Comprehensive Monitoring of Air Pollution Hotspots Using Sparse Sensor Networks
Ankit Bhardwaj, Ananth Balashankar, Shiva Iyer, Nita Soans, Anant, Sudarshan, Rohini Pande, Lakshminarayanan Subramanian

TL;DR
This study enhances urban air pollution hotspot detection by integrating sparse sensor data with predictive and mechanistic models, revealing hidden hotspots and informing policy in resource-limited environments.
Contribution
It introduces a combined approach of predictive modeling and mechanistic analysis to improve hotspot detection using sparse sensor networks in urban settings.
Findings
Identified 189 additional hotspots beyond public sensors.
Achieved 95% precision and 88% recall with predictive models under sensor failure.
Mechanistic model explains 65% of transient hotspots.
Abstract
Urban air pollution hotspots pose significant health risks, yet their detection and analysis remain limited by the sparsity of public sensor networks. This paper addresses this challenge by combining predictive modeling and mechanistic approaches to comprehensively monitor pollution hotspots. We enhanced New Delhi's existing sensor network with 28 low-cost sensors, collecting PM2.5 data over 30 months from May 1, 2018, to Nov 1, 2020. Applying established definitions of hotspots to this data, we found the existence of additional 189 hidden hotspots apart from confirming 660 hotspots detected by the public network. Using predictive techniques like Space-Time Kriging, we identified hidden hotspots with 95% precision and 88% recall with 50% sensor failure rate, and with 98% precision and 95% recall with 50% missing sensors. The projected results of our predictive models were further…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting
