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Optimization of EBFN architecture by an improved RPCL algorithm with application to process control

机译:通过改进的RPCL算法优化EBFN架构,并将其应用于过程控制

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EBF networks are an extension of radial basis function (RBF) networks. Selecting an appropriate number of clusters is a problem for RBF or EBF networks. The rival penalized competitive learning (RPCL) algorithm is designed to solve this problem but its performance is not satisfactory when the data has overlapped clusters and the input vectors contain dependent components. The paper addresses this problem by incorporating full covariance matrices into the original RPCL algorithm. The resulting algorithm, referred to as the improved RPCL algorithm progressively eliminates the units whose clusters contain only a small portion of the training data. The improved algorithm is applied to optimize the architecture of elliptical basis function networks for process control. The results show that the covariance matrices in the improved RPCL algorithm have a better representation of the clusters.
机译:EBF网络是径向基函数(RBF)网络的扩展。对于RBF或EBF网络,选择适当数量的群集是一个问题。竞争对手的惩罚性竞争学习(RPCL)算法旨在解决此问题,但是当数据具有重叠的簇并且输入向量包含相关分量时,其性能不能令人满意。本文通过将完整的协方差矩阵合并到原始RPCL算法中来解决此问题。所得算法称为改进的RPCL算法,逐步消除了其簇仅包含一小部分训练数据的单元。该改进算法被用于优化用于过程控制的椭圆基函数网络的体系结构。结果表明,改进的RPCL算法中的协方差矩阵具有更好的聚类表示。

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