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Developing a Relative Humidity Correction for Low-Cost Sensors Measuring Ambient Particulate Matter

机译:开发用于测量环境颗粒物的低成本传感器的相对湿度校正

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摘要

There is increasing concern about the health impacts of ambient Particulate Matter (PM) exposure. Traditional monitoring networks, because of their sparseness, cannot provide sufficient spatial-temporal measurements characteristic of ambient PM. Recent studies have shown portable low-cost devices (e.g., optical particle counters, OPCs) can help address this issue; however, their application under ambient conditions can be affected by high relative humidity (RH) conditions. Here, we show how, by exploiting the measured particle size distribution information rather than PM as has been suggested elsewhere, a correction can be derived which not only significantly improves sensor performance but which also retains fundamental information on particle composition. A particle size distribution–based correction algorithm, founded on κ-Köhler theory, was developed to account for the influence of RH on sensor measurements. The application of the correction algorithm, which assumed physically reasonable κ values, resulted in a significant improvement, with the overestimation of PM measurements reduced from a factor of ~5 before correction to 1.05 after correction. We conclude that a correction based on particle size distribution, rather than PM mass, is required to properly account for RH effects and enable low cost optical PM sensors to provide reliable ambient PM measurements.
机译:人们越来越关注周围颗粒物(PM)暴露对健康的影响。传统的监视网络由于其稀疏性,无法提供环境PM的足够的时空测量特性。最近的研究表明,便携式低成本设备(例如,光学粒子计数器,OPC)可以帮助解决这一问题;但是,它们在环境条件下的应用可能会受到高相对湿度(RH)条件的影响。在这里,我们展示了如何通过利用测得的粒度分布信息而不是其他地方提出的PM来得出校正,该校正不仅可以显着提高传感器性能,而且还可以保留有关颗粒成分的基本信息。基于κ-Köhler理论的基于颗粒尺寸分布的校正算法得到了开发,以解决RH对传感器测量的影响。假定物理上合理的κ值的校正算法的应用带来了显着的改善,PM测量的高估从校正前的〜5减少到校正后的1.05。我们得出的结论是,需要基于粒度分布而不是PM质量进行校正,以正确考虑RH的影响,并使低成本的光学PM传感器能够提供可靠的环境PM测量。

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