For many engineering applications, such as real-time simulations or control, conventional solution techniques of the underlying nonlinear problems are usually computationally too expensive. In this work, we propose a highly efficient deep-learning surrogate framework that is able to predict the response of hyper-elastic bodies under load. The surrogate model takes the form of special convolutional neural network architecture, so-called U-Net, which is trained with force-displacement data obtained with the finite element method. We propose deterministic- and probabilistic versions of the framework and study it for three benchmark problems. In particular, we check the capabilities of the Maximum Likelihood and the Variational Bayes Inference formulations to assess the confidence intervals of solutions.
翻译:对于许多工程应用,例如实时模拟或控制,对基础非线性问题的传统解决方案技术通常在计算上过于昂贵。在这项工作中,我们提议了一个高效的深学习替代框架,能够预测负荷中的超弹性身体的反应。代用模型的形式是特殊的进化神经网络结构,即所谓的U-Net,它受过用有限元素方法获得的强制分散数据的培训。我们提出了框架的确定性和概率性版本,并针对三个基准问题进行了研究。特别是,我们检查了最大相似性和变异湾推断配方的能力,以评估解决方案的信任期。