论文标题
Dynnet:基于物理的神经结构设计,用于线性和非线性结构响应建模和预测
DynNet: Physics-based neural architecture design for linear and nonlinear structural response modeling and prediction
论文作者
论文摘要
数据驱动的模型用于预测线性和非线性系统的动态响应非常重要,因为它们从概率分析到诸如系统识别和损害诊断等反问题的广泛应用。在这项研究中,设计了一个基于物理的复发性神经网络模型,该模型能够学习地面运动的线性和非线性多个自由度系统的动力学。该模型能够估算一组完整的响应,包括位移,速度,加速度和内力。与最先进的对应物相比,该模型需要较少数量的可训练变量,而长轨迹的预测准确性更高。此外,复发块的架构受到微分方程求解器算法的启发,预计该方法会产生更广泛的解决方案。在训练阶段,我们提出了多种新颖的技术,以使用较小的数据集(例如硬采样,轨迹损失函数的利用)以及信任区域方法的实施来大大加速学习过程。进行数值案例研究以检查网络的强度以学习不同的非线性行为。结果表明,网络能够以非常高的精度捕获动态系统的不同非线性行为,而无需先前的信息或非常大的数据集。
Data-driven models for predicting dynamic responses of linear and nonlinear systems are of great importance due to their wide application from probabilistic analysis to inverse problems such as system identification and damage diagnosis. In this study, a physics-based recurrent neural network model is designed that is able to learn the dynamics of linear and nonlinear multiple degrees of freedom systems given a ground motion. The model is able to estimate a complete set of responses, including displacement, velocity, acceleration, and internal forces. Compared to the most advanced counterparts, this model requires a smaller number of trainable variables while the accuracy of predictions is higher for long trajectories. In addition, the architecture of the recurrent block is inspired by differential equation solver algorithms and it is expected that this approach yields more generalized solutions. In the training phase, we propose multiple novel techniques to dramatically accelerate the learning process using smaller datasets, such as hardsampling, utilization of trajectory loss function, and implementation of a trust-region approach. Numerical case studies are conducted to examine the strength of the network to learn different nonlinear behaviors. It is shown that the network is able to capture different nonlinear behaviors of dynamic systems with very high accuracy and with no need for prior information or very large datasets.