the Creative Commons Attribution 4.0 License.
the Creative Commons Attribution 4.0 License.
WRF-GC (v1.0): online coupling of WRF (v3.9.1.1) and GEOS-Chem (v12.2.1) for regional atmospheric chemistry modeling – Part 1: Description of the one-way model
Haipeng Lin
Heng Tian
Yaping Ma
Lijuan Zhang
Daniel J. Jacob
Robert M. Yantosca
Melissa P. Sulprizio
Elizabeth W. Lundgren
Jiawei Zhuang
Qiang Zhang
Lin Zhang
Lu Shen
Jianping Guo
Sebastian D. Eastham
Christoph A. Keller
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