论文标题
单个摆的机器学习潜力
Machine Learning Potential of a Single Pendulum
论文作者
论文摘要
储层计算提供了一个很好的计算框架,可以将物理系统直接用作计算基板。通常,“储层”由大量动力学系统组成,因此是高度的。在这项工作中,我们仅使用一个简单的低维动力系统,即驱动的摆,作为实现储层计算的潜在储层。值得注意的是,我们通过数值模拟以及原则实验实现的证明,可以使用此单个系统成功执行学习任务。根本的想法是利用驱动的摆的丰富的固有动力学模式,尤其是迄今为止尚未开发的瞬时动力学。这甚至允许单个系统作为“储层”的合适候选者。具体而言,我们分析了两类任务:时间和非时空数据处理的单个摆储库的性能。这种最小的一节点储层在实施这些任务方面表现出的性能的准确性和鲁棒性强烈提出了从高效应用的角度设计储层层的新方向。此外,我们的学习系统的简单性提供了一个机会,可以更好地了解储层计算的框架,并指示即使是单个简单的非线性系统的显着机器学习潜力。
Reservoir Computing offers a great computational framework where a physical system can directly be used as computational substrate. Typically a "reservoir" is comprised of a large number of dynamical systems, and is consequently high-dimensional. In this work, we use just a single simple low-dimensional dynamical system, namely a driven pendulum, as a potential reservoir to implement reservoir computing. Remarkably we demonstrate, through numerical simulations, as well as a proof-of-principle experimental realization, that one can successfully perform learning tasks using this single system. The underlying idea is to utilize the rich intrinsic dynamical patterns of the driven pendulum, especially the transient dynamics which has so far been an untapped resource. This allows even a single system to serve as a suitable candidate for a "reservoir". Specifically, we analyze the performance of the single pendulum reservoir for two classes of tasks: temporal and non-temporal data processing. The accuracy and robustness of the performance exhibited by this minimal one-node reservoir in implementing these tasks strongly suggest a new direction in designing the reservoir layer from the point of view of efficient applications. Further, the simplicity of our learning system offers an opportunity to better understand the framework of reservoir computing in general and indicates the remarkable machine learning potential of even a single simple nonlinear system.