Evaluating the Benefits of Indoor Air Quality Forecasting for Controlling Particle Filter Systems

Alexander Y. Mendell, Jeffrey A. Siegel and Seungjae Lee*, 
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Abstract

Predicting future concentrations of fine particulate matter (PM2.5) and other indoor air pollutants using machine learning is an increasingly frequent topic of research. Although prediction has several proposed applications, the potential benefit has remained largely unevaluated. This study examines whether prediction can improve how particle filter systems such as portable air cleaners are automated by comparing a model predictive control (MPC) strategy with a traditional threshold-based control (TBC) strategy. The MPC controller is designed to optimize the balance between mean reduction in PM2.5 concentration (i.e., keep concentrations as low as possible following health-based guidance) and reductions in system runtime. These two parameters are compared for both control strategies using 104 simulations of week-long continuous PM2.5 measurements in occupied apartments. Our findings suggest that there is no meaningful difference in performance between the two control strategies. Additionally, we find only a marginal improvement in performance for MPC controllers that operate using longer prediction horizons. Given the numerous challenges associated with accurately predicting future PM2.5 concentrations, as well as the additional challenges associated with implementing MPC, controlling particle filter systems may not be an appropriate application for prediction given the lack of benefit over TBC. We would recommend that particle filter systems continue to be controlled using nonpredictive strategies such as TBC, and that prediction tools be used for other applications or adapted to different areas of indoor air quality research and practice.

Abstract Image

室内空气质量预测对颗粒过滤系统控制的效益评价
利用机器学习预测未来细颗粒物(PM2.5)和其他室内空气污染物的浓度是一个日益频繁的研究课题。虽然预测已经提出了几种应用,但潜在的好处在很大程度上仍未得到评估。本研究通过比较模型预测控制(MPC)策略和传统的基于阈值的控制(TBC)策略,研究预测是否可以改善颗粒过滤系统(如便携式空气净化器)的自动化程度。MPC控制器旨在优化PM2.5浓度平均降低(即在基于健康的指导下保持尽可能低的浓度)和系统运行时间减少之间的平衡。这两个参数在两种控制策略下进行了比较,采用104个模拟,连续一周在有人居住的公寓进行PM2.5测量。我们的研究结果表明,两种控制策略之间的性能没有显著差异。此外,我们发现使用更长的预测范围操作的MPC控制器的性能仅略有改善。考虑到与准确预测未来PM2.5浓度相关的众多挑战,以及与实施MPC相关的额外挑战,由于缺乏对TBC的益处,控制颗粒过滤系统可能不是预测的合适应用。我们建议继续使用诸如TBC之类的非预测策略来控制颗粒过滤系统,并将预测工具用于其他应用或适应室内空气质量研究和实践的不同领域。
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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