推进结构失效分析与物理通知机器学习在工程应用

IF 11.6 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Benjin Wang, Peng Zhang, Yujie Xiang, Dalei Wang, Baijian Wu, Xianqiao Wang, Keke Tang, Airong Chen
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引用次数: 0

摘要

虽然机器学习(ML)在结构故障分析方面显示出巨大的潜力,但纯数据驱动的方法面临着严重的限制,包括数据稀缺性、缺乏物理一致性以及在安全关键应用程序中的可解释性差。物理信息ML (PIML)通过将物理原理与数据驱动方法相结合来解决这些挑战,从而在保持物理一致性的同时实现准确和可解释的预测。本研究对结构失效分析中的PIML实现策略进行了系统分类,将这些方法分为四个不同的类别:物理指导的数据操作、物理启发的架构设计、物理约束的损失函数和混合物理- ml模型。我们研究了整个失效生命周期的应用,从机制分析和疲劳寿命预测到结构健康监测和失效后分析,以展示不同的PIML策略如何应对特定的工程挑战。通过对代表性研究的批判性评估,我们确定了当前的局限性,包括数据集成的复杂性、物理形式化的困难,以及准确性和效率之间的计算权衡。未来的研究方向是强调多源知识融合、可转移的PIML框架和增强的故障后分析能力。该系统框架为根据应用需求和可用资源选择合适的PIML策略提供了明确的指导,从而提高了工程结构的可靠性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Structural Failure Analysis with Physics-Informed Machine Learning in Engineering Applications
While machine learning (ML) shows significant potential for structural-failure analysis, purely data-driven approaches face critical limitations, including data scarcity, lack of physical consistency, and poor interpretability in safety–critical applications. Physics-informed ML (PIML) addresses these challenges by integrating physical principles with data-driven methods, thereby enabling accurate and interpretable predictions, while maintaining physical consistency. This study presents a systematic categorization of PIML implementation strategies in structural-failure analysis, classifying the approaches into four distinct categories: physics-guided data manipulation, physics-inspired architectural design, physics-constrained loss functions, and hybrid physics–ML models. We examined the applications across the complete failure lifecycle, from mechanism analysis and fatigue-life prediction to structural-health monitoring and post-failure analysis, to demonstrate how different PIML strategies address specific engineering challenges. Through a critical evaluation of representative studies, we identified the current limitations, including data-integration complexities, physics-formalization difficulties, and computational trade-offs between accuracy and efficiency. Future research directions emphasize multisource knowledge fusion, transferable PIML frameworks, and enhanced post-failure analysis capabilities. This systematic framework provides clear guidance for selecting appropriate PIML strategies based on application requirements and available resources, thereby advancing the reliability and safety of engineering structures.
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来源期刊
Engineering
Engineering Environmental Science-Environmental Engineering
自引率
1.60%
发文量
335
审稿时长
35 days
期刊介绍: Engineering, an international open-access journal initiated by the Chinese Academy of Engineering (CAE) in 2015, serves as a distinguished platform for disseminating cutting-edge advancements in engineering R&D, sharing major research outputs, and highlighting key achievements worldwide. The journal's objectives encompass reporting progress in engineering science, fostering discussions on hot topics, addressing areas of interest, challenges, and prospects in engineering development, while considering human and environmental well-being and ethics in engineering. It aims to inspire breakthroughs and innovations with profound economic and social significance, propelling them to advanced international standards and transforming them into a new productive force. Ultimately, this endeavor seeks to bring about positive changes globally, benefit humanity, and shape a new future.
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