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Radial basis function neural network for approximation and estimation of nonlinear stochastic dynamic systems

机译:径向基函数神经网络用于非线性随机动力系统的逼近与估计

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摘要

This paper presents a means to approximate the dynamic and static equations of stochastic nonlinear systems and to estimate state variables based on radial basis function neural network (RBFNN). After a nonparametric approximate model of the system is constructed from a priori experiments or simulations, a suboptimal filter is designed based on the upper bound error in approximating the original unknown plant with nonlinear state and output equations. The procedures for both training and state estimation are described along with discussions on approximation error. Nonlinear systems with linear output equations are considered as a special case of the general formulation. Finally, applications of the proposed RBFNN to the state estimation of highly nonlinear systems are presented to demonstrate the performance and effectiveness of the method.
机译:本文提出了一种基于径向基函数神经网络(RBFNN)的近似随机非线性系统动力学和静态方程并估计状态变量的方法。在通过先验实验或仿真构建系统的非参数近似模型之后,基于上限误差设计次优滤波器,以非线性状态和输出方程近似原始未知植物。描述了训练和状态估计的过程,并讨论了近似误差。具有线性输出方程的非线性系统被认为是一般公式的特例。最后,提出了所提出的RBFNN在高度非线性系统状态估计中的应用,以证明该方法的性能和有效性。

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