This work addresses the inverse identification of apparent elastic properties of random heterogeneous materials using machine learning based on artificial neural networks. The proposed neural network-based identification method requires the construction of a database from which an artificial neural network can be trained to learn the nonlinear relationship between the hyperparameters of a prior stochastic model of the random compliance field and some relevant quantities of interest of an ad hoc multiscale computational model. An initial database made up with input and target data is first generated from the computational model, from which a processed database is deduced by conditioning the input data with respect to the target data using the nonparametric statistics. Two-and three-layer feedforward artificial neural networks are then trained from each of the initial and processed databases to construct an algebraic representation of the nonlinear mapping between the hyperparameters (network outputs) and the quantities of interest (network inputs). The performances of the trained artificial neural networks are analyzed in terms of mean squared error, linear regression fit and probability distribution between network outputs and targets for both databases. An ad hoc probabilistic model of the input random vector is finally proposed in order to take into account uncertainties on the network input and to perform a robustness analysis of the network output with respect to the input uncertainties level. The capability of the proposed neural network-based identification method to efficiently solve the underlying statistical inverse problem is illustrated through two numerical examples developed within the framework of 2D plane stress linear elasticity, namely a first validation example on synthetic data obtained through computational simulations and a second application example on real experimental data obtained through a physical experiment monitored by digital image correlation on a real heterogeneous biological material (beef cortical bone).
翻译:这项工作解决了利用人工神经网络进行的机器模拟学习,对随机混杂材料的表面弹性特性进行反向识别的问题。拟议的神经网络识别方法要求建立一个数据库,从中可以对人工神经网络进行培训,以便从每个初始和经处理的数据库中学习随机合规领域前随机合规模型的超光度参数与临时多尺度计算模型的某些相关利益量之间的非线性关系。由输入和目标数据组成的初始数据库首先来自计算模型,从该模型中得出一个经过处理的数据库,通过利用非参数统计数据调节目标数据输入数据输入数据数据数据数据。二层和三层向向上反馈人工神经网络,然后从每个初始和经处理的数据库中培训,以学习超度合规性模型(网络产出)和一定量(网络投入)之间非线性绘图的数值代表。经过培训的人工神经网络的性能通过基于平均正方位误差、线性回归和网络产出和目标之间的概率分布进行分析。在两个数据库中,首先对二层的直径直线性模型,即通过直线性网络的直径直线性数据分析,最后通过直径直线性网络数据输入数据分析,从实际输出分析一个直径直径直线性网络分析,然后在直径直线性网络中进行。