Application of Poisson Hidden Markov Model to Predict Number of PM2.5 Exceedance Days in Tehran During 2016-2017

Q4 Environmental Science
F. Sarvi, A. Nadali, M. Khodadost, Melika Kharghani Moghaddam, M. Sadeghifar
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引用次数: 4

Abstract

PM2.5 is an important indicator of air pollution. This pollutant can result in lung and respiratory problems in people. The aim of the present study was to predict number of PM2.5 exceedance days using Hidden Markov Model considering Poisson distribution as an indicator for people susceptible to that particular level of air quality. In this study, evaluations were made for number of PM2.5 exceedance days in Tehran, Iran, from Oct. 2010 to Dec. 2015. The Poisson hidden Markov model was applied considering various hidden states to make a two-year forecast for number of PM2.5 exceedance days.We estimated the Poisson Hidden Markov’s parameters (transition matrix, probability, and lambda) by using maximum likelihood method. By applying the Akaike Information Criteria, the hidden Markov model with three states was used to make the prediction. The results of forecasting mean, median, mode, and interval for the three states of Poisson hidden Markov model are reported. The results showed that the number of exceedance days in a month for the next two years using the third state of the model would be 5 to 16 days. The predicted mode and mean for the third months afterward at the third state were 11 and 11. These predictions showed that number of exceedance days (predicted mean of 6.87 to 11.39 days) is relatively high for sensitive individuals according to the PM2.5 Air Quality Index. Thus, it is essential to monitor levels of suspended particulate air pollution in Tehran.
泊松隐马尔可夫模型在2016-2017年德黑兰PM2.5超标天数预测中的应用
PM2.5是空气污染的重要指标。这种污染物会导致人的肺部和呼吸系统问题。本研究的目的是使用隐马尔可夫模型预测PM2.5超标天数,该模型将泊松分布作为易受特定空气质量水平影响的人群的指标。在这项研究中,对2010年10月至2015年12月伊朗德黑兰PM2.5超标天数进行了评估。应用泊松隐马尔可夫模型,考虑不同的隐态,对PM2.5超标天数进行两年预测。我们使用最大似然法估计了泊松隐马尔可夫参数(转移矩阵、概率和lambda)。应用Akaike信息准则,采用三态隐马尔可夫模型进行预测。报道了泊松隐马尔可夫模型三种状态的均值、中值、模和区间的预测结果。结果表明,使用该模型的第三种状态,未来两年一个月的超标天数将为5至16天。在第三种状态下,第三个月的预测模式和平均值分别为11和11。这些预测表明,根据PM2.5空气质量指数,敏感个体的超标天数(预测平均值为6.87至11.39天)相对较高。因此,监测德黑兰的悬浮颗粒物空气污染水平至关重要。
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
Avicenna Journal of Environmental Health Engineering
Avicenna Journal of Environmental Health Engineering Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
1.00
自引率
0.00%
发文量
8
审稿时长
8 weeks
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