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A fast identification algorithm with outliers under Box-Cox transformation-based annealing robust radial basis function networks

机译:基于Box-Cox变换的退火鲁棒径向基函数网络的离群值快速识别算法

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摘要

In this article, a Box-Cox transformation-based annealing robust radial basis function networks (ARRBFNs) is proposed for an identification algorithm with outliers. Firstly, a fixed Box-Cox transformation-based ARRBFN model with support vector regression (SVR) is derived to determine the initial structure. Secondly, the results of the SVR are used as the initial structure in the fixed Box-Cox transformation-based ARRBFNs for the identification algorithm with outliers. At the same time, an annealing robust learning algorithm (ARLA) is used as the learning algorithm for the fixed Box-Cox transformation-based ARRBFNs, and applied to adjust the parameters and weights. Hence, the fixed Box-Cox transformation-based ARRBFNs with an ARLA have a fast convergence speed for an identification algorithm with outliers. Finally, the proposed algorithm and its efficacy are demonstrated with an illustrative example in comparison with Box-Cox transformation-based radial basis function networks.
机译:本文提出了一种基于Box-Cox变换的退火鲁棒径向基函数网络(ARRBFNs),用于具有离群值的识别算法。首先,导出具有支持向量回归(SVR)的基于Box-Cox变换的固定ARRBFN模型,以确定初始结构。其次,将SVR的结果用作基于Box-Cox变换的固定ARRBFN的初始结构,用于具有离群值的识别算法。同时,将退火鲁棒学习算法(ARLA)用作基于Box-Cox变换的固定ARRBFN的学习算法,并用于调整参数和权重。因此,对于具有异常值的识别算法,具有ARLA的基于Box-Cox变换的固定ARRBFN具有很快的收敛速度。最后,与基于Box-Cox变换的径向基函数网络进行比较,通过一个示例说明了该算法及其有效性。

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