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Assessment of PM10 Enhancement by Yellow Sand on the Air Quality of Taipei, Taiwan in 2001
Authors:Shuenn-Chin Chang  Chung-Te Lee
Institution:(1) Graduate Institute of Environmental Engineering, National Central University, 300 Jhongda Rd., Jhongli, 32001, Taiwan, Republic of China
Abstract:The impact of long-range transport of yellow sand from Asian Continent to the Taipei Metropolitan Area (Taipei) not only deteriorates air quality but also poses health risks to all, especially the children and the elderly. As such, it is important to assess the enhancement of PM10 during yellow sand periods. In order to estimate PM10 enhancement, we adopted factor analysis to distinguish the yellow-sand (YS) periods from non-yellow-sand (NYS) periods based on air quality monitoring records. Eight YS events were identified using factor analysis coupling with an independent validation procedure by checking background site values, examining meteorological conditions, and modeling air mass trajectory from January 2001 to May 2001. The duration of each event varied from 11 to 132 h, which was identified from the time when the PM10 level was high, and the CO and NO x levels were low. Subsequently, we used the artificial neural network (ANN) to simulate local PM10 levels from related parameters including local gas pollutants and meteorological factors during the NYS periods. The PM10 enhancement during the YS periods is then calculated by subtracting the simulated PM10 from the observed PM10 levels. Based on our calculations, the PM10 enhancement in the maximum hour of each event ranged from 51 to 82%. Moreover, in the eight events identified in 2001, it was estimated that a total amount of 7,210 tons of PM10 were transported by yellow sand to Taipei. Thus, in this study, we demonstrate that an integration of factor analysis with ANN model could provide a very useful method in identifying YS periods and in determining PM10 enhancement caused by yellow sand.
Keywords:Asian dust storm  Long-range transport  Artificial neural network  Factor analysis  Taipei air quality
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