Identification of Time-Varying Non-Linear Systems for Brain Connectivity Analysis

Y. Li
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Abstract

Many control systems encountered in physical, automobile engineering, economic phenomena and biomedical engineering fields are nonlinear and nonstationary to some extent. In general, nonlinear processes can be adequately characterized by a nonlinear model. Recently, a system can be obtained directly from experimental input/ output data by determining the system structure and the numerical values of the unknown parameters, this process is known as system identification. System identification techniques for linear and nonlinear systems have received such attention and have been widely applied to reveal fundamental properties of the system which are not apparent. Billings [1] surveyed the available approaches of non-linear system identification by considering the functional series of Volterra and Wiener, and the identification algorithms developed by Ku and Wolf [2]. Narendra and Parthasarathy [3] considered the orthogonal expansion methods and the kernel identification algorithms. All these methods discussed above were considered numerous alternatives and related topics which have been developed over the last decade or so.
脑连通性分析中时变非线性系统的辨识
在物理、汽车工程、经济现象和生物医学工程领域中遇到的许多控制系统在一定程度上都是非线性和非平稳的。一般来说,非线性过程可以用非线性模型来充分表征。最近,通过确定系统结构和未知参数的数值,可以直接从实验输入/输出数据中得到一个系统,这一过程被称为系统辨识。线性和非线性系统的系统辨识技术受到了广泛的关注,并被广泛应用于揭示系统不明显的基本特性。Billings[1]通过考虑Volterra和Wiener的函数级数,以及Ku和Wolf[2]开发的辨识算法,综述了非线性系统辨识的可用方法。Narendra和Parthasarathy[3]考虑了正交展开法和核识别算法。上面讨论的所有这些方法都被认为是过去十年左右发展起来的众多替代方案和相关主题。
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