Complexity of Factor Analysis for Particulate Matter (PM) Data: A Measurement Based Case Study in Delhi-NCR

Ismi Abidi, S. Gaddam, Saswat Kumar Pujari, C. Degwekar, Rijurekha Sen
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引用次数: 1

Abstract

Developing countries are home to the most polluted cities in the world. Particulate Matter (PM), one of the most serious air pollutants, needs to be measured at scale across urban areas in such countries. Factors potentially affecting PM like road traffic, green cover, industrial emissions etc., also need to be quantified, to enable fine-grained correlation analyses among PM and its causes. This paper presents an IoT platform with multiple sensors, latest deep neural network based edge-computing, local storage and communication support – to measure PM and its associated factors. Through real world deployments, the first in depth empirical analysis of a government enforced traffic control policy for pollution control, is presented as a use case of our IoT platform. We demonstrate the potential of IoT and edge computing in urban sustainability questions in this paper, especially in a developing region context. At the same time, we show how complex a real system like Particulate Matter’s factor analyses can be, and urge environmentalists to use sensors networks and fine-grained empirical datasets as ours in future, for more nuanced and data-driven policy discussions.
颗粒物(PM)数据因子分析的复杂性:基于测量的德里ncr案例研究
发展中国家拥有世界上污染最严重的城市。颗粒物(PM)是最严重的空气污染物之一,需要在这些国家的城市地区进行大规模测量。可能影响PM的因素,如道路交通、绿化覆盖、工业排放等,也需要量化,以实现PM及其原因之间的细粒度相关性分析。本文提出了一个具有多个传感器、基于最新深度神经网络的边缘计算、本地存储和通信支持的物联网平台,用于测量PM及其相关因素。通过现实世界的部署,首次对政府强制实施的交通控制政策进行了深入的实证分析,作为我们物联网平台的一个用例。在本文中,我们展示了物联网和边缘计算在城市可持续性问题上的潜力,特别是在发展中地区的背景下。同时,我们展示了像颗粒物因子分析这样的真实系统是多么复杂,并敦促环保主义者在未来像我们一样使用传感器网络和细粒度的经验数据集,以进行更细致和数据驱动的政策讨论。
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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