Supervised Learning in Physical Networks: From Machine Learning to Learning Machines

M. Stern, D. Hexner, J. Rocks, Andrea J. Liu
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引用次数: 38

Abstract

Materials and machines are often designed with particular goals in mind, so that they exhibit desired responses to given forces or constraints. Here we explore an alternative approach, namely physical coupled learning. In this paradigm, the system is not initially designed to accomplish a task, but physically adapts to applied forces to develop the ability to perform the task. Crucially, we require coupled learning to be facilitated by physically plausible learning rules, meaning that learning requires only local responses and no explicit information about the desired functionality. We show that such local learning rules can be derived for any physical network, whether in equilibrium or in steady state, with specific focus on two particular systems, namely disordered flow networks and elastic networks. By applying and adapting advances of statistical learning theory to the physical world, we demonstrate the plausibility of new classes of smart metamaterials capable of adapting to users' needs in-situ.
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物理网络中的监督学习:从机器学习到学习机
材料和机器的设计通常带有特定的目标,因此它们对给定的力或约束表现出期望的反应。在这里,我们探索另一种方法,即物理耦合学习。在这个范例中,系统最初不是为了完成任务而设计的,而是在物理上适应施加的力,以发展执行任务的能力。至关重要的是,我们需要通过物理上合理的学习规则来促进耦合学习,这意味着学习只需要局部响应,而不需要关于所需功能的明确信息。我们证明了这种局部学习规则可以在任何物理网络中推导出来,无论是在平衡状态还是在稳态状态,并特别关注两个特定的系统,即无序流网络和弹性网络。通过将统计学习理论的进步应用于物理世界,我们证明了能够适应用户现场需求的新型智能超材料的可行性。
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