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# Gradio app that takes seismic waveform as input and marks 2 phases on the waveform as output.

import gradio as gr
import numpy as np
import pandas as pd
from phasehunter.data_preparation import prepare_waveform
import torch
import io

from scipy.stats import gaussian_kde
from bmi_topography import Topography
import earthpy.spatial as es

import obspy
from obspy.clients.fdsn import Client
from obspy.clients.fdsn.header import (
    FDSNNoDataException,
    FDSNTimeoutException,
    FDSNInternalServerException,
)
from obspy.geodetics.base import locations2degrees
from obspy.taup import TauPyModel
from obspy.taup.helper_classes import SlownessModelError

from obspy.clients.fdsn.header import URL_MAPPINGS

import matplotlib.pyplot as plt
import matplotlib.dates as mdates
from mpl_toolkits.axes_grid1 import ImageGrid

from glob import glob


def make_prediction(waveform):
    waveform = np.load(waveform)
    if len(waveform.shape) == 1:
        waveform = waveform.reshape(1, waveform.shape[0])

    processed_input = prepare_waveform(waveform)

    # Make prediction
    with torch.inference_mode():
        output = model(processed_input)

    p_phase = output[:, 0]
    s_phase = output[:, 1]

    return processed_input, p_phase, s_phase


def mark_phases(waveform, uploaded_file, p_thres, s_thres):

    if uploaded_file is not None:
        waveform = uploaded_file.name

    processed_input, p_phase, s_phase = make_prediction(waveform)

    # Create a plot of the waveform with the phases marked
    if sum(processed_input[0][2] == 0):  # if input is 1C
        fig, ax = plt.subplots(nrows=2, figsize=(10, 2), sharex=True)

        ax[0].plot(processed_input[0][0], color="black", lw=1)
        ax[0].set_ylabel("Norm. Ampl.")

    else:  # if input is 3C
        fig, ax = plt.subplots(nrows=4, figsize=(10, 6), sharex=True)
        ax[0].plot(processed_input[0][0], color="black", lw=1)
        ax[1].plot(processed_input[0][1], color="black", lw=1)
        ax[2].plot(processed_input[0][2], color="black", lw=1)

        ax[0].set_ylabel("Z")
        ax[1].set_ylabel("N")
        ax[2].set_ylabel("E")

    print(p_phase.std().item() * 60)
    do_we_have_p = p_phase.std().item() * 60 < p_thres
    if do_we_have_p:
        p_phase_plot = p_phase * processed_input.shape[-1]
        p_kde = gaussian_kde(p_phase_plot)
        p_dist_space = np.linspace(min(p_phase_plot) - 10, max(p_phase_plot) + 10, 500)
        ax[-1].plot(p_dist_space, p_kde(p_dist_space), color="r")
    else:
        ax[-1].text(
            0.5,
            0.75,
            "No P phase detected",
            horizontalalignment="center",
            verticalalignment="center",
            transform=ax[-1].transAxes,
        )

    do_we_have_s = s_phase.std().item() * 60 < s_thres
    if do_we_have_s:
        s_phase_plot = s_phase * processed_input.shape[-1]
        s_kde = gaussian_kde(s_phase_plot)
        s_dist_space = np.linspace(min(s_phase_plot) - 10, max(s_phase_plot) + 10, 500)
        ax[-1].plot(s_dist_space, s_kde(s_dist_space), color="b")

        for a in ax:
            a.axvline(
                p_phase.mean() * processed_input.shape[-1],
                color="r",
                linestyle="--",
                label="P",
                alpha=do_we_have_p,
            )
            a.axvline(
                s_phase.mean() * processed_input.shape[-1],
                color="b",
                linestyle="--",
                label="S",
                alpha=do_we_have_s,
            )
    else:
        ax[-1].text(
            0.5,
            0.25,
            "No S phase detected",
            horizontalalignment="center",
            verticalalignment="center",
            transform=ax[-1].transAxes,
        )

    ax[-1].set_xlabel("Time, samples")
    ax[-1].set_ylabel("Uncert., samples")
    ax[-1].legend()

    plt.subplots_adjust(hspace=0.0, wspace=0.0)

