Air Pollution Hotspot Detection and Source Feature Analysis using Cross-domain Urban Data
Yawen Zhang, Michael Hannigan, Qin Lv

TL;DR
This paper presents a novel two-step method leveraging mobile sensing data and cross-domain urban data to detect and analyze air pollution hotspots, addressing sampling challenges and providing insights into pollution sources.
Contribution
It introduces a robust hotspot detection approach using sample-weighted clustering and cross-domain feature analysis, enhancing air quality management strategies.
Findings
Effective detection of pollution hotspots using mobile sensors.
Successful inference of pollution sources from urban data.
Insights into neighborhood pollution characteristics.
Abstract
Air pollution is a major global environmental health threat, in particular for people who live or work near pollution sources. Areas adjacent to pollution sources often have high ambient pollution concentrations, and those areas are commonly referred to as air pollution hotspots. Detecting and characterizing pollution hotspots are of great importance for air quality management, but are challenging due to the high spatial and temporal variability of air pollutants. In this work, we explore the use of mobile sensing data (i.e., air quality sensors installed on vehicles) to detect pollution hotspots. One major challenge with mobile sensing data is uneven sampling, i.e., data collection can vary by both space and time. To address this challenge, we propose a two-step approach to detect hotspots from mobile sensing data, which includes local spike detection and sample-weighted clustering.…
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