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In-field Calibration of Low-Cost Sensors through XGBoost $\&$ Aggregate Sensor Data

In-field Calibration of Low-Cost Sensors through XGBoost $\&$ Aggregate Sensor Data

来源:Arxiv_logoArxiv
英文摘要

Effective large-scale air quality monitoring necessitates distributed sensing due to the pervasive and harmful nature of particulate matter (PM), particularly in urban environments. However, precision comes at a cost: highly accurate sensors are expensive, limiting the spatial deployments and thus their coverage. As a result, low-cost sensors have become popular, though they are prone to drift caused by environmental sensitivity and manufacturing variability. This paper presents a model for in-field sensor calibration using XGBoost ensemble learning to consolidate data from neighboring sensors. This approach reduces dependence on the presumed accuracy of individual sensors and improves generalization across different locations.

Kevin Yin、Julia Gersey、Pei Zhang

环境科学技术现状环境污染、环境污染防治

Kevin Yin,Julia Gersey,Pei Zhang.In-field Calibration of Low-Cost Sensors through XGBoost $\&$ Aggregate Sensor Data[EB/OL].(2025-06-18)[2025-06-30].https://arxiv.org/abs/2506.15840.点此复制

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