Nonlinear parametric systems have been widely used in modeling nonlinear dynamics in science and engineering. Bifurcation analysis of these nonlinear systems on the parameter space are usually used to study the solution structure such as the number of solutions and the stability. In this paper, we develop a new machine learning approach to compute the bifurcations via so-called equation-driven neural networks (EDNNs). The EDNNs consist of a two-step optimization: the first step is to approximate the solution function of the parameter by training empirical solution data; the second step is to compute bifurcations by using the approximated neural network obtained in the first step. Both theoretical convergence analysis and numerical implementation on several examples have been performed to demonstrate the feasibility of the proposed method.
翻译:非线性参数参数系统被广泛用于科学和工程的非线性动态建模,对参数空间的非线性系统进行分离分析,通常用于研究解决方案结构,如解决方案的数量和稳定性。在本文件中,我们开发了一种新的机器学习方法,通过所谓的方程式驱动神经网络(EDNN)计算两侧。EDNN由两步优化组成:第一步是培训实验性解决方案数据,以近似参数的解决方案功能;第二步是使用第一步获得的近似神经网络进行计算。已经对几个实例进行了理论趋同分析和数字应用,以证明拟议方法的可行性。