International journal of applied engineering research : IJAER最新文献

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Modeling Study of the Particulate Matter in Lima with the WRF-Chem Model: Case Study of April 2016. WRF-Chem模式对利马地区颗粒物的模拟研究:以2016年4月为例
International journal of applied engineering research : IJAER Pub Date : 2018-06-15 DOI: 10.37622/IJAER/13.11.2018.10129-10141
O. Sánchez-Ccoyllo, C. G. Ordoñez-Aquino, Á. Muñoz, Alan Llacza, M. Andrade, Yang Liu, Warren Réategui-Romero, G. Brasseur
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引用次数: 14
Modeling Study of the Particulate Matter in Lima with the WRF-Chem Model: Case Study of April 2016. WRF-Chem模式对利马地区颗粒物的模拟研究:以2016年4月为例
Odón R Sánchez-Ccoyllo, Carol G Ordoñez-Aquino, Ángel G Muñoz, Alan Llacza, María Fátima Andrade, Yang Liu, Warren Reátegui-Romero, Guy Brasseur
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引用次数: 0
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