探索磁性纳米栅阵列水库计算机的物理和数字架构

G. Venkat, Ian T. Vidamour, C. Swindells, Paul W Fry, Mark Rosamond, Michael Foerster, Miguel Angel Niño, David Griffin, Susan Stepney, D. Allwood, T. Hayward
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引用次数: 0

摘要

物理存储计算(RC)是一种机器学习技术,非常适合处理与时间相关的数据序列。它也非常适合于实现物质计算,可以直接利用功能材料的固有记忆和非线性响应进行计算。我们之前已经证明,相互连接的磁性纳米环方阵是具有吸引力的本体存储计算候选方案,并通过实验证明了它们在一系列基准任务中的强大性能。在此,我们将这些研究扩展到其他环形晶格排列,包括三叉网格和卡戈米网格,以探索这些网格如何影响阵列的磁性行为及其计算特性。我们的研究表明,虽然晶格几何形状对阵列的微状态行为有很大影响,但在对整个阵列的磁行为进行平均时,这些差异的表现并不明显。因此,我们发现具有单一电读出的设备的计算特性(使用与任务无关的指标进行测量)仅有细微差别,而用于将数据及时多路复用到阵列内外的方法比晶格几何对特性的影响更大。然而,我们还发现,与任何单一阵列相比,结合了不同晶格几何阵列输出的混合储层显示出更强的计算特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring physical and digital architectures in magnetic nanoring array reservoir computers
Physical reservoir computing (RC) is a machine learning technique that is ideal for processing of time dependent data series. It is also uniquely well-aligned to in materio computing realisations that allow the inherent memory and non-linear responses of functional materials to be directly exploited for computation. We have previously shown that square arrays of interconnected magnetic nanorings are attractive candidates for in materio reservoir computing, and experimentally demonstrated their strong performance in a range of benchmark tasks. Here, we extend these studies to other lattice arrangements of rings, including trigonal and Kagome grids, to explore how these affect both the magnetic behaviours of the arrays, and their computational properties. We show that while lattice geometry substantially affects the microstate behaviour of the arrays, these differences manifest less profoundly when averaging magnetic behaviour across the arrays. Consequently the computational properties (as measured using task agnostic metrics) of devices with a single electrical readout are found to be only subtly different, with the approach used to time-multiplex data into and out of the arrays having a stronger effect on properties than the lattice geometry. However, we also find that hybrid reservoirs that combine the outputs from arrays with different lattice geometries show enhanced computational properties compared to any single array.
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CiteScore
5.90
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