论文标题
关于非线性正常模式进行非线性减少订单建模
On the use of Nonlinear Normal Modes for Nonlinear Reduced Order Modelling
论文作者
论文摘要
在工程的许多领域中,非线性数值分析在支持结构的设计和监视方面起着越来越重要的作用。尽管不断增加的计算机资源使以前的过度分析成为可能,但某些用例(例如不确定性量化和实时高精度模拟)在计算上仍然具有挑战性。这激发了减少订单建模方法的发展,这可以减少依赖机械原理的模拟的计算损失。现有的大多数还原订单建模技术都涉及对线性碱基的投影。对于线性系统,此类方法已建立得很好,但是在考虑非线性系统时,它们的应用变得更加困难。提供非线性系统的目标方案,其中涉及使用多个线性还原基础或传统基础的富集。但是,这些方法通常仅限于弱非线性系统。在这项工作中,非线性正常模式(NNM)被证明是非线性系统的可逆减少基础。仅使用机器学习方法从输出数据中提取NNM,并引入了基于NNM的新型减少订单建模方案。该方法在非线性20度自由度(DOF)系统的模拟示例中得到了证明。
In many areas of engineering, nonlinear numerical analysis is playing an increasingly important role in supporting the design and monitoring of structures. Whilst increasing computer resources have made such formerly prohibitive analyses possible, certain use cases such as uncertainty quantification and real time high-precision simulation remain computationally challenging. This motivates the development of reduced order modelling methods, which can reduce the computational toll of simulations relying on mechanistic principles. The majority of existing reduced order modelling techniques involve projection onto linear bases. Such methods are well established for linear systems but when considering nonlinear systems their application becomes more difficult. Targeted schemes for nonlinear systems are available, which involve the use of multiple linear reduction bases or the enrichment of traditional bases. These methods are however generally limited to weakly nonlinear systems. In this work, nonlinear normal modes (NNMs) are demonstrated as a possible invertible reduction basis for nonlinear systems. The extraction of NNMs from output only data using machine learning methods is demonstrated and a novel NNM-based reduced order modelling scheme introduced. The method is demonstrated on a simulated example of a nonlinear 20 degree-of-freedom (DOF) system.