    # Convert the plot to an image and return it
    fig.canvas.draw()
    image = np.array(fig.canvas.renderer.buffer_rgba())
    plt.close(fig)
    return image


def bin_distances(distances, bin_size=10):
    # Bin the distances into groups of `bin_size` kilometers
    binned_distances = {}
    for i, distance in enumerate(distances):
        bin_index = distance // bin_size
        if bin_index not in binned_distances:
            binned_distances[bin_index] = (distance, i)
        elif i < binned_distances[bin_index][1]:
            binned_distances[bin_index] = (distance, i)

    # Select the first distance in each bin and its index
    first_distances = []
    for bin_index in binned_distances:
        first_distance, first_distance_index = binned_distances[bin_index]
        first_distances.append(first_distance_index)

    return first_distances


def variance_coefficient(residuals):
    # calculate the variance of the residuals
    var = residuals.var()
    # scale the variance to a coefficient between 0 and 1
    coeff = 1 - (var / (residuals.max() - residuals.min()))
    return coeff


def predict_on_section(
    client_name,
    timestamp,
    eq_lat,
    eq_lon,
    radius_km,
    source_depth_km,
    velocity_model,
    max_waveforms,
    conf_thres_P,
    conf_thres_S,
):
    distances, t0s, st_lats, st_lons, waveforms, names = [], [], [], [], [], []

    taup_model = TauPyModel(model=velocity_model)
    client = Client(client_name)

    window = radius_km / 111.2
    max_waveforms = int(max_waveforms)

    assert eq_lat - window > -90 and eq_lat + window < 90, "Latitude out of bounds"
    assert eq_lon - window > -180 and eq_lon + window < 180, "Longitude out of bounds"

    starttime = obspy.UTCDateTime(timestamp)
    endtime = starttime + 120

    try:
        print("Starting to download inventory")
        inv = client.get_stations(
            network="*",
            station="*",
            location="*",
            channel="*H*",
            starttime=starttime,
            endtime=endtime,
            minlatitude=(eq_lat - window),
            maxlatitude=(eq_lat + window),
            minlongitude=(eq_lon - window),
            maxlongitude=(eq_lon + window),
            level="station",
        )
        print("Finished downloading inventory")

    except (
        IndexError,
        FDSNNoDataException,
        FDSNTimeoutException,
        FDSNInternalServerException,
    ):
        fig, ax = plt.subplots()
        ax.text(0.5, 0.5, "Something is wrong with the data provider, try another")
        fig.canvas.draw()
        image = np.array(fig.canvas.renderer.buffer_rgba())
        plt.close(fig)
        return image

    waveforms = []
    cached_waveforms = glob("data/cached/*.mseed")

    for network in inv:
        if network.code == "SY":
            continue
        for station in network:
            print(f"Processing {network.code}.{station.code}...")
            distance = locations2degrees(
                eq_lat, eq_lon, station.latitude, station.longitude
            )

            arrivals = taup_model.get_travel_times(
                source_depth_in_km=source_depth_km,
                distance_in_degree=distance,
                phase_list=["P", "S"],
            )

            if len(arrivals) > 0:

                starttime = obspy.UTCDateTime(timestamp) + arrivals[0].time - 15
                endtime = starttime + 60
                try:
                    filename = f"{network.code}_{station.code}_{starttime}"
                    if f"data/cached/{filename}.mseed" not in cached_waveforms:
                        print(f"Downloading waveform for {filename}")
                        waveform = client.get_waveforms(
                            network=network.code,
                            station=station.code,
                            location="*",
                            channel="*",
                            starttime=starttime,
                            endtime=endtime,
                        )
                        waveform.write(
                            f"data/cached/{network.code}_{station.code}_{starttime}.mseed",
                            format="MSEED",
                        )
                        print("Finished downloading and caching waveform")
                    else:
                        print("Reading cached waveform")
                        waveform = obspy.read(
                            f"data/cached/{network.code}_{station.code}_{starttime}.mseed"
                        )

                except (
                    IndexError,
                    FDSNNoDataException,
                    FDSNTimeoutException,
                    FDSNInternalServerException,
                ):
                    print(f"Skipping {network.code}_{station.code}_{starttime}")
                    continue

                waveform = waveform.select(channel="H[BH][ZNE]")
                waveform = waveform.merge(fill_value=0)
                waveform = waveform[:3].sort(keys=["channel"], reverse=True)

                len_check = [len(x.data) for x in waveform]
                if len(set(len_check)) > 1:
                    continue

                if len(waveform) == 3:
                    try:
                        waveform = prepare_waveform(
                            np.stack([x.data for x in waveform])
                        )

