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Land use regression modeling for fine participate matters in Bangkok, Thailand, using time-variant predictors: Effects of seasonal factors, open biomass burning, and traffic-related factors

机译:土地利用回归建模在曼谷,泰国的曼谷,使用时变预测因子:季节性因素的影响,开放生物量燃烧,以及与交通相关的因素

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摘要

In recent years, as the level of fine particulate matter (PM2.5) concentration has become more closely monitored in Thailand and its harmful effects on health have been widely recognized by the public, the Thai government has debated various measures to improve air quality. In this paper, the Land Use Regression (LUR) technique was used to model the relationship between the daily PM2.5 concentration and various predictor variables using data from the entire year of 2019. The results confirmed strong seasonal effects on PM2.5 and substantial effects of time-variant predictors, including open biomass burning and meteorological conditions. However, time-invariant variables, including traffic, transportation, and land use characteristics were generally weaker predictors in the LUR models. The results of the model based on data for the entire year showed better statistical fit and robustness than the seasonal models. The relatively low adjusted R-2 of the models developed in this study compared with previous LUR studies suggests that more detailed data, especially the traffic volume on roads nearby monitoring sites, might be necessary to improve the model's performance. Finally, the large buffer size of the open biomass burning predictor implied that the measures to reduce PM2.5 by limiting open biomass burning would require international cooperation as some fires within the buffer area occurred in neighboring countries outside the borders of Thailand.
机译:近年来,随着泰国的细颗粒物质(PM2.5)浓度的浓度更严格监测,其对卫生的有害影响得到了广泛认可的,泰国政府争论了各种措施,以提高空气质量。在本文中,使用2019年全年的数据来模拟每日PM2.5浓度和各种预测变量与各种预测变量之间的关系。结果证实了对PM2.5和实质性的强烈季节性影响时变预测因子的影响,包括开放生物质燃烧和气象条件。然而,时间不变的变量,包括交通,运输和土地利用特征通常在LUR模型中的预测器较弱。基于全年数据的模型结果显示出比季节模型更好的统计契合和鲁棒性。本研究中开发的模型的相对较低的调整R-2与之前的LUR研究相比表明,可能需要更详细的数据,特别是在监测网站的道路上的交通量,可能是提高模型的性能。最后,开放生物质燃烧预测因子的大缓冲尺寸暗示通过限制开放生物量燃烧减少PM2.5的措施将需要国际合作,因为缓冲区内的一些火灾发生在泰国边境之外的邻国发生。

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