Exemple #1
0
    limits = np.arange(0.90, 0.99, 0.01)

    avers = []
    parms = [[], []]

    for lim in limits:

        position = np.argwhere(data >= lim)
        pos_zero = np.argwhere(data >= 0)

        pos_tp = int(position[-1]) + 1
        pos_zero = int(pos_zero[-1])

        summ = []
        parm1, parm2 = cv(exp_mod, time[0:pos_tp], data[0:pos_tp])
        sig = parm1
        parm3, parm4 = cv(parab_mod, time[pos_tp:pos_zero],
                          data[pos_tp:pos_zero])

        te = parm1 + parm3

        parm2 = np.sqrt(np.diag(parm2))

        aver = [parm2[0], parm2[1]]
        avers.append(parm2[0] * 2 + parm2[1])
        parms[0].append(parm1)
        parms[1].append(parm3)

    #position = int(np.argwhere(avers == np.amin(avers)))
Exemple #2
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    return modelo1


def modelo2(x, A, B, C, mu, sigma):
    modelo2 = recta(x, A, B) - lorentz(x, C, mu, sigma)
    return modelo2

# Main Setup

x = sp.loadtxt('espectro.dat')[:, 0]  # long de onda
y = sp.loadtxt('espectro.dat')[:, 1]  # Flujo
sigma = sp.std(x)
mu = sp.mean(x)
A, B = sp.polyfit(x, y, 1)
C = 1 * 10**(-16)  # valor mas pequeno de y
a1, b1 = cv(modelo1, x, y, [A, B, C, mu, sigma])
a2, b2 = cv(modelo2, x, y, [A, B, C, mu, sigma])
modelo1v = modelo1(x, *a1)
modelo2v = modelo2(x, *a2)

# Grafico modelo 1

fig1 = plt.figure(1)
fig1.clf()
plt.plot(x, y, 'b-')
plt.plot(x, modelo1v, 'r-')
plt.xlabel(r'Longitud de onda [$\AA$]')
plt.ylabel(r'Flujo [$erg s^{-1} Hz^{-1}cm^{-2}$]')
plt.title('Curva y modelamiento de Espectro ' +
          'por Gaussiana')
plt.grid(True)
import numpy as np
import matplotlib.pyplot as plt
from scipy.optimize import curve_fit as cv
#Import the data from the Text File

data = np.genfromtxt("Draft4.txt", skip_header=3, delimiter="\t")

print(data)
time = data[:, 0]
V_out = data[:, 1]


def func(x, b):
    #we know V0 is o.5 so only have program find b in the function
    return 0.5 * np.exp(-b * x)


popt1, pcov1 = cv(func, time, V_out)

print(popt1)

bVal1 = str(round(popt1[0], 3))

eq1 = " 0.5 * EXP(-" + bVal1 + "x)"

plt.xlabel("Time / s")
plt.ylabel("Voltage / V")
plt.plot(time, V_out, "r", label="V_out, " + eq1)
plt.title("Time against Voltage at Different Parts of the Circuit")
plt.legend()
    limits = np.arange(0.2, 1, 0.01)

    avers = []
    sizes = [[], []]
    alphas = []
    limas = [[], []]

    for lim in limits:
        #get cond_cool and rad_cool
        position = np.argwhere(data >= lim)
        pos_zero = np.argwhere(data >= 0)

        pos_tp = int(position[-1]) + 1

        parm1, parm2 = cv(cond_cool,
                          time[0:pos_tp],
                          data[0:pos_tp],
                          bounds=(0, 20))
        parm3, parm4 = cv(rad_cool,
                          time[pos_tp:-1],
                          data[pos_tp:-1],
                          bounds=(0, 20))

        size_c = parm1
        size_r = parm3[1]
        alpha = parm3[0]
        sizes[0].append(size_c)
        sizes[1].append(size_r)
        alphas.append(alpha)

        time2 = np.arange(0, 15, 0.01)
        for lim_timea in time2[2:-1]:
Exemple #5
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    data = data[maximum: -1]
    time = time[maximum: -1]
    
    limits = np.arange(0.1, 0.99, 0.01)
    avers = []
    parms = [[],[]]

    for lim in limits:
        position = np.argwhere(data >= lim)
        pos_zero = np.argwhere(data >= 0)

        pos_tp = int(position[-1]) + 1
        pos_zero = int(pos_zero[-1])

        parm1, parm2 = cv(fl.A_exp, time[0 : pos_tp], data[0 : pos_tp])
        sig = parm1[0]
        parm3, parm4 = cv(fl.A_parab, time[pos_tp : pos_zero], data[pos_tp : pos_zero])

        alpha = parm3[0]
        parms[0].append(sig)
        parms[1].append(alpha)
        
        aver = 0.0 
        ind = 0
        for i in time:
            aver += (fl.A_full(i, parm1[0], parm3[0], lim) - data[ind])**2
            ind += 1 
            
        aver = np.float(np.sqrt(aver / len(time)))
        avers.append(aver)
Exemple #6
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def modelo2(x, A, B, C, mu, sigma):
    modelo2 = recta(x, A, B) - lorentz(x, C, mu, sigma)
    return modelo2


# Main Setup

x = sp.loadtxt('espectro.dat')[:, 0]  # long de onda
y = sp.loadtxt('espectro.dat')[:, 1]  # Flujo
sigma = sp.std(x)
mu = sp.mean(x)
A, B = sp.polyfit(x, y, 1)
C = 1 * 10**(-16)  # valor mas pequeno de y
a1, b1 = cv(modelo1, x, y, [A, B, C, mu, sigma])
a2, b2 = cv(modelo2, x, y, [A, B, C, mu, sigma])
modelo1v = modelo1(x, *a1)
modelo2v = modelo2(x, *a2)

# Grafico modelo 1

fig1 = plt.figure(1)
fig1.clf()
plt.plot(x, y, 'b-')
plt.plot(x, modelo1v, 'r-')
plt.xlabel(r'Longitud de onda [$\AA$]')
plt.ylabel(r'Flujo [$erg s^{-1} Hz^{-1}cm^{-2}$]')
plt.title('Curva y modelamiento de Espectro ' + 'por Gaussiana')
plt.grid(True)
fig1.savefig('gauss')