#!/usr/bin/env python3 # vim: indent=fdm ts=4 """ Show Signal to noise for the original simulation signal, the beacon signal and the combined signal for each antenna """ import numpy as np import h5py import matplotlib.pyplot as plt import numpy as np from earsim import REvent, block_filter import aa_generate_beacon as beacon import lib if __name__ == "__main__": from os import path import sys import matplotlib import os if os.name == 'posix' and "DISPLAY" not in os.environ: matplotlib.use('Agg') from scriptlib import MyArgumentParser parser = MyArgumentParser() args = parser.parse_args() fname = "ZH_airshower/mysim.sry" fig_dir = "./figures/" show_plots = args.show_plots #### fname_dir = path.dirname(fname) antennas_fname = path.join(fname_dir, beacon.antennas_fname) tx_fname = path.join(fname_dir, beacon.tx_fname) # create fig_dir if fig_dir: os.makedirs(fig_dir, exist_ok=True) # Read in antennas from file f_beacon, tx, antennas = beacon.read_beacon_hdf5(antennas_fname) _, __, txdata = beacon.read_tx_file(tx_fname) # general properties dt = antennas[0].t[1] - antennas[0].t[0] # ns pb = lib.passband(30e-3, 80e-3) # GHz beacon_pb = lib.passband(f_beacon-1e-3, f_beacon+1e-3) # GHz beacon_amp = np.max(txdata['amplitudes'])# mu V/m if True: # Apply filter to raw beacon/noise to compare with Filtered Traces myfilter = lambda x: block_filter(x, dt, pb[0], pb[1]) else: # Compare raw beacon/noise with Filtered Traces myfilter = lambda x: x ## ## Beacon vs Noise SNR ## if True: beacon_snrs = [ lib.signal_to_noise(myfilter(beacon_amp*ant.beacon), myfilter(ant.noise), samplerate=1/dt, signal_band=beacon_pb) for ant in antennas ] fig, ax = plt.subplots() ax.set_title("Maximum Beacon/Noise SNR") ax.set_xlabel("Antenna no.") ax.set_ylabel("SNR") ax.plot([ int(ant.name) for ant in antennas], beacon_snrs, 'o', ls='none') if fig_dir: fig.savefig(path.join(fig_dir, path.basename(__file__) + f".beacon_vs_noise_snr.pdf")) ## ## Beacon vs Total SNR ## if True: beacon_snrs = [ lib.signal_to_noise(myfilter(beacon_amp*ant.beacon), ant.E_AxB, samplerate=1/dt, signal_band=beacon_pb) for ant in antennas ] fig, ax = plt.subplots() ax.set_title("Maximum Beacon/Total SNR") ax.set_xlabel("Antenna no.") ax.set_ylabel("SNR") ax.plot([ int(ant.name) for ant in antennas], beacon_snrs, 'o', ls='none') if fig_dir: fig.savefig(path.join(fig_dir, path.basename(__file__) + f".beacon_vs_total_snr.pdf")) ## ## Airshower signal vs Noise SNR ## if True: shower_snrs = [ lib.signal_to_noise(ant.E_AxB, myfilter(ant.noise), samplerate=1/dt, signal_band=pb) for ant in antennas ] fig, ax = plt.subplots() ax.set_title("Total (Signal+Beacon+Noise)/Noise SNR") ax.set_xlabel("Antenna no.") ax.set_ylabel("SNR") ax.plot([ int(ant.name) for ant in antennas], shower_snrs, 'o', ls='none') if fig_dir: fig.savefig(path.join(fig_dir, path.basename(__file__) + f".total_snr.pdf")) if show_plots: plt.show()