基于使用单轴疲劳数据预训练的模块化神经网络的多轴疲劳寿命预测

IF 1.5 4区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Lei Gan, Anbin Wang, Zheng Zhong, Hao Wu
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引用次数: 0

摘要

目的 数据驱动模型越来越多地用于预测许多承受多轴载荷的工程部件的疲劳寿命。然而,由于对数据的要求较高,这些模型成本高昂,而且在数据有限的应用场景中表现不佳。设计/方法/途径从经验多轴疲劳模型的建模策略中汲取灵感,提出了一种基于模块化神经网络的模型,该模型由三个子网络串联而成:前两个子网络使用单轴疲劳数据进行预训练,然后连接到使用少量多轴疲劳数据训练的第三个子网络。此外,还使用了一般材料属性和必要的加载参数作为输入,以取代明确的损伤参数,从而确保所提模型的通用性。研究结果基于广泛的实验评估,证明所提模型在预测精度和数据需求方面优于经验模型和传统的数据驱动模型。原创性/价值所提出的模型探索了一条将单轴疲劳数据纳入多轴疲劳寿命数据驱动模型的新途径,在保证良好预测精度的前提下减少了对数据的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiaxial fatigue life prediction based on modular neural network pretrained with uniaxial fatigue data
PurposeData-driven models are increasingly being used to predict the fatigue life of many engineering components exposed to multiaxial loading. However, owing to their high data requirements, they are cost-prohibitive and underperforming for application scenarios with limited data. Therefore, it is essential to develop an advanced model with good applicability to small-sample problems for multiaxial fatigue life assessment.Design/methodology/approachDrawing inspiration from the modeling strategy of empirical multiaxial fatigue models, a modular neural network-based model is proposed with assembly of three sub-networks in series: the first two sub-networks undergo pretraining using uniaxial fatigue data and are then connected to a third sub-network trained on a few multiaxial fatigue data. Moreover, general material properties and necessary loading parameters are used as inputs in place of explicit damage parameters, ensuring the universality of the proposed model.FindingsBased on extensive experimental evaluations, it is demonstrated that the proposed model outperforms empirical models and conventional data-driven models in terms of prediction accuracy and data demand. It also holds good transferability across various multiaxial loading cases.Originality/valueThe proposed model explores a new avenue to incorporate uniaxial fatigue data into the data-driven modeling of multiaxial fatigue life, which can reduce the data requirement under the promise of maintaining good prediction accuracy.
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来源期刊
Engineering Computations
Engineering Computations 工程技术-工程:综合
CiteScore
3.40
自引率
6.20%
发文量
61
审稿时长
5 months
期刊介绍: The journal presents its readers with broad coverage across all branches of engineering and science of the latest development and application of new solution algorithms, innovative numerical methods and/or solution techniques directed at the utilization of computational methods in engineering analysis, engineering design and practice. For more information visit: http://www.emeraldgrouppublishing.com/ec.htm
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