                        distances.append(distance)
                        t0s.append(starttime)
                        st_lats.append(station.latitude)
                        st_lons.append(station.longitude)
                        waveforms.append(waveform)
                        names.append(f"{network.code}.{station.code}")

                        print(
                            f"Added {network.code}.{station.code} to the list of waveforms"
                        )

                    except:
                        continue

    # If there are no waveforms, return an empty plot
    if len(waveforms) == 0:
        print("No waveforms found")
        fig, ax = plt.subplots()
        ax.text(0.5, 0.5, "No waveforms found")
        fig.canvas.draw()
        image = np.array(fig.canvas.renderer.buffer_rgba())
        plt.close(fig)
        output_picks = pd.DataFrame()
        output_picks.to_csv("data/picks.csv", index=False)
        output_csv = "data/picks.csv"
        return image, output_picks, output_csv

    first_distances = bin_distances(distances, bin_size=10 / 111.2)

    # Edge case when there are way too many waveforms to process
    selection_indexes = np.random.choice(
        first_distances, np.min([len(first_distances), max_waveforms]), replace=False
    )

    waveforms = np.array(waveforms)[selection_indexes]
    distances = np.array(distances)[selection_indexes]
    t0s = np.array(t0s)[selection_indexes]
    st_lats = np.array(st_lats)[selection_indexes]
    st_lons = np.array(st_lons)[selection_indexes]
    names = np.array(names)[selection_indexes]

    waveforms = [torch.tensor(waveform) for waveform in waveforms]

    print("Starting to run predictions")
    with torch.no_grad():
        waveforms_torch = torch.vstack(waveforms)
        output = model(waveforms_torch)

    p_phases = output[:, 0]
    s_phases = output[:, 1]

    p_phases = p_phases.reshape(len(waveforms), -1)
    s_phases = s_phases.reshape(len(waveforms), -1)

    # Max confidence - min variance
    p_max_confidence = p_phases.std(axis=-1).min()
    s_max_confidence = s_phases.std(axis=-1).min()

    print(f"Starting plotting {len(waveforms)} waveforms")
    fig, ax = plt.subplots(ncols=3, figsize=(10, 3))

    # Plot topography
    print("Fetching topography")
    params = Topography.DEFAULT.copy()
    extra_window = 0.5
    params["south"] = np.min([st_lats.min(), eq_lat]) - extra_window
    params["north"] = np.max([st_lats.max(), eq_lat]) + extra_window
    params["west"] = np.min([st_lons.min(), eq_lon]) - extra_window
    params["east"] = np.max([st_lons.max(), eq_lon]) + extra_window

    topo_map = Topography(**params)
    topo_map.fetch()
    topo_map.load()

    print("Plotting topo")
    hillshade = es.hillshade(topo_map.da[0], altitude=10)

    topo_map.da.plot(ax=ax[1], cmap="Greys", add_colorbar=False, add_labels=False)
    topo_map.da.plot(ax=ax[2], cmap="Greys", add_colorbar=False, add_labels=False)
    ax[1].imshow(hillshade, cmap="Greys", alpha=0.5)

    output_picks = pd.DataFrame(
        {
            "station_name": [],
            "st_lat": [],
            "st_lon": [],
            "starttime": [],
            "p_phase, s": [],
            "p_uncertainty, s": [],
            "s_phase, s": [],
            "s_uncertainty, s": [],
            "velocity_p, km/s": [],
            "velocity_s, km/s": [],
        }
    )

    for i in range(len(waveforms)):
        print(f"Plotting waveform {i+1}/{len(waveforms)}")
        current_P = p_phases[i]
        current_S = s_phases[i]

        x = [t0s[i] + pd.Timedelta(seconds=k / 100) for k in np.linspace(0, 6000, 6000)]
        x = mdates.date2num(x)

