Arrays of interconnected magnetic nano-rings with emergent magnetization dynamics have recently been proposed for use in reservoir computing applications, but for them to be computationally useful it must be possible to optimise their dynamical responses. Here, we use a phenomenological model to demonstrate that such reservoirs can be optimised for classification tasks by tuning hyperparameters that control the scaling and input-rate of data into the system using rotating magnetic fields. We use task-independent metrics to assess the rings' computational capabilities at each set of these hyperparameters and show how these metrics correlate directly to performance in spoken and written digit recognition tasks. We then show that these metrics can be further improved by expanding the reservoir's output to include multiple, concurrent measures of the ring arrays' magnetic states.
翻译:最近有人提议在储油层计算应用中使用带有紧急磁化动态的相互连接的磁纳米环的阵列,但若要使其具有计算效用,就必须能够优化其动态反应。在这里,我们使用一种苯蛋白学模型来证明,通过调制超参数来控制数据在系统中的缩放和输入率,从而优化分类任务。我们使用任务独立的计量标准来评估每组这些超参数的环的计算能力,并显示这些计量标准如何与口头和书面数字识别任务的性能直接相关。我们然后表明,通过扩大储油层的输出以包括环形磁状态的多重并列测量,这些计量标准可以进一步改进。