Hardware optimization for photonic time-delay reservoir computer dynamics

Meng Zhang, Zhizhuo Liang, Z. R. Huang
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引用次数: 1

Abstract

Reservoir computing (RC) is one kind of neuromorphic computing mainly applied to process sequential data such as time-dependent signals. In this paper, the bifurcation diagram of a photonic time-delay RC system is thoroughly studied, and a method of bifurcation dynamics guided hardware hyperparameter optimization is presented. The time-evolution equation expressed by the photonic hardware parameters is established while the intrinsic dynamics of the photonic RC system is quantitively studied. Bifurcation dynamics based hyperparameter optimization offers a simple yet effective approach in hardware setting optimization that aims to reduce the complexity and time in hardware adjustment. Three benchmark tasks, nonlinear channel equalization (NCE), nonlinear auto regressive moving average with 10th order time lag (NARMA10) and Santa Fe laser time-series prediction tasks are implemented on the photonic delay-line RC using bifurcation dynamics guided hardware optimization. The experimental results of these benchmark tasks achieved overall good agreement with the simulated bifurcation dynamics modeling results.
光子时滞储层计算机动力学的硬件优化
储层计算(RC)是一种主要用于处理时序数据(如时变信号)的神经形态计算。本文深入研究了光子时滞RC系统的分岔图,提出了一种分岔动力学指导下的硬件超参数优化方法。建立了用光子硬件参数表示的时间演化方程,定量研究了光子RC系统的内在动力学。基于分岔动力学的超参数优化为硬件设置优化提供了一种简单而有效的方法,旨在减少硬件调整的复杂性和时间。利用分岔动力学指导下的硬件优化,在光子延迟线RC上实现了非线性信道均衡(NCE)、非线性10阶时滞自回归移动平均(NARMA10)和Santa Fe激光时间序列预测三个基准任务。这些基准任务的实验结果与模拟的分岔动力学建模结果总体上吻合较好。
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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CiteScore
5.90
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