Estimating the Mean of PM2.5 with Missing Data in the Area Around Electricity Generating Authority of Thailand Using the Improved Compromised Imputation Method

Q3 Agricultural and Biological Sciences
Tanart Dachochaiporn, Kanisa Chodjuntug
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引用次数: 0

Abstract

Particulate matter with an aerodynamic diameter of less than 2.5 m or , is one of the air pollutants that has been found to be at unsafe levels for a number of years in Thailand, leading to public health concerns. In order to lessen the detrimental effects of air pollution, monitoring and analysis of concentration are crucial. Following the study of data from the Pollution Control Department Report in the area around the Electricity Generating Authority of Thailand in January 2019, it was found that there was data missing in the information. It is well-known that missing data can reduce the accuracy of data analysis. To solve the missing data problem, this paper proposes an improved method of compromised imputation and a corresponding resultant estimator to deal with estimating the mean of concentrations in the area. The bias and mean square error of the estimator obtained from the proposed method were derived. The conditions which favor the performance of our estimator over other estimators obtained from the mean, ratio, and compromised imputation methods were obtained using mean square error to apply in the area. The mean of concentrations in this case using the proposed estimator was equal to 47.13 g/m3, indicating that it did not exceed unsafe levels (<50 g/m3) under certain conditions. In order to support more accurate data analysis that will lead to effective management of air pollution problems in the future, this research proposes a new method that is more effective than the existing methods under missing data problem.
利用改进折中法估算泰国发电局周边地区缺失数据的PM2.5均值
空气动力学直径小于2.5的颗粒物m或,是泰国多年来被发现处于不安全水平的空气污染物之一,导致公众健康问题。为了减少空气污染的有害影响,浓度的监测和分析至关重要。根据2019年1月泰国发电局周围地区污染控制部门报告的数据研究,发现信息中缺少数据。众所周知,缺少数据会降低数据分析的准确性。为了解决数据缺失问题,本文提出了一种改进的折衷插补方法和相应的结果估计器来估计该区域的浓度平均值。推导了用该方法得到的估计量的偏差和均方误差。与从平均值、比率和折衷插补方法获得的其他估计量相比,有利于我们的估计量性能的条件是使用均方误差应用于该区域获得的。在这种情况下,使用所提出的估计器的浓度平均值等于47.13g/m3,表明其未超过不安全水平(<50g/m3)。为了支持更准确的数据分析,从而在未来有效地管理空气污染问题,本研究提出了一种在数据缺失问题下比现有方法更有效的新方法。
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
Current Applied Science and Technology
Current Applied Science and Technology Agricultural and Biological Sciences-Agricultural and Biological Sciences (miscellaneous)
CiteScore
1.50
自引率
0.00%
发文量
51
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