Geography Department, Humboldt-Universität zu Berlin, Unter den Linden 6, D-10099 Berlin, Germany.
Department of Flue Gas Cleaning and Air Quality Control, Institute of Combustion and Power Plant Technology (IFK), University of Stuttgart, Pfaffenwaldring 23, 70569 Stuttgart, Germany.
Sensors (Basel). 2021 Jun 8;21(12):3960. doi: 10.3390/s21123960.
Over the last decade, manufacturers have come forth with cost-effective sensors for measuring ambient and indoor particulate matter concentration. What these sensors make up for in cost efficiency, they lack in reliability of the measured data due to their sensitivities to temperature and relative humidity. These weaknesses are especially evident when it comes to portable or mobile measurement setups. In recent years many studies have been conducted to assess the possibilities and limitations of these sensors, however mostly restricted to stationary measurements. This study reviews the published literature until 2020 on cost-effective sensors, summarizes the recommendations of experts in the field based on their experiences, and outlines the quantile-mapping methodology to calibrate low-cost sensors in mobile applications. Compared to the commonly used linear regression method, quantile mapping retains the spatial characteristics of the measurements, although a common correction factor cannot be determined. We conclude that quantile mapping can be a useful calibration methodology for mobile measurements given a well-elaborated measurement plan assures providing the necessary data.
在过去的十年中,制造商已经推出了具有成本效益的传感器,用于测量环境和室内颗粒物浓度。由于这些传感器对温度和相对湿度敏感,因此在成本效率方面表现出色,但在测量数据的可靠性方面却有所欠缺。当涉及到便携式或移动测量设置时,这些弱点尤其明显。近年来,许多研究都评估了这些传感器的可能性和局限性,但大多局限于固定测量。本研究回顾了截至 2020 年有关具有成本效益的传感器的已发表文献,总结了该领域专家根据其经验提出的建议,并概述了用于在移动应用中校准低成本传感器的分位数映射方法。与常用的线性回归方法相比,分位数映射保留了测量的空间特征,尽管不能确定通用的校正因子。我们的结论是,只要精心制定测量计划,就能确保提供必要的数据,分位数映射就可以成为移动测量的有用校准方法。