Source code for vtra.plot.rail_network_flows_max_scales

"""Rail network flows map
"""
import os
import sys
from collections import OrderedDict

import pandas as pd
import geopandas as gpd
import cartopy.crs as ccrs
import cartopy.io.shapereader as shpreader
import matplotlib.pyplot as plt
import numpy as np
from shapely.geometry import LineString
from vtra.utils import *


[docs]def main(): config = load_config() mode_file_path = os.path.join(config['paths']['data'], 'post_processed_networks', 'rail_edges.shp') flow_file_path = os.path.join(config['paths']['output'], 'flow_mapping_combined', 'weighted_flows_national_rail_100_percent.csv') mode_file = gpd.read_file(mode_file_path,encoding='utf-8') flow_file = pd.read_csv(flow_file_path) mode_file = pd.merge(mode_file,flow_file,how='left', on=['edge_id']).fillna(0) color = '#006d2c' color_by_type = {'Rail Line': color} crop_cols = ['max_rice', 'max_cash', 'max_cass', 'max_teas', 'max_maiz', 'max_rubb', 'max_swpo', 'max_acof', 'max_rcof', 'max_pepp'] ind_cols = ['max_sugar', 'max_wood', 'max_steel', 'max_constructi', 'max_cement', 'max_fertilizer', 'max_coal', 'max_petroluem', 'max_manufactur', 'max_fishery', 'max_meat', 'max_tons'] columns = crop_cols + ind_cols column_label_divisors = {c: 1000 for c in columns} legend_label = "AADF ('000 tons/day)" title_cols = ['Rice', 'Cashew', 'Cassava', 'Teas', 'Maize', 'Rubber', 'Sweet Potatoes', 'Coffee Arabica', 'Coffee Robusta', 'Pepper', 'Sugar', 'Wood', 'Steel', 'Construction materials', 'Cement', 'Fertilizer', 'Coal', 'Petroleum', 'Manufacturing', 'Fishery', 'Meat', 'Total tonnage'] for c in range(len(columns)): ax = get_axes() plot_basemap(ax, config['paths']['data'],highlight_region=[]) scale_bar(ax, location=(0.8, 0.05)) plot_basemap_labels(ax, config['paths']['data']) proj_lat_lon = ccrs.PlateCarree() column = columns[c] weights = [ record['max_tons'] for iter_, record in mode_file.iterrows() ] max_weight = max(weights) width_by_range = generate_weight_bins(weights) geoms_by_range = {} for value_range in width_by_range: geoms_by_range[value_range] = [] for iter_, record in mode_file.iterrows(): val = record[column] geom = record.geometry for nmin, nmax in geoms_by_range: if nmin <= val and val < nmax: geoms_by_range[(nmin, nmax)].append(geom) # plot for range_, width in width_by_range.items(): ax.add_geometries( [geom.buffer(width) for geom in geoms_by_range[range_]], crs=proj_lat_lon, edgecolor='none', facecolor=color, zorder=2) x_l = 102.3 x_r = x_l + 0.4 base_y = 14 y_step = 0.4 y_text_nudge = 0.1 x_text_nudge = 0.1 ax.text( x_l, base_y + y_step - y_text_nudge, legend_label, horizontalalignment='left', transform=proj_lat_lon, size=10) divisor = column_label_divisors[column] for (i, ((nmin, nmax), width)) in enumerate(width_by_range.items()): y = base_y - (i*y_step) line = LineString([(x_l, y), (x_r, y)]) ax.add_geometries( [line.buffer(width)], crs=proj_lat_lon, linewidth=0, edgecolor=color, facecolor=color, zorder=2) if nmin == max_weight: label = '>{:.2f}'.format(max_weight/divisor) else: label = '{:.2f}-{:.2f}'.format(nmin/divisor, nmax/divisor) ax.text( x_r + x_text_nudge, y - y_text_nudge, label, horizontalalignment='left', transform=proj_lat_lon, size=10) plt.title(title_cols[c], fontsize=14) output_file = os.path.join(config['paths']['figures'], 'rail_flow-map-{}-max-scale.png'.format(column)) save_fig(output_file) plt.close()
if __name__ == '__main__': main()