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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >SCESN, SPESN, SWESN: Three recurrent neural echo state networks with clustered reservoirs for prediction of nonlinear and chaotic time series
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SCESN, SPESN, SWESN: Three recurrent neural echo state networks with clustered reservoirs for prediction of nonlinear and chaotic time series

机译:SCESN,SPESN,SWESN:具有簇状储层的三个递归神经回波状态网络,用于预测非线性和混沌时间序列

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Echo state networks (ESNs) with very simple and linear learning algorithm are a new approach to recurrent neural network training. Recently, these networks have aroused a lot of interest in their nonlinear dynamic system modeling capacities. In previous studies, the largest eigenvalue of the reservoir connectivity matrix (spectral radius) is used as a predictor for the stable network dynamics, but recent evidences show that in the presence of reservoir substructures like clusters, stability criteria in these kind of networks are altered. Some researchers have also demonstrated that network approximation ability in ESN networks is improved by the characteristics of small-world and scale-free. In this paper, we used three classic clustering algorithms called K-Means (C- Centeriod), partitioning Around Medoids (PAM) and ward algorithm, for clustering the internal neurons. After that, we refer to mean nodes in each cluster as backbone units and refer to the other neurons in a cluster as local neurons. Connections between neurons are such that the resulting networks have small-world topology and neurons in the new networks follow a power-law distribution. At first, we demonstrate that resulting clustered networks have some characteristics of biological neural system like power-law distribution, small-word feature, community structure, and distributed architecture. For investigating the prediction power and the range of spectral radius of resulting networks, we use new ESNs on the Mackey-Glass dynamic system and the laser time series prediction problem and compared the results with the previous works. Then we evaluate echo state property and performance of approximating highly complex nonlinear dynamic systems of proposed networks rather than previous approaches. Results show that the proposed methods outperform the previous ones in terms of prediction accuracy of chaotic time series.
机译:具有非常简单和线性学习算法的回声状态网络(ESN)是递归神经网络训练的一种新方法。近来,这些网络引起了人们对其非线性动态系统建模能力的极大兴趣。在以前的研究中,油藏连通性矩阵的最大特征值(谱半径)被用作稳定网络动力学的预测因子,但是最近的证据表明,在存在诸如团簇之类的油藏子结构的情况下,此类网络的稳定性标准会发生变化。 。一些研究人员还证明,ESN网络的网络逼近能力因小世界和无标度的特性而得到提高。在本文中,我们使用了三种经典的聚类算法K-Means(C-Centeriod),围绕Medoids的分区(PAM)和病房算法来对内部神经元进行聚类。之后,我们将每个群集中的平均节点称为骨干单元,并将群集中的其他神经元称为局部神经元。神经元之间的连接使得最终的网络具有较小的拓扑结构,新网络中的神经元遵循幂律分布。首先,我们证明了所得的聚类网络具有生物神经系统的某些特征,如幂律分布,小词特征,社区结构和分布式体系结构。为了研究所得网络的预测能力和光谱半径范围,我们在Mackey-Glass动态系统上使用了新的ESN,并使用了激光时间序列预测问题,并将结果与​​先前的工作进行了比较。然后,我们评估回波状态属性和拟议网络而不是先前方法的近似高度复杂的非线性动力学系统的性能。结果表明,所提出的方法在混沌时间序列的预测精度方面优于以前的方法。

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