A Mobile Sensing Based Stochastic Model to Forecast AQI Variation of Pollution Hotspots on Urban Neighborhoods

IF 0.3
Ena Jain, Debopam Acharaya
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引用次数: 0

Abstract

Due to massive population migration, most Indian cities have experienced fast urbanization, resulting in a significant increase in construction activity, traffic pollution, and uncontrolled expansion. Some of these cities also have a high concentration of polluting industries, significantly worsening air quality. Pollution hotspots exist in certain cities, with levels well surpassing the authorized mark. Air pollution is generally classified as extremely hyper-local, which signifies that the pollution index decreases as we travel away from hotspots. Since the pollution data collected from traditional sources is occasionally inadequate, the extended consequences of such hotspots on neighboring communities remain unidentified. If the flux in pollution values in neighboring locales is efficiently mapped for locations encountered travelling further from identified hotspots, AQI levels for these areas can be forecasted and projected. Knowledge from monitoring these levels will aid the city administrations and government in drafting suitable proposals for susceptible establishments like hospitals and schools. In this research work, the Air Quality Index (AQI) data was accurately gathered at an identified pollution hotspot and its immediate neighborhood over a defined period along a specific route and a mathematical model was developed to forecast how AQI varies with distance for best results. Stochastic models such as ARMA and ARIMA were used to create the predicted model. Its reliability and performance were measured using various forecasting error calculation methods such as MPE (Mean Percentage Error), MAP (Mean Absolute Percentage), MAD (Mean Absolute Deviation), RMSE (Root Mean Square Error), and MSE (Mean Square Error).  
基于移动感知的城市住区污染热点地区空气质量指数随机预测模型
由于大量人口迁移,大多数印度城市都经历了快速城市化,导致建筑活动、交通污染和不受控制的扩张显著增加。其中一些城市的污染工业高度集中,空气质量严重恶化。一些城市存在污染热点,污染水平远远超过规定标准。空气污染通常被归类为极度超局部,这意味着我们远离热点地区,污染指数就会下降。由于从传统来源收集的污染数据有时是不充分的,这些热点对邻近社区的长期影响仍未确定。如果能有效地绘制出邻近地区污染值的通量,使其远离已确定的热点地区,就可以预测和预测这些地区的空气质量水平。监测这些水平所获得的知识将有助于城市管理部门和政府为医院和学校等易受影响的机构起草适当的建议。在这项研究工作中,在确定的污染热点及其邻近地区,沿着特定的路线,在规定的时间内准确收集空气质量指数(AQI)数据,并建立数学模型来预测AQI随距离的变化,以获得最佳结果。采用ARMA和ARIMA等随机模型建立预测模型。采用MPE (Mean Percentage error)、MAP (Mean Absolute Percentage)、MAD (Mean Absolute Deviation)、RMSE (Root Mean Square error)和MSE (Mean Square error)等多种预测误差计算方法来衡量其可靠性和性能。
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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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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