erp-gpt-eu / plot_utils.py
Kuangdai
Initial release of ERP-GPT-EU
b8bc5ba
import os
import re
from typing import List, Tuple, Literal
import cartopy.crs as ccrs
import cartopy.feature as cfeature
import geopandas as gpd
import matplotlib
matplotlib.use("Agg") # Use non-GUI backend for image generation
import matplotlib.pyplot as plt
import numpy as np
from matplotlib.colors import ListedColormap
from gadm_utils import GADMHandler
def get_boundingbox(lats: np.ndarray, lons: np.ndarray) -> tuple[float, float, float, float]:
"""
Compute the bounding box of a set of latitudes and longitudes,
returning in Nominatim convention: (lat_min, lat_max, lon_min, lon_max).
Handles wraparound at the 0/360 meridian for longitudes.
"""
lat_min, lat_max = lats.min(), lats.max()
lons_360 = np.mod(lons, 360)
span_regular = lons.max() - lons.min()
span_wrapped = lons_360.max() - lons_360.min()
lons_used = lons_360 if span_wrapped < span_regular else lons
lon_min, lon_max = lons_used.min(), lons_used.max()
return lat_min, lat_max, lon_min, lon_max
def scatter_plot(gadm_handler: GADMHandler,
data: np.ndarray = None, is_categorical: bool = None,
short_name: str = "plot", long_name: str = "", save_dir: str = "plots",
session_name: str = None, cmap_float: str = "turbo", cmap_str: str = "tab20",
scatter_size: float | Literal["auto"] = "auto",
map_boundary_gadm_gids: List[str] = None,
map_limits: Tuple[float, float, float, float] | Literal["data", "gadm_all", "gadm_first"] = "data",
map_margin_ratio: float = 0.2,
map_borders: bool = False, map_coastline: bool = False) -> str:
"""
Generate a scatter plot with optional GADM boundaries and save to file.
"""
# Validate and prepare data
if data is not None:
if data.ndim != 2 or data.shape[1] != 3:
raise ValueError("`data` must be an Nx3 array: [lat, lon, value].")
lats, lons, values = data[:, 0], data[:, 1], data[:, 2]
else:
lats = lons = values = np.array([])
has_data = data is not None and len(data) > 0
# Fail early if nothing to plot
if not has_data and not map_boundary_gadm_gids:
raise ValueError("Nothing to plot: both `data` and `map_boundary_gadm_gids` are empty.")
# Determine map limits
if map_limits == "data":
if not has_data:
raise ValueError("`map_limits='data'` requires `data` to be provided.")
lat0, lat1, lon0, lon1 = get_boundingbox(lats, lons)
elif "gadm" in map_limits:
if not map_boundary_gadm_gids:
raise ValueError("`map_boundary_gadm_gids` is required for GADM-based limits.")
all_lats, all_lons = [], []
index_for_limits = 1 if map_limits == "gadm_first" else len(map_boundary_gadm_gids)
for gid in map_boundary_gadm_gids[:index_for_limits]:
polygon = gadm_handler.get_polygon(gid)
if polygon is not None:
min_x, min_y, max_x, max_y = polygon.bounds
all_lons.extend([min_x, max_x])
all_lats.extend([min_y, max_y])
lat0, lat1, lon0, lon1 = get_boundingbox(np.array(all_lats), np.array(all_lons))
else:
lat0, lat1, lon0, lon1 = map_limits
# If data exists, expand map extent so scatter points are always visible
if has_data:
data_lat0 = float(np.min(lats))
data_lat1 = float(np.max(lats))
data_lon0 = float(np.min(lons))
data_lon1 = float(np.max(lons))
lat0 = min(lat0, data_lat0)
lat1 = max(lat1, data_lat1)
lon0 = min(lon0, data_lon0)
lon1 = max(lon1, data_lon1)
# Add margins
if isinstance(map_limits, str):
dlat = (lat1 - lat0) * map_margin_ratio or 1.0
dlon = (lon1 - lon0) * map_margin_ratio or 1.0
lat0, lat1 = lat0 - dlat, lat1 + dlat
lon0, lon1 = lon0 - dlon, lon1 + dlon
# Setup figure
base = 6
width = lon1 - lon0
height = lat1 - lat0
plt.figure(figsize=(base * (width / height), base), dpi=200)
ax = plt.axes(projection=ccrs.PlateCarree())
ax.set_extent([lon0, lon1, lat0, lat1], crs=ccrs.PlateCarree())
