用于感知、分析和预测城市空气质量的物联网系统

Anurag Barthwal, D. Acharya
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引用次数: 6

摘要

智能城市需要持续监测空气质量,以改善人类健康和生活质量。世界主要城市利用少数几个静态空气质量监测站来测量和分析空气质量和污染物浓度。道路是城市的动脉,是大多数人上下班和交通的必经之路。一种低成本的空气质量传感系统安装在通过城市不同路线通勤的车辆上,可以提供有关城市不同地区污染物状况和空气质量的精细实时信息。在这项工作中,我们开发了一个环境传感、位置感知、物联网系统,用于实时监测、收集和分析不同环境参数的存在。已经创建了安装传感器的车辆所经过的路线的污染路线图,其他车辆的移动用户可以访问该地图。由于空气污染高度依赖于地点,因此有必要预测没有空气质量资料的地方的空气质量。多元线性回归已被用于从这些地点的历史数据预测空气质量水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Internet of Things System for Sensing, Analysis & Forecasting Urban Air Quality
Constant monitoring of air quality is required in a smart city to improve human health and quality of life. Major cities of the world measure and analyze air quality and pollutant concentration with the help of few static air quality monitoring stations. Roads are arteries of a city and used by majority of the population for commuting and transportation. A low cost air quality sensing system installed in a vehicle that commutes through different routes of the city gives a finegrained real time information about the state of pollutants and air quality in different parts of the city. In this work, we have developed an environment sensing, location aware, Internet of Things system to monitor, collect and analyze the presence of different environmental parameters in real time. Pollution route map of the routes traversed by the vehicle with sensor-setup has been created which can be accessed by mobile users in other vehicles. As air pollution is highly location dependent, there is a need to predict air quality at places for which air quality information is not known. Multiple Linear Regression has been used to used to predict AQI levels from historic data for such locations.
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