论文标题
使用机器学习预测结构括号的非线性地震反应
Predicting Nonlinear Seismic Response of Structural Braces Using Machine Learning
论文作者
论文摘要
具有高度非线性行为的不同结构材料的数值建模一直是工程学科中的一个具有挑战性的问题。实验数据通常用于表征这种行为。这项研究旨在通过使用最先进的机器学习技术来提高建模能力,并试图回答几个科学问题:(i)哪种ML算法具有能力,并且更有效地学习了这种复杂且非线性的问题? (ii)是否有可能人为地再现可以代表真实物理学的结构支架地震行为? (iii)如何将我们的发现扩展到由类似非线性动力学驱动的不同工程问题?为了回答这些问题,通过使用实验支架数据来验证提出的方法。该论文表明,经过正确的数据准备,长期术语内存(LSTM)方法高度能够捕获牙套的非线性行为。此外,还提供了调整超参数对模型的影响,例如层数,神经元数和激活函数。最后,简要讨论通过使用深神网络算法及其优势来学习非线性动力学的能力。
Numerical modeling of different structural materials that have highly nonlinear behaviors has always been a challenging problem in engineering disciplines. Experimental data is commonly used to characterize this behavior. This study aims to improve the modeling capabilities by using state of the art Machine Learning techniques, and attempts to answer several scientific questions: (i) Which ML algorithm is capable and is more efficient to learn such a complex and nonlinear problem? (ii) Is it possible to artificially reproduce structural brace seismic behavior that can represent real physics? (iii) How can our findings be extended to the different engineering problems that are driven by similar nonlinear dynamics? To answer these questions, the presented methods are validated by using experimental brace data. The paper shows that after proper data preparation, the long-short term memory (LSTM) method is highly capable of capturing the nonlinear behavior of braces. Additionally, the effects of tuning the hyperparameters on the models, such as layer numbers, neuron numbers, and the activation functions, are presented. Finally, the ability to learn nonlinear dynamics by using deep neural network algorithms and their advantages are briefly discussed.