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Google Maps Distance Matrix API — Monsoon Speed Validation Script
=================================================================
Collects real-world travel time data for the Bhopal corridor used in
APOO validation, comparing clear vs pessimistic (monsoon-proxy) conditions.
API Key Required: Google Maps Distance Matrix API (or DistanceMatrix.ai)
Corridor: Bhopal Hoshangabad Road / Arera Colony arterial
Total Length: ~2.5 km across 5 segments
Usage:
export GOOGLE_MAPS_API_KEY="your_key_here"
python google_maps_api_collection.py
Author: APOO Validation Team
Date: 2026-05-06
"""
import os
import sys
import time
import json
import urllib.request
from datetime import datetime, timedelta
# ============================================================
# CONFIGURATION
# ============================================================
# API Configuration
GOOGLE_API_KEY = os.environ.get("GOOGLE_MAPS_API_KEY", "")
DISTANCEMATRIX_AI_KEY = os.environ.get("DISTANCEMATRIX_AI_KEY", "")
USE_DISTANCEMATRIX_AI = not DISTANCEMATRIX_AI_KEY == ""
# Bhopal Corridor Coordinates (from APOO validation/apoo_validation_results.csv)
WAYPOINTS = [
# (origin_lat, origin_lon, dest_lat, dest_lon, segment_name, expected_length_m)
(23.2599, 77.4126, 23.2555, 77.4110, "Segment_1_MP_Nagar_to_Arera_Hills", 500),
(23.2555, 77.4110, 23.2512, 77.4095, "Segment_2_Arera_Hills_to_DB_City", 520),
(23.2512, 77.4095, 23.2470, 77.4080, "Segment_3_DB_City_to_New_Market", 480),
(23.2470, 77.4080, 23.2428, 77.4065, "Segment_4_New_Market_to_TT_Nagar", 510),
(23.2428, 77.4065, 23.2385, 77.4050, "Segment_5_TT_Nagar_to_Roshanpura", 490),
]
# Departure times for testing (IST = UTC+5:30)
# Next Monday 09:00 AM IST = 03:30 UTC
def next_monday_9am_utc():
"""Get timestamp for next Monday 09:00 AM IST."""
now = datetime.utcnow()
days_until_monday = (7 - now.weekday()) % 7
if days_until_monday == 0:
days_until_monday = 7 # Next Monday, not today
next_monday = now + timedelta(days=days_until_monday)
next_monday = next_monday.replace(hour=3, minute=30, second=0, microsecond=0)
return int(next_monday.timestamp())
# Test conditions
CONDITIONS = [
{
"name": "Clear_Weekday_Peak",
"traffic_model": "best_guess",
"departure_time": "now", # Or use next_monday_9am_utc()
"description": "Clear weather baseline — weekday morning peak",
},
{
"name": "Pessimistic_Monsoon_Proxy",
"traffic_model": "pessimistic",
"departure_time": "now",
"description": "Monsoon proxy — pessimistic traffic model simulates worst-case congestion + incidents",
},
{
"name": "Optimistic_Clear_Comparison",
"traffic_model": "optimistic",
"departure_time": "now",
"description": "Optimistic model — upper bound for clear conditions",
},
]
# ============================================================
# API CALL FUNCTIONS
# ============================================================
def call_google_maps_distance_matrix(origins, destinations, departure_time=None,
traffic_model="best_guess", api_key=""):
"""
Call Google Maps Distance Matrix API.
Args:
origins: str like "lat1,lon1|lat2,lon2" or single "lat,lon"
destinations: str like "lat1,lon1|lat2,lon2" or single "lat,lon"
departure_time: "now" or Unix timestamp
traffic_model: "best_guess", "pessimistic", or "optimistic"
api_key: Google Maps API key
Returns:
dict with parsed results or error
"""
if not api_key:
return {"error": "No API key provided"}
url = (f"https://maps.googleapis.com/maps/api/distancematrix/json"
f"?origins={origins}"
f"&destinations={destinations}"
f"&mode=driving"
f"&traffic_model={traffic_model}"
f"&key={api_key}")
if departure_time:
url += f"&departure_time={departure_time}"
try:
req = urllib.request.Request(url, headers={'User-Agent': 'APOO-Validation/1.0'})
resp = urllib.request.urlopen(req, timeout=30)
data = json.loads(resp.read())
if data.get("status") != "OK":
return {"error": f"API status: {data.get('status')}", "raw": data}
return {"status": "OK", "raw": data}
except Exception as e:
return {"error": str(e)}
def call_distancematrix_ai(origins, destinations, api_key=""):
"""
Call DistanceMatrix.ai API (alternative provider).
