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首页> 外文期刊>Automatic Control, IEEE Transactions on >Asymmetric Volterra Models Based on Ladder-Structured Generalized Orthonormal Basis Functions
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Asymmetric Volterra Models Based on Ladder-Structured Generalized Orthonormal Basis Functions

机译:基于梯形结构广义正交基函数的非对称Volterra模型

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摘要

In this paper, an improved method to construct and estimate Volterra models using Generalized Orthonormal Basis Functions (GOBF) is presented. The proposed method extends results obtained in previous works, where an exact technique for optimizing the GOBF parameters (poles) for symmetric Volterra models of any order was presented. The proposed extensions take place in two different ways: (i) the new formulation is derived in such a way that each multidimensional kernel of the model is decomposed into a set of independent orthonormal bases (rather than a single, common basis), each of which is parameterized by an individual set of poles responsible for representing the dominant dynamic of the kernel along a particular dimension; and (ii) the new formulation is based on a ladder-structured GOBF architecture that is characterized by having only real-valued parameters to be estimated, regardless of whether the GOBF poles encoded by these parameters are real- or complex-valued. The exact gradients of an error functional with respect to the parameters to be optimized are computed analytically and provide exact search directions for an optimization process that uses only input-output data measured from the dynamic system to be modeled. Computational experiments are presented to illustrate the benefits of the proposed approach when modeling nonlinear systems.
机译:本文提出了一种使用广义正交基函数(GOBF)构造和估计Volterra模型的改进方法。所提出的方法扩展了先前工作中获得的结果,其中提出了用于优化任意阶对称Volterra模型的GOBF参数(极点)的精确技术。拟议的扩展以两种不同的方式进行:(i)以如下方式派生新公式:将模型的每个多维核分解为一组独立的正交基础(而不是单个通用基础),每个基础它是由一组单独的极点参数化的,这些极点代表沿着特定维度的内核的主导动态; (ii)新公式基于梯形结构的GOBF架构,其特征在于仅具有要估计的实值参数,而不管这些参数编码的GOBF极点是实值还是复值。通过解析计算误差函数相对于要优化的参数的精确梯度,并为仅使用从要建模的动态系统测量的输入输出数据的优化过程提供精确的搜索方向。提出了计算实验,以说明在对非线性系统进行建模时所提方法的优势。

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