首页> 外文期刊>Environmental Monitoring and Assessment >Modeling the spatio-temporal dynamics of air pollution index based on spatial Markov chain model
【24h】

Modeling the spatio-temporal dynamics of air pollution index based on spatial Markov chain model

机译:基于空间马尔可夫链模型建模空气污染指数的时空动态

获取原文
获取原文并翻译 | 示例
       

摘要

An environmental problem which is of concern across the globe nowadays is air pollution. The extent of air pollution is often studied based on data on the observed level of air pollution. Although the analysis of air pollution data that is available in the literature is numerous, studies on the dynamics of air pollution with the allowance for spatial interaction effects through the use of the Markov chain model are very limited. Accordingly, this study aims to explore the potential impact of spatial dependence over time and space on the distribution of air pollution based on the spatial Markov chain (SMC) model using the longitudinal air pollution index (API) data. This SMC model is pertinent to be applied since the daily data of API from 2012 to 2014 that have been gathered from 37 different air quality stations in Peninsular Malaysia is found to exhibit the property of spatial autocorrelation. Based on the spatial transition probability matrices found from the SMC model, specific characteristics of air pollution are studied in the regional context. These characteristics are the long-run proportion and the mean first passage time for each state of air pollution. It is found that the probability for a particular station's state to remain good is 0.814 if its neighbors are in a good state of air pollution and 0.7082 if its neighbors are in a moderate state. For a particular station having neighbors in a good state of air pollution, the proportion of time for it to continue being in a good state is 0.6. This proportion reduces to 0.4, 0.01, and 0 for the cell of moderate, unhealthy, and very unhealthy states, respectively. In addition, there exists a significant spatial dependence of API, indicating that air pollution for a particular station is dependent on the states of the neighboring stations.
机译:现在,全球顾虑的环境问题是空气污染。通常基于关于观察到的空气污染水平的数据进行空气污染程度。虽然文献中可用的空气污染数据分析了很多,但通过使用马尔可夫链模型的空间相互作用效应的津贴的动态研究非常有限。因此,本研究旨在利用纵向空气污染指数(API)数据,探讨空间依赖性时间和空间空气污染分布的潜在影响。该SMC模型与2012年至2014年API的日常数据从半岛马来西亚的37个不同的空气质量站收集到2012年至2014年以来,可以应用于展示空间自相关的性质。基于从SMC模型中发现的空间过渡概率矩阵,在区域背景下研究了空气污染的特定特征。这些特征是每种空气污染状态的长期比例和平均第一通道时间。如果其邻居处于空气污染状态良好状态,特定站状态保持良好的特定站状态保持良好的概率为0.814,如果其邻居处于中等状态,则其邻居是0.7082。对于具有良好空气污染状态的邻居的特定站,其继续处于良好状态的时间比例为0.6。该比例分别为中等,不健康和非常不健康的国家的细胞减少到0.4,0.01和0。另外,API存在显着的空间依赖性,表明特定站的空气污染取决于邻近站的状态。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号