基于物理信息神经网络的含球形孔洞多孔延性单晶的数据驱动屈服准则

IF 2.9 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences Pub Date : 2023-10-01 DOI:10.1098/rspa.2023.0433
Liujun Wu, Jiaqi Fu, Haonan Sui, Xiaoying Wang, Bowen Tao, Pengyu Lv, Mohan Chen, Zifeng Yuan, Huiling Duan
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引用次数: 1

摘要

多孔材料的屈服准则被广泛用于模拟延性破坏过程中由孔隙率引起的屈服强度下降,这需要长期的建模工作来弥补目前的缺陷。为了提高其精度,本文提出了一种基于物理信息神经网络(PINNs)的多孔单晶屈服准则构建方法,并且训练良好的屈服函数能够预测不同孔隙度、应力状态和晶体取向的多孔单晶屈服应力。由晶体塑性有限元法生成的精确数据集保证了屈服函数的可靠性。特别是,通过将关联流规则嵌入到训练过程中,基于pinto的屈服函数不仅比解析方法(如变分非线性均匀化或极限分析)具有更高的精度,而且避免了前馈神经网络中出现的沟槽的不适当出现。当必须引入新的影响因素时,屈服函数可以在类似的非平凡过程中重建,具有良好的可移植性,使我们相信该框架具有扩展的潜力。
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A data-driven yield criterion for porous ductile single crystals containing spherical voids via physics-informed neural networks
Yield criteria for porous material have been widely used to model the decrease of yield strength caused by porosity during ductile failure which deserves long-term efforts in modelling to remedy the current drawbacks. To improve their accuracy, a method of building yield criteria for porous single crystals based on physics-informed neural networks (PINNs) has been developed, and the newly well-trained yield functions are capable of predicting the yield stress of porous single crystals with different porosity, stress states and crystal orientations. The reliability of the yield functions is guaranteed by the precise datasets generated by the crystal plasticity finite-element method. In particular, through embedding the associated flow rule into the training process, the PINN-based yield function not only achieves higher accuracy in comparison with the analytical methods (e.g. variational nonlinear homogenization or limit analysis) but also avoids the improper appearance of grooves that happens in feed-forward neural networks. The proposed framework enjoys an excellent portability as the yield functions can be rebuilt in the similar non-trivial procedure when new influencing factors must be introduced, which makes us believe in its potential to be extended.
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来源期刊
CiteScore
6.40
自引率
5.70%
发文量
227
审稿时长
3.0 months
期刊介绍: Proceedings A has an illustrious history of publishing pioneering and influential research articles across the entire range of the physical and mathematical sciences. These have included Maxwell"s electromagnetic theory, the Braggs" first account of X-ray crystallography, Dirac"s relativistic theory of the electron, and Watson and Crick"s detailed description of the structure of DNA.
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