J.A. Paredes-Ahumada, Pau Ferrer-Cid, J. Barceló-Ordinas, J. García-Vidal, C. Reche, M. Viana
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引用次数: 0
摘要
专注于空气污染的空气质量监测传感器网络测量受当局管制的污染物,如CO, NO2, NO, SO2, O3和颗粒物(PM10, PM2.5)。然而,还有其他污染物,如黑碳(BC),不受管制,对健康有重大影响,很少进行测量。一种解决方案是使用代理,它包括创建一个数学模型,通过对其他污染物的间接测量来推断污染物的测量。在本文中,我们提出了一个鲁棒的机器学习代理(RMLP)框架,用于基于非线性机器学习方法估计BC,校准低成本传感器(LCS),并增加对LCS中噪声和数据缺失的鲁棒性。我们展示了LCS数据聚合、去噪和缺失代入对BC估计的影响,以及BC代理估计的浓度如何接近具有精确BC传感器的参考仪器获得的值。
Robust Proxy Sensor Model for Estimating Black Carbon Concentrations Using Low-Cost Sensors
Air quality monitoring sensor networks focusing on air pollution measure pollutants that are regulated by the authorities, such as CO, NO2, NO, SO2, O3, and particulate matter (PM10, PM2.5). However, there are other pollutants, such as black carbon (BC), which are not regulated, have a major impact on health, and are rarely measured. One solution is to use proxies, which consist of creating a mathematical model that infers the measurement of the pollutant from indirect measurements of other pollutants. In this paper, we propose a robust machine learning proxy (RMLP) framework for estimating BC based on nonlinear machine learning methods, calibrating the low-cost sensors (LCSs), and adding robustness against noise and data missing in the LCS. We show the impact of LCS data aggregation, denoising and missing imputation on BC estimation, and how the concentrations estimated by the BC proxy approximate the values obtained by a reference instrument with an accurate BC sensor.