Reliability Assessment of Low-Cost PM Sensors under High Humidity and High PM Level Outdoor Conditions
Abstract
Low-cost particulate matter (PM) sensors have become increasingly popular due to their compact size, low power consumption, and cost-effective installation and maintenance. While several studies have explored the effects of meteorological conditions and pollution exposure on low-cost sensor (LCS) performance, few have addressed the combined impact of high PM concentration and high humidity levels. In contrast to most evaluation studies, which generally report PM2.5 levels below 150~μg/m3, our study observed hourly average PM2.5 concentrations ranging from 6-611~μg/m3 (mean value of 137~μg/m3), with relative humidity between 25-95\% (mean value of 72\%), and temperature varying from 6-29 (mean value of 16). We evaluate three LCS models (SPS30, PMS7003, HPMA115C0-004) in outdoor conditions during the winter season in New Delhi, India, deployed alongside a reference-grade beta attenuation monitor (BAM). The results indicate a strong correlation between LCS and BAM measurements (R2 > 90\%). The RMSE increases with increasing PM concentration and humidity levels but the narrow 95\% confidence interval range of LCS as a function of the reference BAM suggests the importance of LCS in air pollution monitoring. Among the evaluated LCS models, SPS30 showed the highest overall accuracy. Overall, the study demonstrates that LCS can effectively monitor air quality in regions with high PM and high humidity levels, provided appropriate correction models are applied.
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