论文标题
部分可观测时空混沌系统的无模型预测
Deep learning applied to computational mechanics: A comprehensive review, state of the art, and the classics
论文作者
论文摘要
由于AI在艺术和科学领域的AI,最近的三项突破是动机:屡获殊荣的数字图像,蛋白质折叠,快速矩阵乘法。详细综述了人工神经网络的许多最新发展,特别是深度学习(DL)(DL)(DL),并与计算技工(实心,流体,有限元技术)相关。讨论了混合机器和纯机器学习(ML)方法。混合方法将传统的PDE离散化与ML方法相结合,以帮助建模复杂的非线性本构关系,(2)以非线性减少有效仿真(湍流)的模型顺序,或(3)通过在传统集成方法中预测某些组件来加速模拟。在这里,方法(1)和(2)依赖于长短记忆(LSTM)体系结构,方法(3)依赖于卷积神经网络。纯ML求解(非线性)PDE的方法由物理信息神经网络(PINN)方法表示,可以将其与注意机制结合使用以解决不连续溶液。 LSTM和关注体系结构以及现代和广义的经典优化器都得到了广泛的审查。对于更高级的作品,例如无限宽度的浅网络,包括高斯工艺在内的内核机器(包括高斯工艺)提供了足够的深度。不仅可以为专家讲话,还假定读者熟悉计算机制,而且不熟悉DL,DL的概念和应用是由基础知识构建的,旨在使初次学习者迅速成为研究的最前沿。对AI的历史和局限性进行了叙述和讨论,并特别注意指出了对经典的错误陈述或误解,即使在众所周知的参考文献中也是如此。为大型梁的定位和指向控制以示例为例。
Three recent breakthroughs due to AI in arts and science serve as motivation: An award winning digital image, protein folding, fast matrix multiplication. Many recent developments in artificial neural networks, particularly deep learning (DL), applied and relevant to computational mechanics (solid, fluids, finite-element technology) are reviewed in detail. Both hybrid and pure machine learning (ML) methods are discussed. Hybrid methods combine traditional PDE discretizations with ML methods either (1) to help model complex nonlinear constitutive relations, (2) to nonlinearly reduce the model order for efficient simulation (turbulence), or (3) to accelerate the simulation by predicting certain components in the traditional integration methods. Here, methods (1) and (2) relied on Long-Short-Term Memory (LSTM) architecture, with method (3) relying on convolutional neural networks. Pure ML methods to solve (nonlinear) PDEs are represented by Physics-Informed Neural network (PINN) methods, which could be combined with attention mechanism to address discontinuous solutions. Both LSTM and attention architectures, together with modern and generalized classic optimizers to include stochasticity for DL networks, are extensively reviewed. Kernel machines, including Gaussian processes, are provided to sufficient depth for more advanced works such as shallow networks with infinite width. Not only addressing experts, readers are assumed familiar with computational mechanics, but not with DL, whose concepts and applications are built up from the basics, aiming at bringing first-time learners quickly to the forefront of research. History and limitations of AI are recounted and discussed, with particular attention at pointing out misstatements or misconceptions of the classics, even in well-known references. Positioning and pointing control of a large-deformable beam is given as an example.