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Recursive Direct Weight Optimization in Nonlinear System Identification: A Minimal Probability Approach

机译:非线性系统辨识中的递归直接权重优化:最小概率方法

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摘要

In this paper, a direct weight optimization method is proposed for nonlinear system identification based on a minimal probability idea. The approach has several quite attractive features and is very different from existing ones. It is optimal for any given number of finite data points and at the same time possesses asymptotic convergence. The estimator admits a closed form and no numerical optimization is needed. Theoretical analysis and numerical simulations show that the approach is a very competitive alternative to existing nonlinear identification methods.
机译:提出了一种基于最小概率思想的非线性系统直接权重优化方法。该方法具有几个非常吸引人的功能,并且与现有功能有很大不同。它对于任何给定数量的有限数据点都是最佳的,同时具有渐近收敛性。估计器接受封闭形式,不需要数值优化。理论分析和数值模拟表明,该方法是现有非线性识别方法的一种非常有竞争力的替代方法。

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