Note: This provider does not support traffic_model parameter.
"""
if not api_key:
return {"error": "No API key provided"}
url = (f"https://api.distancematrix.ai/maps/api/distancematrix/json"
f"?origins={origins}"
f"&destinations={destinations}"
f"&key={api_key}")
try:
req = urllib.request.Request(url, headers={'User-Agent': 'APOO-Validation/1.0'})
resp = urllib.request.urlopen(req, timeout=30)
data = json.loads(resp.read())
return {"status": "OK", "raw": data}
except Exception as e:
return {"error": str(e)}
def parse_google_response(data, waypoint_idx):
"""Extract duration, distance, and compute speed from Google response."""
try:
row = data["raw"]["rows"][0]
element = row["elements"][0]
if element["status"] != "OK":
return {"status": element["status"]}
duration_s = element["duration_in_traffic"]["value"]
distance_m = element["distance"]["value"]
speed_kmh = (distance_m / 1000) / (duration_s / 3600)
return {
"status": "OK",
"duration_s": duration_s,
"distance_m": distance_m,
"speed_kmh": round(speed_kmh, 2),
"duration_text": element["duration_in_traffic"]["text"],
"distance_text": element["distance"]["text"],
}
except KeyError as e:
return {"status": "PARSE_ERROR", "error": str(e), "raw_element": element}
def parse_distancematrix_ai_response(data, waypoint_idx):
"""Extract duration, distance from DistanceMatrix.ai response."""
try:
row = data["raw"]["rows"][0]
element = row["elements"][0]
duration_s = element["duration"]["value"]
distance_m = element["distance"]["value"]
speed_kmh = (distance_m / 1000) / (duration_s / 3600)
return {
"status": "OK",
"duration_s": duration_s,
"distance_m": distance_m,
"speed_kmh": round(speed_kmh, 2),
"duration_text": element["duration"]["text"],
"distance_text": element["distance"]["text"],
}
except KeyError as e:
return {"status": "PARSE_ERROR", "error": str(e)}
# ============================================================
# MAIN COLLECTION PIPELINE
# ============================================================
def collect_segment_data(orig_lat, orig_lon, dest_lat, dest_lon, segment_name,
expected_length_m, condition, api_key):
"""Collect data for a single segment under a single condition."""
origins = f"{orig_lat},{orig_lon}"
destinations = f"{dest_lat},{dest_lon}"
if USE_DISTANCEMATRIX_AI:
raw = call_distancematrix_ai(origins, destinations, api_key)
parsed = parse_distancematrix_ai_response(raw, 0)
else:
raw = call_google_maps_distance_matrix(
origins, destinations,
departure_time=condition.get("departure_time"),
traffic_model=condition.get("traffic_model", "best_guess"),
api_key=api_key
)
parsed = parse_google_response(raw, 0)
return {
"segment_name": segment_name,
"expected_length_m": expected_length_m,
"condition": condition["name"],
"traffic_model": condition.get("traffic_model", "N/A"),
"description": condition["description"],
"timestamp_utc": datetime.utcnow().isoformat(),
**parsed,
}
def run_validation():
"""Run the full validation pipeline."""
api_key = DISTANCEMATRIX_AI_KEY if USE_DISTANCEMATRIX_AI else GOOGLE_API_KEY
if not api_key:
print("ERROR: No API key configured.")
print("Set either GOOGLE_MAPS_API_KEY or DISTANCEMATRIX_AI_KEY environment variable.")
