一种动态空间过滤方法,用于减轻现场校准的低成本传感器空气污染数据的低估偏差。

IF 1.3 4区 数学 Q2 STATISTICS & PROBABILITY
Annals of Applied Statistics Pub Date : 2023-12-01 Epub Date: 2023-10-30 DOI:10.1214/23-aoas1751
Claire Heffernan, Roger PenG, Drew R Gentner, Kirsten Koehler, Abhirup Datta
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引用次数: 0

摘要

低成本空气污染传感器可提供污染物浓度的超局部特征,在环境和公共卫生研究中越来越普遍。然而,低成本空气污染数据可能会受到环境条件的影响而产生噪声和偏差,通常需要通过将低成本传感器与参考级仪器搭配使用来进行现场校准。我们从理论和经验上证明,使用同位数据进行回归校准的常见程序会系统性地低估空气污染的高浓度,而从健康角度来看,高浓度是诊断空气污染的关键。目前的校准方法通常也无法利用污染物浓度的空间相关性。我们提出了一种新颖的空间过滤方法,通过使用反回归来减轻低估问题。反回归还允许通过使用条件高斯过程的真实污染物浓度第二阶段模型纳入空间相关性。我们的方法适用于网络中的一个或多个定位点,并且是动态的,充分利用了与最新参考数据的空间相关性。通过大量模拟,我们展示了空间过滤如何大幅提高污染物浓度的估计值,并以更高的精度测量峰值浓度。我们将该方法应用于校准马里兰州巴尔的摩市的低成本 PM2.5 网络,并诊断出回归校准所遗漏的空气污染峰值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A DYNAMIC SPATIAL FILTERING APPROACH TO MITIGATE UNDERESTIMATION BIAS IN FIELD CALIBRATED LOW-COST SENSOR AIR POLLUTION DATA.

Low-cost air pollution sensors, offering hyper-local characterization of pollutant concentrations, are becoming increasingly prevalent in environmental and public health research. However, low-cost air pollution data can be noisy, biased by environmental conditions, and usually need to be field-calibrated by collocating low-cost sensors with reference-grade instruments. We show, theoretically and empirically, that the common procedure of regression-based calibration using collocated data systematically underestimates high air pollution concentrations, which are critical to diagnose from a health perspective. Current calibration practices also often fail to utilize the spatial correlation in pollutant concentrations. We propose a novel spatial filtering approach to collocation-based calibration of low-cost networks that mitigates the underestimation issue by using an inverse regression. The inverse-regression also allows for incorporating spatial correlations by a second-stage model for the true pollutant concentrations using a conditional Gaussian Process. Our approach works with one or more collocated sites in the network and is dynamic, leveraging spatial correlation with the latest available reference data. Through extensive simulations, we demonstrate how the spatial filtering substantially improves estimation of pollutant concentrations, and measures peak concentrations with greater accuracy. We apply the methodology for calibration of a low-cost PM2.5 network in Baltimore, Maryland, and diagnose air pollution peaks that are missed by the regression-calibration.

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来源期刊
Annals of Applied Statistics
Annals of Applied Statistics 社会科学-统计学与概率论
CiteScore
3.10
自引率
5.60%
发文量
131
审稿时长
6-12 weeks
期刊介绍: Statistical research spans an enormous range from direct subject-matter collaborations to pure mathematical theory. The Annals of Applied Statistics, the newest journal from the IMS, is aimed at papers in the applied half of this range. Published quarterly in both print and electronic form, our goal is to provide a timely and unified forum for all areas of applied statistics.
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