物理引导的符号神经网络揭示了描述地面运动的最佳函数形式

IF 4.2 2区 工程技术 Q1 ENGINEERING, GEOLOGICAL Soil Dynamics and Earthquake Engineering Pub Date : 2024-11-21 DOI:10.1016/j.soildyn.2024.109100
Xianwei Liu , Su Chen , Lei Fu , Xiaojun Li , Fabrice Cotton
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引用次数: 0

摘要

本研究提出了一种利用物理引导的符号神经网络(PGSNN)进行地面运动建模的新框架。符号神经网络为知识发现提供了一种新方法,为从数据中自动发现预测功能形式提供了一个独特的视角。这种方法与传统方法不同,它不依赖于预定义方程。相反,它采用符号运算符在高维空间中自由组合输入参数。这种方法通过结合物理指导来解决数据不平衡的问题,以确保模型产生的结果符合既定的物理原理。由此产生的方程符合工程地震学界的期望,特别是在震级-距离范围内,经典方程已得到很好的校准。通过计算测量值和预测值之间的残差及其标准偏差,评估了 PGSNN 在不同烈度测量(PGA、PGV 和 PSA)中的预测性能。使用新的事件记录对该模型的预测能力进行了验证。结果表明,PGSNN 的预测性能与传统方法相当。
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Physics-guided symbolic neural network reveals optimal functional forms describing ground motions
This study presents a novel framework for ground motion modelling utilizing Physics-Guided Symbolic Neural Networks (PGSNN). Symbolic neural networks offer a new method for knowledge discovery, providing a unique perspective for automatically uncovering predictive functional forms from data. This approach differs from traditional methods as it does not rely on predefined equations. Instead, it employs symbolic operators to freely combine input parameters in a high-dimensional space. This method addresses the problem of data imbalance by incorporating physical guidance to ensure that the model produces results that are consistent with established physical principles. The resulting equations align with the expectations of the engineering seismology community, particularly within the magnitude-distance ranges, where classical equations are well calibrated. The prediction performance of the PGSNN, evaluated across different intensity measures (PGA, PGV, and PSA), was assessed by calculating the residuals between measured and predicted values and their standard deviations. The predictive capability of this model was verified using new event records. The results indicate that the prediction performance of the PGSNN is comparable to those of traditional methods.
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来源期刊
Soil Dynamics and Earthquake Engineering
Soil Dynamics and Earthquake Engineering 工程技术-地球科学综合
CiteScore
7.50
自引率
15.00%
发文量
446
审稿时长
8 months
期刊介绍: The journal aims to encourage and enhance the role of mechanics and other disciplines as they relate to earthquake engineering by providing opportunities for the publication of the work of applied mathematicians, engineers and other applied scientists involved in solving problems closely related to the field of earthquake engineering and geotechnical earthquake engineering. Emphasis is placed on new concepts and techniques, but case histories will also be published if they enhance the presentation and understanding of new technical concepts.
期刊最新文献
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