sys.exit(1)
print("=" * 70)
print("APOO Monsoon Speed Validation — Google Maps API Collection")
print("=" * 70)
print(f"Provider: {'DistanceMatrix.ai' if USE_DISTANCEMATRIX_AI else 'Google Maps'}")
print(f"Corridor: Bhopal Hoshangabad Road / Arera Colony")
print(f"Total Segments: {len(WAYPOINTS)}")
print(f"Total Distance: ~{sum(w[5] for w in WAYPOINTS)} m")
print("=" * 70)
all_results = []
for condition in CONDITIONS:
print(f"\n--- Condition: {condition['name']} ---")
print(f" Description: {condition['description']}")
print(f" Traffic Model: {condition.get('traffic_model', 'N/A')}")
condition_results = []
for i, (orig_lat, orig_lon, dest_lat, dest_lon, seg_name, exp_len) in enumerate(WAYPOINTS):
print(f" Segment {i+1}: {seg_name} ({exp_len}m)...", end=" ")
result = collect_segment_data(
orig_lat, orig_lon, dest_lat, dest_lon,
seg_name, exp_len, condition, api_key
)
condition_results.append(result)
if result.get("status") == "OK":
print(f"OK — {result['duration_text']} ({result['distance_text']}) "
f"→ {result['speed_kmh']:.1f} km/h")
else:
print(f"ERROR — {result.get('status', 'Unknown')}: {result.get('error', '')}")
time.sleep(1.0) # Rate limit compliance
# Compute corridor totals for this condition
total_distance = sum(r["distance_m"] for r in condition_results if r.get("status") == "OK")
total_duration = sum(r["duration_s"] for r in condition_results if r.get("status") == "OK")
avg_speed = (total_distance / 1000) / (total_duration / 3600) if total_duration > 0 else 0
summary = {
"condition": condition["name"],
"total_distance_m": total_distance,
"total_duration_s": total_duration,
"avg_speed_kmh": round(avg_speed, 2),
"segments": condition_results,
}
all_results.append(summary)
print(f" Corridor Summary: {total_distance}m in {total_duration}s → {avg_speed:.1f} km/h")
# Save results
output_file = f"/app/bhopal_monsoon_validation_{datetime.utcnow().strftime('%Y%m%d_%H%M%S')}.json"
with open(output_file, "w") as f:
json.dump({
"metadata": {
"corridor": "Bhopal Hoshangabad Road / Arera Colony",
"total_segments": len(WAYPOINTS),
"total_expected_distance_m": sum(w[5] for w in WAYPOINTS),
"api_provider": "DistanceMatrix.ai" if USE_DISTANCEMATRIX_AI else "Google Maps",
"collection_timestamp_utc": datetime.utcnow().isoformat(),
"conditions_tested": [c["name"] for c in CONDITIONS],
},
"results": all_results,
}, f, indent=2)
print(f"\n{'=' * 70}")
print(f"Results saved to: {output_file}")
# Speed reduction analysis
if len(all_results) >= 2:
clear_speed = all_results[0]["avg_speed_kmh"]
pessimistic_speed = all_results[1]["avg_speed_kmh"]
reduction_pct = ((clear_speed - pessimistic_speed) / clear_speed * 100) if clear_speed > 0 else 0
print(f"\n--- SPEED REDUCTION ANALYSIS ---")
print(f"Clear Weather Avg Speed: {clear_speed:.1f} km/h")
print(f"Pessimistic/Monsoon Avg Speed: {pessimistic_speed:.1f} km/h")
print(f"Speed Reduction: {reduction_pct:.1f}%")
print(f"APOO Simulation Assumption: 35.0%")
print(f"Difference from APOO: {reduction_pct - 35.0:.1f} percentage points")
if 20 <= reduction_pct <= 50:
print(f"\nVERDICT: ✅ Real-world speed reduction ({reduction_pct:.1f}%) falls within")
print(f" the 20-50% range documented in Indian monsoon literature.")
print(f" APOO's 35% assumption is VALIDATED.")
elif reduction_pct < 20:
print(f"\nVERDICT: ⚠️ Real-world reduction ({reduction_pct:.1f}%) is LOWER than")
print(f" literature. Monsoon proxy may not capture full impact.")
else:
print(f"\nVERDICT: ✅ Real-world reduction ({reduction_pct:.1f}%) is HIGHER than")
print(f" APOO's 35%. The simulation is CONSERVATIVE.")
print("=" * 70)
return all_results
if __name__ == "__main__":
run_validation()
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