Implemented new function for quality control: checksignallength, checks signal length in order to detect spuriously picked noise peaks.

This commit is contained in:
Ludger Küperkoch 2015-06-24 14:15:54 +02:00
parent b44fbe0b02
commit 68bbea9854

View File

@ -9,6 +9,7 @@
"""
import numpy as np
import scipy as sc
import matplotlib.pyplot as plt
from obspy.core import Stream, UTCDateTime
import warnings
@ -511,3 +512,88 @@ def wadaticheck(pickdic, dttolerance, iplot):
plt.close(iplot)
return checkedonsets
def checksignallength(X, pick, TSNR, minsiglength, nfac, minpercent, iplot):
'''
Function to detect spuriously picked noise peaks.
Uses envelope to determine, how many samples [per cent] after
P onset are below certain threshold, calculated from noise
level times noise factor.
: param: X, time series (seismogram)
: type: `~obspy.core.stream.Stream`
: param: pick, initial (AIC) P onset time
: type: float
: param: TSNR, length of time windows around initial pick [s]
: type: tuple (T_noise, T_gap, T_signal)
: param: minsiglength, minium required signal length [s] to
declare pick as P onset
: type: float
: param: nfac, noise factor (nfac * noise level = threshold)
: type: float
: param: minpercent, minimum required percentage of samples
above calculated threshold
: type: float
: param: iplot, if iplot > 1, results are shown in figure
: type: int
'''
assert isinstance(X, Stream), "%s is not a stream object" % str(X)
print 'Checking signal length ...'
x = X[0].data
t = np.arange(0, X[0].stats.npts / X[0].stats.sampling_rate,
X[0].stats.delta)
# generate envelope function from Hilbert transform
y = np.imag(sc.signal.hilbert(x))
e = np.sqrt(np.power(x, 2) + np.power(y, 2))
# get noise window
inoise = getnoisewin(t, pick, TSNR[0], TSNR[1])
# get signal window
isignal = getsignalwin(t, pick, TSNR[2])
# calculate minimum adjusted signal level
minsiglevel = max(e[inoise]) * nfac
# minimum adjusted number of samples over minimum signal level
minnum = len(isignal) * minpercent/100
# get number of samples above minimum adjusted signal level
numoverthr = len(np.where(e[isignal] >= minsiglevel)[0])
if numoverthr >= minnum:
print 'checksignallength: Signal reached required length.'
returnflag = 1
else:
print 'checksignallength: Signal shorter than required minimum signal length!'
print 'Presumably picked picked noise peak, pick is rejected!'
returnflag = 0
if iplot == 2:
plt.figure(iplot)
p1, = plt.plot(t,x, 'k')
p2, = plt.plot(t[inoise], e[inoise])
p3, = plt.plot(t[isignal],e[isignal], 'r')
p4, = plt.plot([t[isignal[0]], t[isignal[len(isignal)-1]]], \
[minsiglevel, minsiglevel], 'g')
p5, = plt.plot([pick, pick], [min(x), max(x)], 'c')
plt.legend([p1, p2, p3, p4, p5], ['Data', 'Envelope Noise Window', \
'Envelope Signal Window', 'Minimum Signal Level', \
'Onset'], loc='best')
plt.xlabel('Time [s] since %s' % X[0].stats.starttime)
plt.ylabel('Counts')
plt.title('Check for Signal Length, Station %s' % X[0].stats.station)
plt.yticks([])
plt.show()
raw_input()
plt.close(iplot)
return returnflag