        # Normalize confidence for the plot
        p_conf = 1 / (current_P.std() / p_max_confidence).item()
        s_conf = 1 / (current_S.std() / s_max_confidence).item()

        delta_t = t0s[i].timestamp - obspy.UTCDateTime(timestamp).timestamp

        ax[0].plot(
            x,
            waveforms[i][0, 0] * 10 + distances[i] * 111.2,
            color="black",
            alpha=0.5,
            lw=1,
        )

        if (current_P.std().item() * 60 < conf_thres_P) or (
            current_S.std().item() * 60 < conf_thres_S
        ):
            ax[0].scatter(
                x[int(current_P.mean() * waveforms[i][0].shape[-1])],
                waveforms[i][0, 0].mean() + distances[i] * 111.2,
                color="r",
                alpha=p_conf,
                marker="|",
            )
            ax[0].scatter(
                x[int(current_S.mean() * waveforms[i][0].shape[-1])],
                waveforms[i][0, 0].mean() + distances[i] * 111.2,
                color="b",
                alpha=s_conf,
                marker="|",
            )

            velocity_p = (distances[i] * 111.2) / (
                delta_t + current_P.mean() * 60
            ).item()
            velocity_s = (distances[i] * 111.2) / (
                delta_t + current_S.mean() * 60
            ).item()

            # Generate an array from st_lat to eq_lat and from st_lon to eq_lon
            x = np.linspace(st_lons[i], eq_lon, 50)
            y = np.linspace(st_lats[i], eq_lat, 50)

            # Plot the array
            ax[1].scatter(
                x, y, c=np.zeros_like(x) + velocity_p, alpha=0.1, vmin=0, vmax=8
            )
            ax[2].scatter(
                x, y, c=np.zeros_like(x) + velocity_s, alpha=0.1, vmin=0, vmax=8
            )

        else:
            velocity_p = np.nan
            velocity_s = np.nan

        ax[0].set_ylabel("Z")
        print(
            f"Station {st_lats[i]}, {st_lons[i]} has P velocity {velocity_p} and S velocity {velocity_s}"
        )

        output_picks = output_picks.append(
            pd.DataFrame(
                {
                    "station_name": [names[i]],
                    "st_lat": [st_lats[i]],
                    "st_lon": [st_lons[i]],
                    "starttime": [str(t0s[i])],
                    "p_phase, s": [(delta_t + current_P.mean() * 60).item()],
                    "p_uncertainty, s": [current_P.std().item() * 60],
                    "s_phase, s": [(delta_t + current_S.mean() * 60).item()],
                    "s_uncertainty, s": [current_S.std().item() * 60],
                    "velocity_p, km/s": [velocity_p],
                    "velocity_s, km/s": [velocity_s],
                }
            )
        )

    # Add legend
    ax[0].scatter(None, None, color="r", marker="|", label="P")
    ax[0].scatter(None, None, color="b", marker="|", label="S")
    ax[0].xaxis.set_major_formatter(mdates.DateFormatter("%H:%M:%S"))
    ax[0].xaxis.set_major_locator(mdates.SecondLocator(interval=20))
    ax[0].legend()

    print("Plotting stations")
    for i in range(1, 3):
        ax[i].scatter(st_lons, st_lats, color="b", label="Stations")
        ax[i].scatter(eq_lon, eq_lat, color="r", marker="*", label="Earthquake")
        ax[i].set_aspect("equal")
        ax[i].set_xticklabels(ax[i].get_xticks(), rotation=50)

    fig.subplots_adjust(
        bottom=0.1, top=0.9, left=0.1, right=0.8, wspace=0.02, hspace=0.02
    )

    cb_ax = fig.add_axes([0.83, 0.1, 0.02, 0.8])
    cbar = fig.colorbar(
        ax[2].scatter(None, None, c=velocity_p, alpha=0.5, vmin=0, vmax=8), cax=cb_ax
    )

    cbar.set_label("Velocity (km/s)")
    ax[1].set_title("P Velocity")
    ax[2].set_title("S Velocity")

