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AMISR Reader integration with Signal Chain Blocks, this time just only for Voltages to Profile Selection and Plotting Scope(Power,IQ) and Power Profile(dB). There is thwo python scripts as experiment's test.
AMISR Reader integration with Signal Chain Blocks, this time just only for Voltages to Profile Selection and Plotting Scope(Power,IQ) and Power Profile(dB). There is thwo python scripts as experiment's test.

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testcode.py
145 lines | 3.5 KiB | text/x-python | PythonLexer
import numpy
import scipy.signal
import matplotlib
matplotlib.use("TKAgg")
import pylab as pl
import time
def getInverseFilter(code, lenfilter=8*28):
nBauds = len(code)
if lenfilter == None:
lenfilter = 10*nBauds
codeBuffer = numpy.zeros((lenfilter), dtype=numpy.float32)
codeBuffer[0:nBauds] = code
inverse_filter = numpy.real(numpy.fft.ifft(1.0/numpy.fft.fft(codeBuffer)))
inverse_filter = numpy.roll(inverse_filter, shift=120)
# pl.plot(codeBuffer)
# pl.plot(inverse_filter)
# pl.show()
return inverse_filter
def getSignal(nChannels, nHeis):
u = numpy.complex(1,2)
u /= numpy.abs(u)
signal = numpy.random.rand(nChannels, nHeis)
signal = signal.astype(numpy.complex)
signal *= u
return signal
def time_decoding(signal, code):
ini = time.time()
nBauds = len(code)
nChannels, nHeis = signal.shape
datadec = numpy.zeros((nChannels, nHeis - nBauds + 1), dtype=numpy.complex)
tmpcode = code.astype(numpy.complex)
#######################################
ini = time.time()
for i in range(nChannels):
datadec[i,:] = numpy.correlate(signal[i,:], code, mode='valid')/nBauds
print time.time() - ini
return datadec
def freq_decoding(signal, code):
ini = time.time()
nBauds = len(code)
nChannels, nHeis = signal.shape
codeBuffer = numpy.zeros((nHeis), dtype=numpy.float32)
codeBuffer[0:nBauds] = code
fft_code = numpy.conj(numpy.fft.fft(codeBuffer)).reshape(1, -1)
######################################
ini = time.time()
fft_data = numpy.fft.fft(signal, axis=1)
conv = fft_data*fft_code
data = numpy.fft.ifft(conv, axis=1)/nBauds
datadec = data[:,:-nBauds+1]
print time.time() - ini
return datadec
def fftconvol_decoding(signal, code):
ini = time.time()
nBauds = len(code)
nChannels, nHeis = signal.shape
datadec = numpy.zeros((nChannels, nHeis - nBauds + 1), dtype=numpy.complex)
tmpcode = code.astype(numpy.complex)
#######################################
ini = time.time()
for i in range(nChannels):
datadec[i,:] = scipy.signal.fftconvolve(signal[i,:], code[-1::-1], mode='valid')/nBauds
print time.time() - ini
return datadec
def filter_decoding(signal, code):
ini = time.time()
nBauds = len(code)
nChannels, nHeis = signal.shape
inverse_filter = getInverseFilter(code)
datadec = numpy.zeros((nChannels, nHeis + len(inverse_filter) - 1), dtype=numpy.complex)
#######################################
ini = time.time()
for i in range(nChannels):
datadec[i,:] = numpy.convolve(signal[i,:], inverse_filter, mode='full')
datadec = datadec[:,120:120+nHeis]
print time.time() - ini
return datadec
nChannels, nHeis = 8, 3900
index = 300
code = numpy.array([1, 1, -1, -1, -1, 1, 1, 1, -1, -1, -1, -1, -1, -1, -1, 1, -1, 1, -1, 1, 1, -1, 1, 1, -1, -1, 1, -1])
signal = getSignal(nChannels, nHeis)
signal[0,index:index+len(code)] = code*10
signalout = time_decoding(signal, code)
signalout1 = freq_decoding(signal, code)
signalout2 = fftconvol_decoding(signal, code)
signalout3 = filter_decoding(signal, code)
#pl.plot(numpy.abs(signal[0]))
pl.plot(numpy.abs(signalout[0]))
#pl.plot(numpy.abs(signalout1[0]))
#pl.plot(numpy.abs(signalout2[0]))
pl.plot(numpy.abs(signalout3[0])+0.5)
pl.show()