This study takes advantage of recent advances in machine learning to establish a physics-based data analytic platform for distributed reconstruction of mechanical properties in layered components from full waveform data. In this vein, two logics, namely the direct inversion and physics-informed neural networks (PINNs), are explored. The direct inversion entails three steps: (i) spectral denoising and differentiation of the full-field data, (ii) building appropriate neural maps to approximate the profile of unknown physical and regularization parameters on their respective domains, and (iii) simultaneous training of the neural networks by minimizing the Tikhonov-regularized PDE loss using data from (i). PINNs furnish efficient surrogate models of complex systems with predictive capabilities via multitask learning where the field variables are modeled by neural maps endowed with (scaler or distributed) auxiliary parameters such as physical unknowns and loss function weights. PINNs are then trained by minimizing a measure of data misfit subject to the underlying physical laws as constraints. In this study, to facilitate learning from ultrasonic data, the PINNs loss adopts (a) wavenumber-dependent Sobolev norms to compute the data misfit, and (b) non-adaptive weights in a specific scaling framework to naturally balance the loss objectives by leveraging the form of PDEs germane to elastic-wave propagation. Both paradigms are examined via synthetic and laboratory test data. In the latter case, the reconstructions are performed at multiple frequencies and the results are verified by a set of complementary experiments highlighting the importance of verification and validation in data-driven modeling.
翻译:这一研究利用了最近在机器学习方面的进展,以建立基于物理的数据分析平台,从完整的波形数据中分层重建机械性能的分层分析平台。在这方面,探讨了两种逻辑,即直接反转和物理知情神经网络(PINNS),直接反转包括三个步骤:(一) 光谱分解和区分全场数据,(二) 绘制适当的神经图,以近似各自领域未知物理参数和正规化参数的概况,以及(三) 同时培训神经网络,利用(一) 补充性数据尽量减少Tikhonov的正规PDE损失。 PINNS通过多任务学习,提供具有预测能力的复杂系统的高效代理模型,这些系统具有预测能力,外地变量以具有(标尺或分布的)神经性图的辅助参数为模型,如物理未知值和损失函数权重。 PINNS,然后通过尽量减少数据与基本物理法不相适应的数据测量为制约。在研究中,从超声调数据中学习Tikhonovovovov, PINNs Serview Serview Right Special