Advancing symbolic regression for earth science with a focus on evapotranspiration modeling

被引:0
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作者
Qingliang Li [1 ]
Cheng Zhang [2 ]
Zhongwang Wei [3 ]
Xiaochun Jin [4 ]
Wei Shangguan [1 ]
Hua Yuan [4 ]
Jinlong Zhu [4 ]
Lu Li [1 ]
Pingping Liu [2 ]
Xiao Chen [4 ]
Yuguang Yan [3 ]
Yongjiu Dai [1 ]
机构
[1] Changchun Normal University,College of Computer Science and Technology
[2] Changchun Normal University,Research Institute for Scientific and Technological Innovation
[3] Jilin University,College of Computer Science and Technology
[4] Guangzhou,Southern Marine Science and Engineering Guangdong Laboratory (Zhuhai), and Guangdong Province Key Laboratory for Climate Change and Natural Disaster Studies, School of Atmospheric Sciences, Sun Yat
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D O I
10.1038/s41612-024-00861-5
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摘要
Artificial Intelligence (AI) assumes a pivotal role in Earth science, leveraging deep learning’s predictive capabilities. Despite its prevalence, the impact of AI on scientific discovery remains uncertain. In Earth sciences, the emphasis extends beyond mere accuracy, striving for groundbreaking discoveries with distinct physical properties essential for driving advancements through thorough analysis. Here, we introduce a novel knowledge-guided deep symbolic regression model (KG-DSR) incorporating prior knowledge of physical process interactions into the network. Using KG-DSR, we successfully derived the Penman-Monteith (PM) equation and generated a novel surface resistance parameterization. This new parameterization, grounded in fundamental cognitive principles, surpasses the conventional theory currently accepted in surface resistance parameterization. Importantly, the explicit physical processes generated by AI can generalize to future climate scenarios beyond the training data. Our results emphasize the role of AI in unraveling process intricacies and ushering in a new paradigm in tasks related to “AI for Land Surface Modeling.”
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