib
import subprocess
import numpy as np
from scipy.optimize import curve_fit
import matplotlib.pyplot as plt
def run_sims(taus):
for tau in taus:
with pathlib.Path('./config.txt').open('a') as f:
f.write(f'tau={tau}\n')
subprocess.run(['./build/rwsim', '-ste', './config.txt'])
def dampening(x: np.ndarray, apod: float) -> np.ndarray:
return np.exp(-apod * x)
def pulse_attn(freq: np.ndarray, t_pulse: float):
# cf. Schmitt-Rohr/Spieß eq. 2.126; omega_1 * t_p = pi/2
pi_half_squared = np.pi**2 / 4
omega = 2 * np.pi * freq
numerator = np.sin(np.sqrt(pi_half_squared + omega**2 * t_pulse**2 / 2))
denominator = np.sqrt(pi_half_squared + omega**2 * t_pulse**2 / 4)
return np.pi * numerator / denominator / 2
def post_process_spectrum(taus, apod, tpulse):
reduction_factor = np.zeros((taus.size, 5)) # hard-coded t_echo :(
for i, tau in enumerate(taus):
try:
raw_data = np.loadtxt(f'fid_tau={tau:.6e}.dat')
except OSError:
continue
t = raw_data[:, 0]
timesignal = raw_data[:, 1:]
timesignal *= dampening(t, apod)[:, None]
timesignal[0, :] /= 2
# FT to spectrum
freq = np.fft.fftshift(np.fft.fftfreq(t.size, d=1e-6))
spec = np.fft.fftshift(np.fft.fft(timesignal, axis=0), axes=0).real
spec *= pulse_attn(freq, t_pulse=tpulse)[:, None]
reduction_factor[i, :] = 2*timesignal[0, :]
plt.plot(freq, spec)
plt.show()
plt.semilogx(taus, reduction_factor, '.')
plt.show()
def post_process_ste(taus):
tevo = np.linspace(1e-6, 60e-6, num=121)
for i, tau in enumerate(taus):
try:
raw_data_cc = np.loadtxt(f'coscos_tau={tau:.6e}.dat')
raw_data_ss = np.loadtxt(f'sinsin_tau={tau:.6e}.dat')
except OSError:
continue
t_mix = raw_data_cc[:, 0]
fig_cc_raw, ax_cc_raw = plt.subplots()
fig_ss_raw, ax_ss_raw = plt.subplots()
ax_cc_raw.semilogx(t_mix, raw_data_cc[:, 1:])
ax_ss_raw.semilogx(t_mix, raw_data_ss[:, 1:])
scaled_cc = (raw_data_cc[:, 1:]-raw_data_cc[-1, 1:])/(raw_data_cc[0, 1:]-raw_data_cc[-1, 1:])
scaled_ss = (raw_data_ss[:, 1:]-raw_data_ss[-1, 1:])/(raw_data_ss[0, 1:]-raw_data_ss[-1, 1:])
fig_tau, ax_tau = plt.subplots()
fig_beta, ax_beta= plt.subplots()
fig_finfty, ax_finfty = plt.subplots()
tau_cc_fit = []
beta_cc_fit = []
finfty_cc_fit = []
tau_ss_fit = []
beta_ss_fit = []
finfty_ss_fit = []
for j in range(1, raw_data_cc.shape[1]-1):
p0 = [
raw_data_cc[0, 1],
t_mix[np.argmin(np.abs(scaled_cc[:, j]-np.exp(-1)))],
1,
0.1
]
res = curve_fit(ste, t_mix, raw_data_cc[:, j+1], p0, bounds=[(0, 0, 0, 0), (np.inf, np.inf, 1, 1)])
m0, tauc, beta, finfty = res[0]
print(f'Cos-Cos-Fit for {tevo[j]}: tau_c = {tauc:.6e}, beta={beta:.4e}, amplitude = {m0: .4e}, f_infty={finfty:.4e}')
tau_cc_fit.append(res[0][1])
beta_cc_fit.append(res[0][2])
finfty_cc_fit.append(res[0][3])
p0 = [
raw_data_cc[0, 1],
t_mix[np.argmin(np.abs(scaled_ss[:, j]-np.exp(-1)))],
1,
0.1
]
res = curve_fit(ste, t_mix, raw_data_ss[:, j+1], p0, bounds=[(0, 0, 0, 0), (np.inf, np.inf, 1, 1)])
m0, tauc, beta, finfty = res[0]
print(f'Sin-Sin-Fit for {tevo[j]}: tau_c = {tauc:.6e}, beta={beta:.4e}, amplitude = {m0: .4e}, f_infty={finfty:.4e}')
tau_ss_fit.append(res[0][1])
beta_ss_fit.append(res[0][2])
finfty_ss_fit.append(res[0][3])
ax_tau.semilogy(tevo[1:], tau_cc_fit, 'C0-')
ax_tau.axhline(tau)
ax_beta.plot(tevo[1:], beta_cc_fit, 'C0-')
ax_finfty.plot(tevo[1:], finfty_cc_fit, 'C0-')
ax_tau.semilogy(tevo[1:], tau_ss_fit, 'C1-')
ax_tau.axhline(tau)
ax_beta.plot(tevo[1:], beta_ss_fit, 'C1-')
ax_finfty.plot(tevo[1:], finfty_ss_fit, 'C1-')
plt.show()
np.savetxt('cc_tauc.dat', list(zip(tevo[1:], tau_cc_fit)))
np.savetxt('cc_beta.dat', list(zip(tevo[1:], beta_cc_fit)))
np.savetxt('cc_finfty.dat', list(zip(tevo[1:], finfty_cc_fit)))
np.savetxt('ss_tauc.dat', list(zip(tevo[1:], tau_ss_fit)))
np.savetxt('ss_beta.dat', list(zip(tevo[1:], beta_ss_fit)))
np.savetxt('ss_finfty.dat', list(zip(tevo[1:], finfty_ss_fit)))
# for i, tau in enumerate(taus):
#
# try:
# raw_data_cc = np.loadtxt(f'coscos_tau={tau:.6e}.dat')
# raw_data_ss = np.loadtxt(f'sinsin_tau={tau:.6e}.dat')
# except OSError:
# continue
#
# t_mix = raw_data_cc[:, 0]
#
# plt.semilogx(t_mix, raw_data_cc[:, 1:])
# plt.show()
#
# plt.semilogx(t_mix, raw_data_ss[:, 1:])
# plt.show()
#
# plt.plot(raw_data_cc[0, 1:])
# plt.plot(raw_data_ss[0, 1:])
# plt.show()
#
# plt.plot(raw_data_cc[-1, 1:]/raw_data_cc[0, 1:])
# plt.plot(raw_data_ss[-1, 1:]/raw_data_ss[0, 1:])
# plt.show()
def ste(x, m0, t, beta, finfty):
return m0 * ((1-finfty) * np.exp(-(x/t)**beta) + finfty)
if __name__ == '__main__':
tau_values = np.geomspace(1e-2, 1e-6, num=1) # if num=1, tau is first value
# parameter for spectrum simulations
lb = 2e3
pulse_length = 2e-6
run_sims(tau_values)
post_process_ste(tau_values)
# post_process_spectrum(tau_values, lb, pulse_length)