Kalman-and-Bayesian-Filters.../experiments/gh.py

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2018-07-14 20:45:39 +02:00
# -*- coding: utf-8 -*-
"""
Created on Thu May 15 16:07:26 2014
@author: RL
"""
from __future__ import division
import matplotlib.pyplot as plt
import numpy.random as random
def g_h_filter (data, x, dx, g, h, dt=1.):
results = []
for z in data:
x_est = x + (dx*dt)
residual = z - x_est
dx = dx + h * (residual / float(dt))
x = x_est + g * residual
print('gx',dx,)
results.append(x)
return results
'''
computation of x
x_est = weight + gain
residual = z - weight - gain
x = weight + gain + g (z - weight - gain)
w + gain + gz -wg -ggain
w -wg + gain - ggain + gz
w(1-g) + gain(1-g) +gz
(w+g)(1-g) +gz
'''
'''
gain computation
gain = gain + h/t* (z - weight - gain)
= gain + hz/t -hweight/t - hgain/t
= gain(1-h/t) + h/t(z-weight)
'''
'''
gain+ h*(z-w -gain*t)/t
gain + hz/t -hw/t -hgain
gain*(1-h) + h/t(z-w)
'''
def weight2():
w = 0
gain = 200
t = 10.
weight_scale = 1./6
gain_scale = 1./10
weights=[2060]
for i in range (len(weights)):
z = weights[i]
w_pre = w + gain*t
new_w = w_pre * (1-weight_scale) + z * (weight_scale)
print('new_w',new_w)
gain = gain *(1-gain_scale) + (z - w) * gain_scale/t
print (z)
print(w)
#gain = new_gain * (gain_scale) + gain * (1-gain_scale)
w = new_w
print ('w',w,)
print ('gain=',gain)
def weight3():
w = 160.
gain = 1.
t = 1.
weight_scale = 6/10.
gain_scale = 2./3
weights=[158]
for i in range (len(weights)):
z = weights[i]
w_pre = w + gain*t
new_w = w_pre * (1-weight_scale) + z * (weight_scale)
print('new_w',new_w)
gain = gain *(1-gain_scale) + (z - w) * gain_scale/t
print (z)
print(w)
#gain = new_gain * (gain_scale) + gain * (1-gain_scale)
w = new_w
print ('w',w,)
print ('gain=',gain)
weight3()
'''
#zs = [i + random.randn()*50 for i in range(200)]
zs = [158.0, 164.2, 160.3, 159.9, 162.1, 164.6, 169.6, 167.4, 166.4, 171.0]
#zs = [2060]
data= g_h_filter(zs, 160, 1, .6, 0, 1.)
'''
data = g_h_filter([2060], x=0, dx=200, g=1./6, h = 1./10, dt=10)
print data
'''
print data
print data2
plt.plot(data)
plt.plot(zs, 'g')
plt.show()
'''