使用自旋扭矩纳米振荡器的回声态网络建模与评估

IF 2 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Siyuan Qian;Shaloo Rakheja
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引用次数: 0

摘要

利用具有易平面各向异性的自旋力矩纳米振荡器(STNOs)设计了一种能够高精度处理时间序列数据的回波状态网络(ESN),并对其进行了基准测试。ESN 属于蓄水池计算机,蓄水池由随机初始化、递归连接和未经训练的神经元池组成,是输入信号的高维扩展。读出功能用于收集有意义的输出表示。在这里,我们使用 STNO 作为 ESN 的基本构件,并将 ESN 应用于预测 Mackey-Glass (MG) 时间序列数据。我们选择了 STNO 和输入数据表示的设计参数,以使预测误差低至 $4\times 10^{-3}$。我们还量化了 ESN 的短时记忆(STM)和奇偶校验(PC)能力,得到的指标与现有的基于自旋电子学的 ESN 以及采用 "tanh "神经元的 ESN 相当或更好。结果发现,STM 的峰值约为 8.8,而 PC 容量的峰值约为 3.9。热波动和工艺变异对 ESN 性能的影响得到了系统量化。尽管 ESN 的预测和记忆能力在温度变化时仍然保持稳定,但 STNO 自由层 10%的尺寸变化会导致其对 MG 时间序列数据的预测误差增加约 40%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Evaluation of Echo-State Networks Using Spin Torque Nano-Oscillators
An echo state network (ESN), capable of processing time-series data with high accuracy, is designed and benchmarked using spin torque nano-oscillators (STNOs) with easy-plane anisotropy. An ESN belongs to the category of reservoir computers, where the reservoir comprises a randomly initialized, recurrently connected, and untrained pool of neurons and acts as a high-dimensional expansion of the input signal. The readout function is used to glean a meaningful output representation. Here, we use STNOs as the basic building block of the ESN and apply the ESN to predict the Mackey–Glass (MG) time-series data. The design parameters of the STNO and the input data representation are selected to yield prediction errors as low as $4\times 10^{-3}$ . We also quantify the short-term memory (STM) and the parity-check (PC) capacity of the ESN and obtain metrics that are comparable to or better than existing spintronics-based ESNs, as well as ESNs employing “tanh” neurons. The peak STM is found to be approximately 8.8, while the peak PC capacity is found to be approximately 3.9. The impacts of thermal fluctuations and process variability on ESN performance are systematically quantified. Although the ESN’s prediction and memory capability remain robust with temperature variations, a 10% variation in the dimensions of the STNO free layer can lead to around 40% increase in its prediction error for the MG time-series data.
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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
11
审稿时长
13 weeks
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