ZH: add Reconstruction Lib from Harm

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Eric Teunis de Boone 2022-11-21 18:20:11 +01:00
parent 173f45c666
commit 6e18dca9c2
2 changed files with 348 additions and 0 deletions

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from .lib import *
from . import rit

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# from wappy import *
from earsim import *
from atmocal import *
import matplotlib.pyplot as plt
from scipy.signal import hilbert
from scipy import signal
from scipy.interpolate import interp1d
from scipy.optimize import curve_fit,minimize
import pandas as pd
import os
plt.rcParams.update({'font.size': 16})
atm = AtmoCal()
from matplotlib import cm
def set_pol_and_bp(e,low=0.03,high=0.08):
for ant in e.antennas:
E = [np.dot(e.uAxB,[ex,ey,ez]) for ex,ey,ez in zip(ant.Ex,ant.Ey,ant.Ez)]
dt = ant.t[1] -ant.t[0]
E = block_filter(E,dt,low,high)
ant.E_AxB = E
ant.t_AxB = ant.t
def pow_and_time(test_loc,ev,dt=1.0):
t_ = []
a_ = []
t_min = 1e9
t_max = -1e9
for ant in ev.antennas:
#propagate to test location
aloc = [ant.x,ant.y,ant.z]
delta,dist = atm.light_travel_time(test_loc,aloc)
delta = delta*1e9
t__ = np.subtract(ant.t_AxB,delta)
t_.append(t__)
a_.append(ant.E_AxB)
if t__[0] < t_min:
t_min = t__[0]
if t__[-1] > t_max:
t_max = t__[-1]
t_sum = np.arange(t_min+1,t_max-1,dt)
a_sum = np.zeros(len(t_sum))
#interpolation
for t_r,E_ in zip (t_,a_):
f = interp1d(t_r,E_,assume_sorted=True,bounds_error=False,fill_value=0.)
a_int = f(t_sum)
a_sum = np.add(a_sum,a_int)
if len(a_sum) != 0:
P = np.sum(np.square(np.absolute(np.fft.fft(a_sum))))
else:
print("ERROR, a_sum lenght = 0",
"tmin ",t_min,
"t_max ",t_max,
"dt",dt)
P = 0
return P,t_,a_,a_sum,t_sum
def shower_axis_slice(e,Xb=200,Xe=1200,dX=2,zgr=1400):
zgr = zgr + e.core[2]
N = int((Xe-Xb)/dX)
Xs = np.array(np.linspace(Xb,Xe,N+1))
ds = np.array([atm.distance_to_slant_depth(np.deg2rad(e.zenith),X,zgr) for X in Xs])
locs = []
for d_ in ds:
xc = np.sin(np.deg2rad(e.zenith))*np.cos(np.deg2rad(e.azimuth))* d_
yc = np.sin(np.deg2rad(e.zenith))*np.sin(np.deg2rad(e.azimuth))* d_
zc = np.cos(np.deg2rad(e.zenith))* d_
locs.append([xc,yc,zc])
p = []
for loc in locs:
P,t_,pulses_,wav,twav = pow_and_time(loc,e)
p.append(P)
p = np.asanyarray(p)
return ds,Xs,locs,p
def shower_plane_slice(e,X=750.,Nx=10,Ny=10,wx=1e3,wy=1e3,xoff=0,yoff=0,zgr=1400):
zgr = zgr + e.core[2]
dX = atm.distance_to_slant_depth(np.deg2rad(e.zenith),X,zgr)
x = np.linspace(-wx,wx,Nx)
y = np.linspace(-wy,wy,Ny)
xx = []
yy = []
p = []
locs = []
for x_ in x:
for y_ in y:
loc = (x_+xoff)* e.uAxB + (y_+yoff)*e.uAxAxB + dX *e.uA
locs.append(loc)
P,t_,pulses_,wav,twav = pow_and_time(loc,e)
xx.append(x_+xoff)
yy.append(y_+yoff)
p.append(P)
xx = np.asarray(xx)
yy = np.asarray(yy)
p = np.asanyarray(p)
return xx,yy,p,locs[np.argmax(p)]
def slice_figure(e,X,xx,yy,p,mode='horizontal'):
fig, axs = plt.subplots(1,figsize=(10,8))
fig.suptitle(r'E = %.1f EeV, $\theta$ = %.1f$^\circ$, $\phi$ = %.1f$^\circ$ X = %.f'%(e.energy,e.zenith,e.azimuth,X))
sc = axs.scatter(xx/1e3,yy/1e3,c=p,cmap='Spectral_r',alpha=0.6)
fig.colorbar(sc,ax=axs)
zgr = 1400 + e.core[2]
dX = atm.distance_to_slant_depth(np.deg2rad(e.zenith),X,zgr)
xc = np.sin(np.deg2rad(e.zenith))*np.cos(np.deg2rad(e.azimuth))* dX
yc = np.sin(np.deg2rad(e.zenith))*np.sin(np.deg2rad(e.azimuth))* dX
if mode == 'horizontal':
axs.plot(xc/1e3,yc/1e3,'r+',ms=30)
axs.set_xlabel('x (km)')
axs.set_ylabel('y (km)')
elif mode == "sp":
axs.plot(0,0,'r+',ms=30)
axs.set_xlabel('-v x B (km)')
axs.set_ylabel(' vxvxB (km)')
im = np.argmax(p)
axs.plot(xx[im]/1e3,yy[im]/1e3,'bx',ms=30)
fig.tight_layout()
return fig,axs
def dist_to_line(xp,core,u):
xp = np.array(xp)
xp_core = xp-core
c2 = np.dot(xp_core,xp_core)
a2 = np.dot((np.dot(xp_core,u)*u),(np.dot(xp_core,u)*u))
d = (np.abs(c2 - a2))**0.5
return d
def dist_to_line_sum(param,data,weights):
#distance line point: a = xp-core is D= | (a)^2-(a dot n)n |
#where ux is direction of line and x0 is a point in the line (like t = 0)
x0 = param[0]
y0 = param[1]
theta = param[2]
phi = param[3]
core = np.array([x0, y0, 0.])
