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基于数据物理融合驱动方法的Ti-6A1-4V多轴疲劳寿命预测研究

Translated title of the contribution: A Data-Physics Hybrid Approach for Multiaxial Fatigue Life Prediction of Ti-6A1-4V Alloy
  • Northwestern Polytechnical University Xian

Research output: Contribution to journalArticlepeer-review

Abstract

With the increasing deployment of additively manufactured Ti-6A1-4V in aerospace and other high-performance structural applications, reliable prediction of fatigue life under complex multiaxial loading has become essential for safe design and lifecycle management. However, conventional data-driven approaches often lack predictive accuracy and physical consistency on small datasets and non-proportional multiaxial stress states, limiting their generalizability and interpretability. To address these limitations, this work computes the Mises equivalent stress directly from experimental loading histories and incorporates a Basquin-model-based theoretical fatigue life as prior physics knowledge. Building on this prior, we propose a residual connection-based physics-informed neural network (Pi-Res) that learns only the data-driven residual relative to the theoretical life, thereby merging mechanistic fidelity with statistical adaptability. Using laser powder bed fusion (L-PBF) Ti-6A1-4V as the case material, we conduct a systematic comparison against representative purely data-driven baselines—artificial neural networks, random forests, and support vector regression—as well as three canonical data-physics fusion strategies: physics-informed feature engineering, physics-informed loss functions, and physics-informed residual connections. Across multiaxial loading scenarios and distinct life regimes, the Pi-Res framework consistently demonstrates superior predictive accuracy alongside stronger adherence to physical trends implied by the stress-life relationship. Moreover, by anchoring the learning process to a mechanistic prior and delegating only the unexplained variance to the network, Pi-Res improves robustness under data scarcity and enhances interpretability of model behavior. These findings indicate that residual-style injection of domain knowledge offers a principled pathway to reconcile small-sample constraints with mechanistic coherence in fatigue modeling. Practically, the proposed approach provides a reliable tool to support fatigue life assessment, design margins, and maintenance scheduling for additively manufactured components. Theoretically, it illustrates a transferable physics-data fusion paradigm that can be extended to other material systems and generalized multiaxial fatigue problems where integrating prior physics with flexible learners is crucial.

Translated title of the contributionA Data-Physics Hybrid Approach for Multiaxial Fatigue Life Prediction of Ti-6A1-4V Alloy
Original languageChinese (Traditional)
Pages (from-to)571-588
Number of pages18
JournalGuti Lixue Xuebao/Acta Mechanica Solida Sinica
Volume46
Issue number5
DOIs
StatePublished - Oct 2025

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