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Retrospective prediction of intraurban spatiotemporal distribution of PM2.5 in Taipei
Authors:Yu Hwa-Lung  Wang Chih-Hsin
Institution:1. Department of Automation Engineering, Kim Chaek University of Technology, Pyongyang 950003, Democratic People''s Republic of Korea;2. Department of Geology, Kim Il Sung University, Pyongyang 999093, Democratic People''s Republic of Korea;3. School of Information Science, Kim Il Sung University, Pyongyang 999093, Democratic People''s Republic of Korea;4. Department of Metallurgical Engineering, Kim Chaek University of Technology, Pyongyang 950003, Democratic People''s Republic of Korea;5. Digital Library, Kim Chaek University of Technology, Pyongyang 950003, Democratic People''s Republic of Korea;6. Information Center, Kim Chaek University of Technology, Pyongyang 950003, Democratic People''s Republic of Korea;1. Shanghai Key Laboratory of Atmospheric Particle Pollution and Prevention, Department of Environmental Science & Engineering, Fudan University, Shanghai 200433, China;2. The Key Laboratory of Geographic Information Science of the Ministry of Education, School of Geographical Sciences, East China Normal University, Shanghai 200241, China;3. School of Urban and Planning, Yancheng Teachers University, Yancheng 224051, China
Abstract:Numerous studies have shown that fine airborne particulate matter particles (PM2.5) are more dangerous to human health than coarse particles, e.g. PM10. The assessment of the impacts to human health or ecological effects by long-term PM2.5 exposure is often limited by lack of PM2.5 measurements. In Taipei, PM2.5 was not systematically observed until August, 2005. Taipei is the largest metropolitan area in Taiwan, where a variety of industrial and traffic emissions are continuously generated and distributed across space and time. PM-related data, i.e., PM10 and Total Suspended Particles (TSP) are independently systematically collected by different central and local government institutes. In this study, the retrospective prediction of spatiotemporal distribution of monthly PM2.5 over Taipei will be performed by using Bayesian Maximum Entropy method (BME) to integrate (a) the spatiotemporal dependence among PM measurements (i.e. PM10, TSP, and PM2.5), (b) the site-specific information of PM measurements which can be certain or uncertain information, and (c) empirical evidence about the PM2.5/PM10 and PM10/TSP ratios. The performance assessment of the retrospective prediction for the spatiotemporal distribution of PM2.5 was performed over space and time during 2003–2004 by comparing the posterior pdf of PM2.5 with the observations. Results show that the incorporation of PM10 and TSP observations by BME method can effectively improve the spatiotemporal PM2.5 estimation in the sense of lower mean and standard deviation of estimation errors. Moreover, the spatiotemporal retrospective prediction with PM2.5/PM10 and PM2.5/TSP ratios can provide good estimations of the range of PM2.5 levels over space and time during 2003–2004 in Taipei.
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