利用自动谢尔巴系统简化辐射模拟器训练的超参数优化

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Soonyoung Roh, Park Sa Kim, Hwan-Jin Song
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引用次数: 0

摘要

本研究旨在确定神经网络(NN)仿真器在数值天气预报中的最佳配置,通过比较仿真器在 Sherpa 库自动定义的多个隐藏层(1-5 层)中的性能,最大限度地减少试验和误差。我们的研究结果表明,Sherpa 仿真器在数值模拟中始终表现出良好的结果和稳定的性能,误差较小。最佳配置为一个和两个隐藏层,当使用两个隐藏层时,结果有所改善。Sherpa 定义的每个隐藏层的平均神经元数在 153 到 440 之间,与 CNT 相比,速度提高了 7-12 倍。这些结果为开发辐射物理 NN 仿真器提供了宝贵的启示。利用自动确定的超参数可以有效减少试错过程,同时保持稳定的结果。然而,由于本研究并未确定所有超参数的优化值,因此需要进一步实验来确定最合适的超参数值,以平衡速度和精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Streamlining hyperparameter optimization for radiation emulator training with automated Sherpa
This study aimed to identify the optimal configuration for neural network (NN) emulators in numerical weather prediction, minimizing trial and error by comparing emulator performance across multiple hidden layers (1–5 layers), as automatically defined by the Sherpa library. Our findings revealed that Sherpa-applied emulators consistently demonstrated good results and stable performance with low errors in numerical simulations. The optimal configurations were observed with one and two hidden layers, improving results when two hidden layers were employed. The Sherpa-defined average neurons per hidden layer ranged between 153 and 440, resulting in a speedup relative to the CNT of 7–12 times. These results provide valuable insights for developing radiative physical NN emulators. Utilizing automatically determined hyperparameters can effectively reduce trial-and-error processes while maintaining stable outcomes. However, further experimentation is needed to establish the most suitable hyperparameter values that balance both speed and accuracy, as this study did not identify optimized values for all hyperparameters.
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来源期刊
Geoscience Letters
Geoscience Letters Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
4.90
自引率
2.50%
发文量
42
审稿时长
25 weeks
期刊介绍: Geoscience Letters is the official journal of the Asia Oceania Geosciences Society, and a fully open access journal published under the SpringerOpen brand. The journal publishes original, innovative and timely research letter articles and concise reviews on studies of the Earth and its environment, the planetary and space sciences. Contributions reflect the eight scientific sections of the AOGS: Atmospheric Sciences, Biogeosciences, Hydrological Sciences, Interdisciplinary Geosciences, Ocean Sciences, Planetary Sciences, Solar and Terrestrial Sciences, and Solid Earth Sciences. Geoscience Letters focuses on cutting-edge fundamental and applied research in the broad field of the geosciences, including the applications of geoscience research to societal problems. This journal is Open Access, providing rapid electronic publication of high-quality, peer-reviewed scientific contributions.
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