    for a in ax:
        a.tick_params(axis="both", which="major", labelsize=8)

    plt.subplots_adjust(hspace=0.0, wspace=0.5)
    fig.canvas.draw()
    image = np.array(fig.canvas.renderer.buffer_rgba())
    plt.close(fig)
    output_picks.to_csv(
        f"data/velocity/{eq_lat}_{eq_lon}_{timestamp}_{len(waveforms)}.csv", index=False
    )
    output_csv = f"data/velocity/{eq_lat}_{eq_lon}_{timestamp}_{len(waveforms)}.csv"

    return image, output_picks, output_csv


model = torch.jit.load("model.pt")

with gr.Blocks() as demo:
    gr.HTML(
        """
<div style="padding: 20px; border-radius: 10px;">
    <h1 style="font-size: 30px; text-align: center; margin-bottom: 20px;">PhaseHunter <span style="animation: arrow-anim 10s linear infinite; display: inline-block; transform: rotate(45deg) translateX(-20px);">🏹</span>

<style>
    @keyframes arrow-anim {
        0% { transform: translateX(-20px); }
        50% { transform: translateX(20px); }
        100% { transform: translateX(-20px); }
    }
</style></h1> 
    
    <p style="font-size: 16px; margin-bottom: 20px;">Detect <span style="background-image: linear-gradient(to right, #ED213A, #93291E); 
    -webkit-background-clip: text;
    -webkit-text-fill-color: transparent;
    background-clip: text;">P</span> and <span style="background-image: linear-gradient(to right, #00B4DB, #0083B0); 
    -webkit-background-clip: text;
    -webkit-text-fill-color: transparent;
    background-clip: text;">S</span> seismic phases with <span style="background-image: linear-gradient(to right, #f12711, #f5af19); 
    -webkit-background-clip: text;
    -webkit-text-fill-color: transparent;
    background-clip: text;">uncertainty</span></p>
    <ul style="font-size: 16px; margin-bottom: 40px;">
        <li>Detect seismic phases by selecting a sample waveform or uploading your own waveform in <code>.npy</code> format.</li>
        <li>Select an earthquake from the global earthquake catalogue and PhaseHunter will analyze seismic stations in the given radius.</li>
        <li>Waveforms should be sampled at 100 samples/sec and have 3 (Z, N, E) or 1 (Z) channels. PhaseHunter analyzes the first 6000 samples of your file.</li>
    </ul>
</div>
"""
    )

    with gr.Tab("Try on a single station"):
        with gr.Row():
            # Define the input and output types for Gradio
            inputs = gr.Dropdown(
                [
                    "data/sample/sample_0.npy",
                    "data/sample/sample_1.npy",
                    "data/sample/sample_2.npy",
                ],
                label="Sample waveform",
                info="Select one of the samples",
                value="data/sample/sample_0.npy",
            )
            with gr.Column(scale=1):
                P_thres_inputs = gr.Slider(
                    minimum=0.01,
                    maximum=1,
                    value=0.1,
                    label="P uncertainty threshold, s",
                    step=0.01,
                    info="Acceptable uncertainty for P picks expressed in std() seconds",
                    interactive=True,
                )

                S_thres_inputs = gr.Slider(
                    minimum=0.01,
                    maximum=1,
                    value=0.2,
                    label="S uncertainty threshold, s",
                    step=0.01,
                    info="Acceptable uncertainty for S picks expressed in std() seconds",
                    interactive=True,
                )

            upload = gr.File(label="Or upload your own waveform")

        button = gr.Button("Predict phases")
        outputs = gr.Image(
            label="Waveform with Phases Marked", type="numpy", interactive=False
        )

        button.click(
            mark_phases,
            inputs=[inputs, upload, P_thres_inputs, S_thres_inputs],
            outputs=outputs,
        )

    with gr.Tab("Select earthquake from catalogue"):

