伊朗马什哈德大都市CO污染物的多元线性回归预测

IF 3.6 3区 社会学 Q1 GEOGRAPHY
Mohammad Rahim Rahnama, Shirin Sabaghi Abkooh
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引用次数: 1

摘要

鉴于一氧化碳(CO)在急性健康威胁中的重要性,已经在不同国家和城市(中国272个城市和全球337个城市)开展了关于每日死亡率与CO之间关系的研究,而对城市(特别是发展中国家)CO污染物影响因素的空间分析却很少。因此,本研究测量了五个环境社会变量(esv)对伊朗马什哈德大都市CO污染物空间分布的影响。2019年在356 km2范围内的23个空气污染物监测站收集CO浓度数据。利用Sentinel 2A和3卫星图像,在ArcGIS和TerrSet软件中,采用线性和多元回归方法测量5个变量与CO污染物之间的关系。结果表明,全市CO平均浓度为1.56 ppm。但其范围在0.171到2.907 ppm之间,与目前的标准相比,这个数字很低,并不表明情况危急。多元回归结果表明,42%的CO浓度方差可以由自变量解释。在5个自变量中,地表温度(LST)和数字高程模型(DEM)变量的beta值对人口密度、归一化植被指数(NDVI)和归一化建筑指数(NDBI)的beta值分别为负和正。应该指出的是,最强的相关变量是人口密度。CO污染物的空间分布预测表明,北京市可划分为3个区域:(1)城市南坡和西南坡浓度较低;(2)中等浓度的中心区域;(3)城市的北部和东北部地区,低收入人群集中,破旧的汽车、摩托车和工业车间较多。CO浓度高的地区需要城市管理者更多的关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of CO pollutant in Mashhad metropolis, Iran: Using multiple linear regression

Prediction of CO pollutant in Mashhad metropolis, Iran: Using multiple linear regression

Given the importance of carbon monoxide (CO) in acute health threats, studies have been conducted in different countries and cities (272 cities in China and 337 cities on a global scale) on the relationship between daily mortality and CO while the spatial analysis of factors affecting CO pollutant in cities, especially in developing countries, has rarely been done. Accordingly, this research has measured the effect of five environmental-social variables (ESVs) on the spatial distribution of CO pollutants in the metropolis of Mashhad, Iran. CO concentration data were collected in 23 air pollutant monitoring stations in an area of 356 km2 in 2019. Then, the relationship between five variables and CO pollutant were measured using linear and multiple regression by Sentinel 2A and 3 satellite images in ArcGIS and TerrSet software. The results show that the mean CO concentration averages at 1.56 ppm in the whole city. But its range varies between 0.171 and 2.907 ppm, which is a low figure compared with presented standards and does not indicate a critical situation. The results of multiple regression indicate that 42% of the variance in CO concentration is explained by independent variables. Among five independent variables, the beta value of the land surface temperature (LST) and digital elevation model (DEM) variables is negative and positive for the other three variables, including population density, normalised difference vegetation index (NDVI) and normalised difference built-up index (NDBI). It should be noted that the strongest correlating variable is population density. Prediction of the spatial distribution of CO pollutants shows the division of the city into three areas: (1) the south and southwest slopes of the city with a low concentration; (2) central areas with a medium concentration; and (3) northern and northeastern areas of the city with a high concentration where low-income groups reside and there are more worn-out vehicles, motorcycles and industrial workshops. Areas with high CO concentration need more attention from urban managers.

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来源期刊
CiteScore
4.10
自引率
3.30%
发文量
69
期刊介绍: The Geographical Journal has been the academic journal of the Royal Geographical Society, under the terms of the Royal Charter, since 1893. It publishes papers from across the entire subject of geography, with particular reference to public debates, policy-orientated agendas.
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