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Identification of the most influential areas for air pollution control using XGBoost and Grid Importance Rank

机译:使用XGBoost和网格重视等级识别空气污染控制最有影响力的领域

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Due to the rising concern about air quality, air pollution prediction and control has been a hot research domain for scholars in recent years. Many studies have been conducted to predict and control air pollution using different kinds of methods. However, these studies did not explore the air quality interactions between areas and areas. They cannot answer questions like "which area would have a more substantial spatial influence on others?", and "which area should be of focus when controlling the air pollution considering the air movements?" To identify the most influential areas for air pollution control can effectively benefit policymaking and achieve better results. To this end, this study proposes a methodology framework combining XGBoost and Grid Importance Rank (GIR). The GIR technique is inspired by the Google page rank algorithm, which is widely used in ranking web pages based on their influences. Combined with the mechanism of the variable importance in XGBoost, the proposed method can identify the areas that have the most substantial influence on others, and these areas should be of focus when controlling the air quality. A case study in the northwestern U.S. is conduced to validate our methodology. The results show that XGBoost can well model air pollution interactions between areas and areas. The modeling R-square of PM2.5 forecasting can reach 0.9631. The importance map indicates that the government should give priority to control air pollution in southern Oregon considering the impact of this region on the northwestern U.S. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于对空气质量令人担忧,空气污染预测和控制近年来一直是学者的热门研究领域。已经进行了许多研究以使用不同种类的方法预测和控制空气污染。然而,这些研究没有探索地区和地区之间的空气质量相互作用。他们无法回答“哪个领域对他人有更大的空间影响?”,以及在考虑空气运动的空气污染时应该焦点的问题?“为了确定空气污染控制最有影响力的区域可以有效地利用政策制定并实现更好的结果。为此,本研究提出了一种组合XGBoost和网格重要性等级(GIR)的方法框架。 GIR技术由Google Page Rank算法的启发,它基于其影响,广泛用于排名网页。结合XGBoost变量重要性的机制,所提出的方法可以识别对他人具有最大影响的区域,并且在控制空气质量时应焦点。美国西北部的案例研究是为了验证我们的方法。结果表明,XGBoost可以在地区和地区之间进行模型空气污染相互作用。 PM2.5预测的建模R-Square可以达到0.9631。重要性地图表明政府应优先考虑俄勒冈州南部南部的空气污染,考虑到该地区对美国西北部的影响。(c)2020 elestvier有限公司保留所有权利。

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