1
Fork 0
internship/swash/processing/post.py

101 lines
2.6 KiB
Python
Raw Normal View History

2022-03-02 14:25:53 +01:00
import configparser
import pathlib
2022-03-03 11:27:22 +01:00
import argparse
import logging
2022-03-02 14:25:53 +01:00
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
import scipy.signal as sgl
2022-03-02 14:25:53 +01:00
from .read_swash import *
2022-03-03 11:27:53 +01:00
parser = argparse.ArgumentParser(description="Post-process swash output")
2022-03-03 11:27:22 +01:00
parser.add_argument("-v", "--verbose", action="count", default=0)
args = parser.parse_args()
logging.basicConfig(level=max((10, 20 - 10 * args.verbose)))
log = logging.getLogger("post")
log.info("Starting post-processing")
2022-03-02 14:25:53 +01:00
config = configparser.ConfigParser()
config.read("config.ini")
2022-03-03 10:58:49 +01:00
cache = pathlib.Path(config.get("data", "out"))
2022-03-02 14:25:53 +01:00
root = pathlib.Path(config.get("swash", "out"))
2022-03-03 11:27:22 +01:00
log.info(f"Reading bathymetry from '{cache}'")
2022-03-02 14:25:53 +01:00
bathy = pd.read_hdf(cache.joinpath("bathy.h5"), "bathy")
n = bathy.index.size
2022-03-03 11:27:22 +01:00
log.info(f"Reading swash output from '{root}'")
2022-03-02 14:25:53 +01:00
botl = read_nohead_scalar(root.joinpath("botl.dat"), n)
2022-03-02 15:52:46 +01:00
dep = np.maximum(0, read_nohead_scalar(root.joinpath("dep.dat"), n))
vel = read_nohead_vect(root.joinpath("vel.dat"), n)
2022-03-02 15:52:46 +01:00
2022-03-03 15:15:53 +01:00
dt = config.getfloat("post", "dt")
n_t = botl.shape[0]
2022-03-03 15:19:30 +01:00
t = np.arange(0, n_t * dt, dt)
# Cospectral calculations
2022-03-03 11:27:22 +01:00
pos_x = config.getint("post", "x0")
2022-03-03 15:19:30 +01:00
t0 = config.getint("post", "t0")
2022-03-03 15:15:53 +01:00
f = 1 / dt
2022-03-03 11:27:22 +01:00
log.info(f"Computing reflection coefficient at x={pos_x}")
2022-03-03 15:19:30 +01:00
eta = (dep - botl)[t > t0, pos_x]
u = vel[t > t0, 0, pos_x]
2022-03-03 11:16:40 +01:00
phi_eta = np.abs(sgl.csd(eta, eta, f))
phi_u = np.abs(sgl.csd(u, u, f))
phi_eta_u = np.abs(sgl.csd(eta, u, f))
2022-03-03 11:16:40 +01:00
R = np.sqrt(
(phi_eta[1] + phi_u[1] - 2 * phi_eta_u[1])
/ (phi_eta[1] + phi_u[1] + 2 * phi_eta_u[1])
)
# Plotting
2022-03-03 11:27:22 +01:00
log.info("Plotting results")
fig, (ax_dep, ax_vel) = plt.subplots(2)
2022-03-03 15:19:30 +01:00
ax_dep.plot(t, (dep - botl)[:, pos_x], label="dep")
ax_dep.set(xlabel="t (s)", ylabel="z (m)")
2022-03-03 11:16:40 +01:00
ax_dep.autoscale(axis="x", tight=True)
ax_dep.grid()
2022-03-03 15:23:05 +01:00
ax_dep.axvline(t0, c='k', alpha=.2)
2022-03-03 15:15:53 +01:00
ax_vel.plot(t, vel[:, 0, pos_x], label="vel")
ax_vel.set(xlabel="t (s)", ylabel="U (m/s)")
2022-03-03 11:16:40 +01:00
ax_vel.autoscale(axis="x", tight=True)
ax_vel.grid()
2022-03-03 15:23:05 +01:00
ax_vel.axvline(t0, c='k', alpha=.2)
fig.tight_layout()
fig_r, ax_r = plt.subplots()
2022-03-03 11:16:40 +01:00
ax_r.plot(phi_eta[0], R)
ax_r.autoscale(axis="x", tight=True)
ax_r.set(ylim=(0, 1), xlabel="f (Hz)", ylabel="R")
ax_r.grid()
2022-03-03 15:23:05 +01:00
fig_x, ax_x = plt.subplots()
ax_x.plot(bathy.index, botl[0, :], color='k')
ax_x.plot(bathy.index, (dep-botl)[t == t0, :])
ax_x.axvline(x0)
ax_x.set(xlabel="x (m)", ylabel="z (m)")
ax_x.autoscale(axis="x", tight=True)
ax_x.grid()
2022-03-03 11:16:40 +01:00
out = pathlib.Path(config.get("post", "out"))
2022-03-03 11:27:22 +01:00
log.info(f"Saving plots in '{out}'")
2022-03-03 11:16:40 +01:00
out.mkdir(exist_ok=True)
2022-03-03 15:23:05 +01:00
fig.savefig(out.joinpath(f"t{pos_x}.png"))
2022-03-03 11:16:40 +01:00
fig_r.savefig(out.joinpath(f"R{pos_x}.png"))
2022-03-03 15:23:05 +01:00
fig_x.savefig(out.joinpath(f"x{pos_x}.png"))
2022-03-03 11:27:22 +01:00
log.info("Finished post-processing")