A mathematical model for predicting indoor PM2.5 concentration under different ventilation methods in residential buildings (vol 82, pg 561, 2020

被引:1
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作者
Xie, W.
Fan, Y.
Zhang, X.
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10.1177/0143624420920027
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TU [建筑科学];
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0813 ;
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页码:653 / 653
页数:1
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