Calibrating low-cost air quality sensors using multiple arrays of sensors

J. Barceló-Ordinas, J. García-Vidal, M. Doudou, S. Rodrigo-Munoz, Albert Cerezo-Llavero
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引用次数: 31

Abstract

The remarkable advances in sensing and communication technologies have introduced increasingly low-cost, smart and portable sensors that can be embedded everywhere and play an important role in environmental sensing applications such as air quality monitoring. These user-friendly wireless sensor platforms enable assessment of human exposure to air pollution through observations at high spatial resolution in near-realtime, thus providing new opportunities to simultaneously enhance existing monitoring systems, as well as engage citizens in active environmental monitoring. However, data quality from such platforms is a concern since sensing hardware of such devices is generally characterized by a reduced accuracy, precision, and reliability. Achieving good data quality and maintaining error free measurements during the whole system lifetime is challenging. Over time, sensors become subject to several sources of unknown and uncontrollable faulty data which comprise the accuracy of the measurements and yield observations far from the expected values. This paper investigates calibration of low-cost air quality sensors in a real sensor network deployment. The approach leverages on the availability of sensor arrays in a wireless node to estimate parameters that minimize the calibration error using fusion of data from multiple sensors. The obtained results were encouraging and show the effectiveness of the approach compared to a single sensor calibration.
使用多个传感器阵列校准低成本空气质量传感器
传感和通信技术的显著进步带来了越来越低成本、智能和便携式传感器,这些传感器可以嵌入任何地方,并在空气质量监测等环境传感应用中发挥重要作用。这些用户友好的无线传感器平台可以通过近实时的高空间分辨率观测来评估人类对空气污染的暴露,从而为同时加强现有监测系统以及让公民参与主动环境监测提供了新的机会。然而,来自这些平台的数据质量是一个问题,因为这些设备的传感硬件通常具有降低的准确性、精度和可靠性的特点。在整个系统生命周期内实现良好的数据质量并保持无误差的测量是具有挑战性的。随着时间的推移,传感器会受到一些未知和不可控的错误数据的影响,这些数据包括测量的准确性和产生的观测值与期望值相去甚远。本文研究了在实际传感器网络部署中低成本空气质量传感器的校准问题。该方法利用无线节点中传感器阵列的可用性来估计参数,通过融合来自多个传感器的数据来最小化校准误差。所获得的结果令人鼓舞,并显示了该方法与单个传感器校准相比的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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