u = np.array([np.cos(phi)*np.sin(theta),np.sin(phi)*np.sin(theta),np.cos(theta)])
dsum = 0
for xp,w in zip(data,weights):
dsum += dist_to_line(xp,core,u)*w**2
# print('%.2e %.2e %.2e %.2e %.2e'%(x0,y0,theta,phi,dsum))
return dsum/len(data)
def get_axis_points(e,savefig=True,path="",zgr=1400):
axis_points = []
max_vals = []
Xsteps = np.linspace(300,1000,15)
zgr=zgr+e.core[2] #not exact
dXref = atm.distance_to_slant_depth(np.deg2rad(e.zenith),750,zgr)
scale2d = dXref*np.tan(np.deg2rad(2.))
scale4d = dXref*np.tan(np.deg2rad(4.))
scale0_2d=dXref*np.tan(np.deg2rad(0.2))
for X in Xsteps:
print(X)
x,y,p,loc_max = shower_plane_slice(e,X,21,21,scale2d,scale2d)
if savefig:
fig,axs = slice_figure(e,X,x,y,p,'sp')
fig.savefig(path+'X%d_a.pdf'%(X))
plt.close(fig)
im = np.argmax(p)
if np.abs(x[im]) == np.max(x) or np.abs(y[im]) == (np.max(y)):
x,y,p,loc_max = shower_plane_slice(e,X,21,21,scale4d,scale4d)
if savefig:
fig,axs = slice_figure(e,X,x,y,p,'sp')
fig.savefig(path+'X%d_c.pdf'%(X))
plt.close(fig)
im = np.argmax(p)
x,y,p,loc_max = shower_plane_slice(e,X,21,21,scale0_2d,scale0_2d,x[im],y[im])
if savefig:
fig,axs = slice_figure(e,X,x,y,p,'sp')
fig.savefig(path+'X%d_b.pdf'%(X))
plt.close(fig)
max_vals.append(np.max(p))
axis_points.append(loc_max)
return Xsteps,axis_points,max_vals
def fit_track(e,axis_points,vals,nscale=1e0):
weights = vals/np.max(vals)
data=axis_points[:]
data = [d/nscale for d in data] #km, to have more comparable step sizes
x0=[0,0,np.deg2rad(e.zenith),np.deg2rad(e.azimuth)]
res = minimize(dist_to_line_sum,args=(data,weights),x0=x0)
zen_r = np.rad2deg(res.x[2])
azi_r = np.rad2deg(res.x[3])
print(res,zen_r,e.zenith,azi_r,e.azimuth)
return zen_r,azi_r,[res.x[0]*nscale,res.x[1]*nscale,0]
def update_event(e,core,theta,phi,axp=None):
#recalculate
e.zenith = theta
e.azimuth = phi
theta = np.deg2rad(theta)
phi = np.deg2rad(phi)
e.core = e.core+core
e.uA = np.array([np.cos(phi)*np.sin(theta),np.sin(phi)*np.sin(theta),np.cos(theta)])
e.uAxB = np.cross(e.uA,e.uB)
e.uAxB = e.uAxB/(np.dot(e.uAxB,e.uAxB))**0.5
e.uAxAxB = np.cross(e.uA,e.uAxB)
#antenna position
for a in e.antennas:
a.x -= core[0]
a.y -= core[1]
a.z -= core[2]
if axp != None:
for ap in axp:
ap[0] -= core[0]
ap[1] -= core[1]
ap[2] -= core[2]
def longitudinal_figure(dist,Xs,p,mode='grammage'):
fig, axs = plt.subplots(1,figsize=(6,5))
if mode=='grammage':
axs.plot(Xs,p/np.max(p),'o-')
axs.set_xlabel('X (g/cm$^2$)')
if mode=='distance':
axs.plot(dist/1e3,p/np.max(p),'o-')
axs.set_xlabel('distance from ground (km)')
axs.grid()
fig.tight_layout()
return fig
def time_residuals(e,tlable=True):
ds,tp,nsum,ssum,swidth,azi,x,y,sid = lateral_parameters(e,True,[0,0,0])
fig, axs = plt.subplots(1,figsize=(6,5),sharex=True)
tp = tp-np.min(tp)
cut_outlier = ~((ds<200)&(tp > 10))
axs.plot(ds,tp,'o')
if tlable:
for d,t,s in zip(ds,tp,sid):
plt.text(d,t,s)
# axs.text(ds,tp,sid)
axs.set_xlabel('distance (m)')
axs.set_ylabel('$\Delta t (ns)$')
axs.grid()
