Analysis of time series classification of a multi-layer reservoir neural network based on asynchronous cellular automaton neurons with transmission delays

Kohei Nakata, H. Torikai
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Abstract

In this paper, a novel multi-layer reservoir neural network with axonal delays is proposed using an asynchronous cellular automaton neuron model. A learning method of the network based on the simulated annealing is also proposed. Then, performance of time series classification of the network is analyzed with respect to parameters of the reservoir layers. Based on the analysis results, a design method of the network to realize higher performance of the time series classification is proposed. Furthermore, the proposed network is implemented as a hardware description language code (Verilog-HDL code) and post-synthesize simulations validate its classification function.
基于具有传输延迟的异步元胞自动机神经元的多层水库神经网络时间序列分类分析
本文采用异步元胞自动机神经元模型,提出了一种具有轴突延迟的多层水库神经网络。提出了一种基于模拟退火的网络学习方法。然后,结合储层参数分析了网络的时间序列分类性能。在分析结果的基础上,提出了一种提高时间序列分类性能的网络设计方法。此外,该网络以硬件描述语言代码(Verilog-HDL代码)的形式实现,并通过后合成仿真验证了其分类功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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