Proposed for presentation at the AGU Fall Meeting 2020 held December 1-17, 2020.最新文献

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Performance-Portability Results for the Non-Hydrostatic Atmosphere Dycore of E3SM at Cloud-Resolving Resolutions. 云分辨分辨率下E3SM非流体静力大气Dycore的性能可移植性结果。
Proposed for presentation at the AGU Fall Meeting 2020 held December 1-17, 2020. Pub Date : 2020-11-01 DOI: 10.1002/essoar.10504848.1
Luca Bertagna, O. Guba, M. Taylor, J. Foucar, A. Bradley, A. Salinger
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引用次数: 0
Machine Learning Application for Permeability Estimation of Three-Dimensional Rock Images 机器学习在三维岩石图像渗透率估算中的应用
H. Yoon, D. Melander, Stephen J Verzi
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引用次数: 0
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