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Reinforcement radial basis function neural networks with an adaptive annealing learning algorithm

机译:带有自适应退火学习算法的增强径向基函数神经网络

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This article proposes reinforcement radial basis function neural networks (RBFNNs) to identify dynamical systems. The proposed algorithm adopts a support vector machine (SVM) to determine the initial structure of RBFNNs. After initialization, an adaptive annealing learning algorithm (AALA) is applied to optimize RBFNNs. When utilizing the optimal RBFNNs to identify dynamic systems, researchers often have problems determining the appropriate learning rates for the evolutionary algorithm and generally obtain better values through trial and error. However, these values may not be the best combinations. This paper proposes a systematic architecture method to determine these parameters. First, orthogonal array (OA) matrix experiments are adopted to find an appropriate combination of learning rates. Then the optimal combination for the evolutionary procedure is obtained. In the learning algorithm procedure, an OA-based AALA (OA-AALA) is provided to determine the optimal RBFNNs (OA-AALA-RBFNNs). Reinforcement RBFNNs can be constructed to identify dynamic systems. To demonstrate the superiority of OA-AALA-RBFNNs for system identification, this study compares the simulation results of the proposed OA-AALA-RBFNNs, ARLA-RBFNNs with an annealing robust learning algorithm (ARLA), and OA-ARLA-RBFNNs with an OA-based annealing robust learning algorithm.
机译:本文提出了增强径向基函数神经网络(RBFNN)来识别动力系统。该算法采用支持向量机(SVM)确定RBFNN的初始结构。初始化后,将应用自适应退火学习算法(AALA)来优化RBFNN。在利用最佳RBFNN识别动态系统时,研究人员通常难以确定进化算法的合适学习率,并且通常会通过反复试验获得更好的价值。但是,这些值可能不是最佳组合。本文提出了一种确定这些参数的系统架构方法。首先,采用正交阵列(OA)矩阵实验来找到学习率的适当组合。然后获得进化过程的最优组合。在学习算法过程中,提供了基于OA的AALA(OA-AALA),以确定最佳的RBFNN(OA-AALA-RBFNN)。可以构造增强RBFNN来识别动态系统。为了证明OA-AALA-RBFNNs在系统识别方面的优越性,本研究将拟议的OA-AALA-RBFNNs,带有退火鲁棒学习算法(ARLA)的ARLA-RBFNNs和带有OA-AALA-RBFNNs的AO-AALA-RBFNNs的仿真结果进行了比较。基于OA的退火鲁棒学习算法。

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