Long-Term Evaluation and Calibration of Low-Cost Particulate Matter (PM) Sensor
Author(s) -
Hoochang Lee,
Jiseock Kang,
Sungjung Kim,
Yunseok Im,
Seung-Sung Yoo,
Dongjun Lee
Publication year - 2020
Publication title -
sensors
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.636
H-Index - 172
ISSN - 1424-8220
DOI - 10.3390/s20133617
Subject(s) - calibration , particulates , environmental science , mean squared error , wireless sensor network , term (time) , computer science , remote sensing , real time computing , statistics , physics , mathematics , geography , chemistry , organic chemistry , quantum mechanics , computer network
Low-cost light scattering particulate matter (PM) sensors have been widely researched and deployed in order to overcome the limitations of low spatio-temporal resolution of government-operated beta attenuation monitor (BAM). However, the accuracy of low-cost sensors has been questioned, thus impeding their wide adoption in practice. To evaluate the accuracy of low-cost PM sensors in the field, a multi-sensor platform has been developed and co-located with BAM in Dongjak-gu, Seoul, Korea from 15 January 2019 to 4 September 2019. In this paper, a sample variation of low-cost sensors has been analyzed while using three commercial low-cost PM sensors. Influences on PM sensor by environmental conditions, such as humidity, temperature, and ambient light, have also been described. Based on this information, we developed a novel combined calibration algorithm, which selectively applies multiple calibration models and statistically reduces residuals, while using a prebuilt parameter lookup table where each cell records statistical parameters of each calibration model at current input parameters. As our proposed framework significantly improves the accuracy of the low-cost PM sensors (e.g., RMSE: 23.94 → 4.70 μ g/m 3 ) and increases the correlation (e.g., R 2 : 0.41 → 0.89), this calibration model can be transferred to all sensor nodes through the sensor network.
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