        gr.HTML(
            """
        <div style="padding: 20px; border-radius: 10px; font-size: 16px;">
        <p style="font-weight: bold; font-size: 24px; margin-bottom: 20px;">Using PhaseHunter to Analyze Seismic Waveforms</p>
        <p>Select an earthquake from the global earthquake catalogue (e.g. <a href="https://earthquake.usgs.gov/earthquakes/map">USGS</a>) and the app will download the waveform from the FDSN client of your choice. The app will use a velocity model of your choice to select appropriate time windows for each station within a specified radius of the earthquake.</p>
        <p>The app will then analyze the waveforms and mark the detected phases on the waveform. Pick data for each waveform is reported in seconds from the start of the waveform.</p>
        <p>Velocities are derived from distance and travel time determined by PhaseHunter picks (<span style="font-style: italic;">v = distance/predicted_pick_time</span>). The background of the velocity plot is colored by DEM.</p>
        </div>
        """
        )
        with gr.Row():
            with gr.Column(scale=2):
                client_inputs = gr.Dropdown(
                    choices=list(URL_MAPPINGS.keys()),
                    label="FDSN Client",
                    info="Select one of the available FDSN clients",
                    value="IRIS",
                    interactive=True,
                )

                velocity_inputs = gr.Dropdown(
                    choices=[
                        "1066a",
                        "1066b",
                        "ak135",
                        "ak135f",
                        "herrin",
                        "iasp91",
                        "jb",
                        "prem",
                        "pwdk",
                    ],
                    label="1D velocity model",
                    info="Velocity model for station selection",
                    value="1066a",
                    interactive=True,
                )

            with gr.Column(scale=2):
                timestamp_inputs = gr.Textbox(
                    value="2019-07-04 17:33:49",
                    placeholder="YYYY-MM-DD HH:MM:SS",
                    label="Timestamp",
                    info="Timestamp of the earthquake",
                    max_lines=1,
                    interactive=True,
                )

                source_depth_inputs = gr.Number(
                    value=10,
                    label="Source depth (km)",
                    info="Depth of the earthquake",
                    interactive=True,
                )

            with gr.Column(scale=2):
                eq_lat_inputs = gr.Number(
                    value=35.766,
                    label="Latitude",
                    info="Latitude of the earthquake",
                    interactive=True,
                )

                eq_lon_inputs = gr.Number(
                    value=-117.605,
                    label="Longitude",
                    info="Longitude of the earthquake",
                    interactive=True,
                )

            with gr.Column(scale=2):
                radius_inputs = gr.Slider(
                    minimum=1,
                    maximum=200,
                    value=50,
                    label="Radius (km)",
                    step=10,
                    info="""Select the radius around the earthquake to download data from.\n 
                                        Note that the larger the radius, the longer the app will take to run.""",
                    interactive=True,
                )

                max_waveforms_inputs = gr.Slider(
                    minimum=1,
                    maximum=100,
                    value=10,
                    label="Max waveforms per section",
                    step=1,
                    info="Maximum number of waveforms to show per section\n (to avoid long prediction times)",
                    interactive=True,
                )
            with gr.Column(scale=2):
                P_thres_inputs = gr.Slider(
                    minimum=0.01,
                    maximum=1,
                    value=0.1,
                    label="P uncertainty threshold, s",
                    step=0.01,
                    info="Acceptable uncertainty for P picks expressed in std() seconds",
                    interactive=True,
                )
                S_thres_inputs = gr.Slider(
                    minimum=0.01,
                    maximum=1,
                    value=0.2,
                    label="S uncertainty threshold, s",
                    step=0.01,
                    info="Acceptable uncertainty for S picks expressed in std() seconds",
                    interactive=True,
                )

        button = gr.Button("Predict phases")
        output_image = gr.Image(
            label="Waveforms with Phases Marked", type="numpy", interactive=False
        )

        with gr.Row():
            output_picks = gr.Dataframe(
                label="Pick data", type="pandas", interactive=False
            )
            output_csv = gr.File(label="Output File", file_types=[".csv"])

        button.click(
            predict_on_section,
            inputs=[
                client_inputs,
                timestamp_inputs,
                eq_lat_inputs,
                eq_lon_inputs,
                radius_inputs,
                source_depth_inputs,
                velocity_inputs,
                max_waveforms_inputs,
                P_thres_inputs,
                S_thres_inputs,
            ],
            outputs=[output_image, output_picks, output_csv],
        )

demo.launch()