z = np.polyfit(ds[cut_outlier],tp[cut_outlier],3)
pfit = np.poly1d(z)
xfit = np.linspace(np.min(ds),np.max(ds),100)
yfit = pfit(xfit)
tres = tp - pfit(ds)
sigma =np.std(tres[cut_outlier])
axs.plot(xfit,yfit,label=r'pol3 fit, $\sigma=%.2f$ (ns)'%(sigma))
axs.legend()
fig.tight_layout()
return fig,tres
def figure_3D(axis_points,max_vals,zen,azi,core,res = 0):
fig = plt.figure(figsize=(5,9))
# fig, axs = plt.subplots(1,2,figsize=(12,8))
ax = fig.add_subplot(2,1,1,projection='3d')
xp = [ap[0]/1e3 for ap in axis_points]
yp = [ap[1]/1e3 for ap in axis_points]
zp = [ap[2]/1e3 for ap in axis_points]
max_vals = np.asarray(max_vals)
ax.scatter(xp, yp, zp,c=max_vals,s=150*(max_vals/np.max(max_vals))**2,cmap='Spectral_r')
ax = fig.add_subplot(2,1,2)
core = np.array(core)
theta = np.deg2rad(zen)
phi = np.deg2rad(azi)
u = np.array([np.cos(phi)*np.sin(theta),np.sin(phi)*np.sin(theta),np.cos(theta)])
residuals = [dist_to_line(ap,core,u) for ap in axis_points]
dist = [np.sum((ap-core)**2)**0.5 for ap in axis_points]
ax.scatter(dist,residuals,c=max_vals,cmap='Spectral_r')
ax.grid()
# ax.plot(xl,yl,zl,'-')
# ax.set_zlim(0,18)
# ax.view_init(15, 10)
fig.tight_layout()
if res != 0:
res.track_dis.append(dist)
res.track_res.append(residuals)
res.track_val.append(max_vals)
return fig
class RITResult():
"""docstring for RITResult."""
def __init__(self):
super(RITResult, self).__init__()
self.xmax_rit = []
self.xmax = []
self.profile_rit = []
self.dX = []
self.dl = []
self.zenith_ini = []
self.azimuth_ini = []
self.core_ini = []
self.dcore_rec = []
self.zenith_rec = []
self.azimuth_rec = []
self.index = []
self.isMC = []
self.track_dis = []
self.track_res =[]
self.track_val =[]
self.station_ids =[]
self.station_x =[]
self.station_y =[]
self.station_z =[]
self.station_maxE = []
self.has_pulse = []
def fill_stations_propeties(e,res):
x = np.array([a.x for a in e.antennas])
y = np.array([a.y for a in e.antennas])
z = np.array([a.z for a in e.antennas])
ids = [a.name for a in e.antennas]
maxE = np.array([np.max(a.E_AxB) for a in e.antennas])
has_pulse = np.array([np.max(a.has_pulse) for a in e.antennas])
res.station_x.append(x)
res.station_y.append(y)
res.station_z.append(z)
res.station_ids.append(ids)
res.has_pulse.append(has_pulse)
def reconstruction(e,outfile=''):
res = RITResult()
res.isMC.append(True)
res.zenith_ini.append(e.zenith)
res.azimuth_ini.append(e.azimuth)
res.core_ini.append(e.core)
set_pol_and_bp(e)
#only use signal that have a signal in data
fill_stations_propeties(e,res)
Xs,axis_points,max_vals = get_axis_points(e,False)
zen,azi,core = fit_track(e,axis_points,max_vals,1e2)
fig = figure_3D(axis_points,max_vals,zen,azi,core,res)
fig.savefig(outfile)
update_event(e,core,zen,azi)
ds,Xs,locs,p = shower_axis_slice(e)
#result
res.dX.append(Xs)
res.dl.append(ds)
res.profile_rit.append(p)
res.xmax_rit.append(Xs[np.argmax(p)])
res.azimuth_rec.append(e.azimuth)
res.zenith_rec.append(e.zenith)
res.dcore_rec.append(core)
return res