ax.set_aspect("equal", adjustable="box")
tick_font = 8 if has_data else 10
title_font = 10 if has_data else 12
# Gridlines
gl = ax.gridlines(draw_labels=True, linewidth=0.3, color='gray', alpha=0.7, linestyle='--')
gl.top_labels = False
gl.right_labels = False
gl.xlabel_style = {'size': tick_font}
gl.ylabel_style = {'size': tick_font}
# Base map
if map_coastline:
ax.add_feature(cfeature.COASTLINE, linewidth=1.0, color="k")
if map_borders:
ax.add_feature(cfeature.BORDERS, linewidth=0.8, color="k")
ax.add_feature(cfeature.LAND, facecolor="ivory")
ax.add_feature(cfeature.OCEAN, facecolor="lightblue")
# GADM boundaries
if map_boundary_gadm_gids:
for gid in map_boundary_gadm_gids:
polygon = gadm_handler.get_polygon(gid)
if polygon is not None:
gpd.GeoSeries([polygon]).plot(ax=ax, facecolor='none', edgecolor='gray', linewidth=0.3)
if map_limits == "gadm_first":
gid = map_boundary_gadm_gids[0]
polygon = gadm_handler.get_polygon(gid)
if polygon is not None:
gpd.GeoSeries([polygon]).plot(ax=ax, facecolor='none', edgecolor='black', linewidth=0.6)
info = gadm_handler.get_full_info(gid)
if info:
lat_c = info["geometry"]["latitude"]
lon_c = info["geometry"]["longitude"]
name = info["full_name"].split(";")[0]
plt.text(lon_c, lat_c, name, fontsize=tick_font, ha="center", va="center")
# Scatter plot
if has_data:
if scatter_size == "auto":
count = len(lats)
base_size = 40
scatter_size = base_size / (np.log10(count + 1) + 1)
scatter_size = np.clip(scatter_size, 5, 30)
if is_categorical is None:
is_categorical = np.issubdtype(values.dtype, np.str_)
rasterize = len(lats) > 10000
if is_categorical:
categories, values_encoded = np.unique(values.astype(str), return_inverse=True)
num_categories = len(categories)
cmap_base = plt.get_cmap(cmap_str)
if hasattr(cmap_base, 'colors'):
cmap_colors = cmap_base.colors[:num_categories]
cmap_used = ListedColormap(cmap_colors)
else:
cmap_used = cmap_base
sc = ax.scatter(lons, lats, c=values_encoded, cmap=cmap_used, s=scatter_size,
linewidth=0.0, transform=ccrs.PlateCarree(), zorder=2,
rasterized=rasterize, edgecolors='none')
single_color_width = (num_categories - 1) / num_categories
cbar = plt.colorbar(sc, ax=ax, orientation='vertical', shrink=0.6,
ticks=np.linspace(single_color_width / 2,
num_categories - 1 - single_color_width / 2,
num_categories))
cbar.ax.set_yticklabels(categories)
cbar.set_label(long_name, fontsize=tick_font)
cbar.ax.tick_params(labelsize=tick_font)
else:
try:
vmin = float(np.percentile(values, 1))
vmax = float(np.percentile(values, 99))
except Exception: # noqa
vmin = vmax = None
norm = plt.Normalize(vmin=vmin, vmax=vmax) if vmin is not None and vmax is not None else None
sc = ax.scatter(lons, lats, c=values, cmap=cmap_float, s=scatter_size,
linewidth=0.0, transform=ccrs.PlateCarree(), zorder=2, norm=norm,
rasterized=rasterize, edgecolors='none')
cbar = plt.colorbar(sc, ax=ax, orientation='vertical', shrink=0.6)
cbar.set_label(long_name, fontsize=tick_font)
cbar.ax.tick_params(labelsize=tick_font)
ax.set_title(long_name, fontsize=title_font)
# Save figure with safe filename
if session_name is None or session_name == "":
session_name = "default_session"
safe_session = re.sub(r'[^a-zA-Z0-9_-]', '_', session_name)
save_dir = os.path.join(save_dir, safe_session)
os.makedirs(save_dir, exist_ok=True)
# build base filename
base_name = re.sub(r'[^a-zA-Z0-9_-]', '_', short_name)
ext = ".png"
filepath = os.path.join(save_dir, f"{base_name}{ext}")
# if exists, append -1, -2, ...
if os.path.exists(filepath):
i = 1
while True:
filepath = os.path.join(save_dir, f"{base_name}-{i}{ext}")
if not os.path.exists(filepath):
break
i += 1
plt.savefig(filepath, bbox_inches="tight")
plt.close()
return filepath