基于忆阻器的储层网络混沌时间序列预测

Md Razuan Hossain, P. Paul, Maisha Sadia, Anur Dhungel, J. Najem, Md. Sakib Hasan
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引用次数: 2

摘要

水库计算(RC)是机器学习中处理时间信号的一种高效的新兴计算概念,与传统的递归神经网络相比具有较低的训练成本。首先,RC系统从输入数据集中提取特征,然后通过创建富储层状态将数据投影到高维空间中。传统的RC方法有回声状态网络(ESN)和液态机(LSM)两种。在这项工作中,我们探索了最近一种基于易失性忆阻器的RC范例,该范例具有尖峰编码输入,其紧凑的硬件实现具有吸引力。我们在该范例中使用了四个已报道的易失性忆阻器以及两个用于离散时间混沌时间序列预测的储层结构。混沌时间序列对初始条件高度敏感,初始条件的微小变化会导致观测输出最终发散。选取Logistic图和Henon图分别作为一维混沌图和二维混沌图的代表性例子。这项工作的主要目标是探索和比较使用两种不同储层结构的四种不同记忆RC系统的混沌时间序列预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memristor based Reservoir Network for Chaotic Time Series Prediction
Reservoir Computing (RC) is a highly efficient emerging computing concept in machine learning to process temporal signals and has a low training cost compared to the traditional recurrent neural network. At first, the RC system extracts features from the input dataset and then projects the data in the high dimensional space by creating rich reservoir states. There are two conventional RC approaches such as Echo State Network (ESN) and Liquid State Machine (LSM). In this work, we explore a recent volatile memristor-based RC paradigm with spike encoded input which is attractive for its compact hardware implementation. We use four reported volatile memristors in this paradigm along with two reservoir architectures for discrete-time chaotic time series prediction. Chaotic time series is highly sensitive to the initial condition and slightly change in the initial condition causes eventual divergence in the observed outputs. Logistic map and Henon map are chosen as representative examples of well-known one-dimensional and two-dimensional chaotic maps, respectively. The main goal of this work is to explore and compare the performance of four different memristive RC systems using two different reservoir architectures for chaotic time series prediction.
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