Stress, strain, or displacement? A novel machine learning based framework to predict mixed mode I/II fracture load and initiation angle

IF 4.7 2区 工程技术 Q1 MECHANICS
Amir Mohammad Mirzaei
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引用次数: 0

Abstract

Accurate prediction of fracture load and initiation angle under complex loading conditions, like mixed mode I/II, is essential for reliable failure assessment. This paper aims to develop a machine learning framework for predicting fracture load and crack initiation angles by directly utilizing stress, strain, or displacement distributions represented by selected nodes as input features. Validation is conducted using experimental data across various mode mixities and specimen geometries for brittle materials. Among stress, strain, and displacement fields, it is shown that the stress-based features, when paired with Multilayer Perceptron models, achieve high predictive accuracy with R2 scores exceeding 0.86 for fracture load predictions and 0.94 for angle predictions. A comparison with the Theory of Critical Distances (Generalized Maximum Tangential Stress) demonstrates the high accuracy of the framework. Furthermore, the impact of input parameter selections is studied, and it is demonstrated that advanced feature selection algorithms enable the framework to handle different ranges and densities of the representative field. The framework’s performance was further validated for datasets with a limited number of data points and restricted mode mixities, where it maintained high accuracy. The proposed framework is computationally efficient and practical, and it operates without any supplementary post-processing steps, such as stress intensity factor calculations.
应力、应变还是位移?基于机器学习的I/II混合模式断裂载荷和起裂角预测框架
在I/II混合模式等复杂载荷条件下,准确预测断裂载荷和起裂角对可靠的破坏评估至关重要。本文旨在开发一个机器学习框架,通过直接利用由选定节点表示的应力、应变或位移分布作为输入特征来预测断裂载荷和裂纹起裂角。验证是通过各种模式混合物和脆性材料的试样几何形状的实验数据进行。结果表明,在应力、应变和位移场中,基于应力的特征与多层感知器模型配对时,预测精度较高,断裂载荷预测的R2分数超过0.86,角度预测的R2分数超过0.94。与临界距离理论(广义最大切向应力)的比较表明,该框架具有较高的精度。此外,研究了输入参数选择的影响,并证明了先进的特征选择算法使框架能够处理不同范围和密度的代表场。该框架的性能在数据点数量有限和模式混合受限的数据集上得到了进一步验证,并保持了较高的准确性。所提出的框架计算效率高、实用,且不需要任何补充的后处理步骤,如应力强度因子计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.70
自引率
13.00%
发文量
606
审稿时长
74 days
期刊介绍: EFM covers a broad range of topics in fracture mechanics to be of interest and use to both researchers and practitioners. Contributions are welcome which address the fracture behavior of conventional engineering material systems as well as newly emerging material systems. Contributions on developments in the areas of mechanics and materials science strongly related to fracture mechanics are also welcome. Papers on fatigue are welcome if they treat the fatigue process using the methods of fracture mechanics.
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