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首页> 外文期刊>Journal of Cleaner Production >Artificial intelligence-enabled context-aware air quality prediction for smart cities
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Artificial intelligence-enabled context-aware air quality prediction for smart cities

机译:支持人工智能的背景信息感知智能城市的空气质量预测

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摘要

Metropolitan areas around the world are experiencing a surge in air pollution levels due to different anthropogenic causes, making accurate air quality prediction a critical task for public health. Although many prediction systems have been researched and modelled, many of them have neglected the different effects that air pollution has on each individual citizen. Hence, we present a novel context prediction model that includes context-aware computing concepts to merge an accurate air pollution prediction algorithm (using Long Short-Term Memory Deep Neural Network) with information from both surrounding pollution sources (e.g., bushfire incidents, traffic volumes) and user's health profile. This model is then integrated into a tool called My Air Quality Index (MyAQI), which is further implemented and evaluated in a real-life use case set up in Melbourne Urban Area (Victoria, Australia). Results obtained with MyAQI show both that (i) high precision levels are reached (90-96%) when forecasting air quality situations in four air quality monitoring stations, and (ii) the proposed model is highly adaptable to users' individual health condition effects under the same airborne pollutant levels. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于不同的人为原因,世界各地的大都市地区正在经历空气污染水平的浪涌,使空气质量预测是公共卫生的重要任务。虽然已经研究和建模了许多预测系统,但其中许多人忽略了空气污染对每个公民的不同影响。因此,我们提出了一种新的上下文预测模型,包括与来自周围污染源的信息(例如,丛林发生,流量卷,交通卷)和用户的健康状况。然后将该模型集成到称为我的空气质量指数(Myaqi)的工具中,这在墨尔本市区(维多利亚州Victoria,澳大利亚)中进一步实施和评估。用Myaqi获得的结果显示(i)达到高精度水平(90-96%)在四个空气质量监测站预测空气质量情况时,(ii)拟议的模型对用户的个人健康状况效应非常适应在相同的空中污染物水平下。 (c)2020 elestvier有限公司保留所有权利。

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