论文标题
开发用于密集部署的PM监控网络的端到端低成本物联网系统:印度案例研究
Development of End-to-End Low-Cost IoT System for Densely Deployed PM Monitoring Network: An Indian Case Study
论文作者
论文摘要
颗粒物(PM)被认为是造成空气污染的主要因素,并且对一般健康具有严重影响。 PM浓度具有很高的空间变异性,因此需要在本地监测。传统的PM监控设置笨重,昂贵,不能缩放以进行密集的部署。本文主张使用低成本传感器的密集部署IOT PM监视设备网络。在这项工作中,在印度大都市城市海得拉巴的一个地区部署了49个设备,在此工作之外开发了43个设备,作为这项工作的一部分,并从货架上摘下了6个设备。使用精确的参考传感器对低成本传感器进行校准以进行季节性变化。对收集七个月收集的数据进行了彻底的分析,以确定需要密集部署PM监测设备的需求。已经采用了不同的分析,例如均值,方差,空间插值和相关性,以产生有关PM的时间和季节性变化的有趣见解。此外,对PM值进行了以事件为导向的时空分析,以了解排灯节晚上的鞭炮爆发的影响。基于Web的仪表板设计用于实时数据可视化。
Particulate matter (PM) is considered the primary contributor to air pollution and has severe implications for general health. PM concentration has high spatial variability and thus needs to be monitored locally. Traditional PM monitoring setups are bulky, expensive and cannot be scaled for dense deployments. This paper argues for a densely deployed network of IoT-enabled PM monitoring devices using low-cost sensors. In this work, 49 devices were deployed in a region of the Indian metropolitan city of Hyderabad out-of this, 43 devices were developed as part of this work and 6 devices were taken off the shelf. The low-cost sensors were calibrated for seasonal variations using a precise reference sensor. A thorough analysis of data collected for seven months has been presented to establish the need for dense deployment of PM monitoring devices. Different analyses such as mean, variance, spatial interpolation and correlation have been employed to generate interesting insights about temporal and seasonal variations of PM. In addition, event-driven spatio-temporal analysis is done for PM values to understand the impact of the bursting of firecrackers on the evening of the Diwali festival. A web-based dashboard is designed for real-time data visualization.