基于元胞自动机的城市污染流预测

Sukanya Benjavanich, Ziauddin Ursani, D. Corne
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引用次数: 3

摘要

在全球许多城市中心,城市污染对健康的危害日益严重。主要的污染源包括柴油和汽油车辆,以及制造工厂、发电过程和其他工业活动。为了帮助了解和解决污染水平,许多城市正在安装传感器阵列;这些设施今后将支持对污染物的监测和跟踪,并为预测和缓解各种可能性提供基础。在本文中,我们描述了一种方法,该方法可以根据最近的历史传感器流来预测城市地区周围污染物的未来流量和强度。该方法采用元胞自动机,其参数通过进化算法在线学习和适应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting the flow of urban pollution with cellular automata
Urban pollution is a growing health hazard in many urban centres across the globe. Prominent sources of pollution include diesel and gasoline vehicles, as well as manufacturing plants, power generation processes, and other industrial activity. In order to help understand and address pollution levels, a number of cities are installing sensor arrays; these installations will in future support monitoring and tracking of pollutants, and also underpin a range of possibilities for forecasting and mitigation. In this paper we describe an approach which forecasts the future flow and intensity of pollutants around an urban area, given recent historic sensor streams. The approach employs a cellular automaton, whose parameters are learned and adapted online by an evolutionary algorithm.
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