Identification of nonlinear dynamic systems remains a significant challenge across engineering. This work suggests an approach based on Bayesian filtering to extract and identify the contribution of an unknown nonlinear term in the system which can be seen as an alternative viewpoint on restoring force surface type approaches. To achieve this identification, the contribution which is the nonlinear restoring force is modelled, initially, as a Gaussian process in time. That Gaussian process is converted into a state-space model and combined with the linear dynamic component of the system. Then, by inference of the filtering and smoothing distributions, the internal states of the system and the nonlinear restoring force can be extracted. In possession of these states a nonlinear model can be constructed. The approach is demonstrated to be effective in both a simulated case study and on an experimental benchmark dataset.
翻译:非线性动态系统的识别仍然是整个工程的重大挑战。 这项工作提出了一个基于贝叶西亚过滤法的方法,以提取和确定系统中一个未知的非线性术语的贡献,这可以被视为恢复地表力类型方法的替代观点。 为了实现这一识别,非线性恢复力量的贡献最初是模拟的,最初是一个高斯进程,后来,高西亚进程被转换成一个州空间模型,并与系统的线性动态组成部分相结合。然后,通过推断过滤和平稳分布,可以提取系统的内部状态和非线性恢复力量。在这些国家拥有一个非线性恢复能力模型的情况下,可以构建一个非线性恢复能力模型。这种方法在模拟案例研究和实验性基准数据集中都证明是有效的。