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首页> 外文期刊>Emerging and Selected Topics in Circuits and Systems, IEEE Journal on >Digital Multiplier-Less Spiking Neural Network Architecture of Reinforcement Learning in a Context-Dependent Task
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Digital Multiplier-Less Spiking Neural Network Architecture of Reinforcement Learning in a Context-Dependent Task

机译:数字乘法器的尖峰神经网络依赖于上下文任务中的加固​​学习

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摘要

Neuromorphic engineers develop event-based spiking neural networks (SNNs) in hardware. These SNNs closer resemble the dynamics of biological neurons than conventional artificial neural networks and achieve higher efficiency thanks to the event-based, asynchronous nature of the processing. Learning in the hardware SNNs is a more challenging task, however. The conventional supervised learning methods cannot be directly applied to SNNs due to the non-differentiable event-based nature of their activation. For this reason, learning in SNNs is currently an active research topic. Reinforcement learning (RL) is a particularly promising learning method for neuromorphic implementation, especially in the field of autonomous agents' control. An SNN realization of a bio-inspired RL model is in the focus of this work. In particular, in this article, we propose a new digital multiplier-less hardware implementation of an SNN with RL capability. We show how the proposed network can learn stimulus-response associations in a context-dependent task. The task is inspired by biological experiments that study RL in animals. The architecture is described using the standard digital design flow and uses power- and space-efficient cores. The proposed hardware SNN model is compared both to data from animal experiments and to a computational model. We perform a comparison to the behavioral experiments using a robot, to show the learning capability in hardware in a closed sensory-motor loop.
机译:神经形态工程师用硬件开发基于事件的尖刺神经网络(SNNS)。这些SNNS更近似于生物神经元的动态,而不是传统的人工神经网络,并且由于基于事件的处理的异步性质,实现了更高的效率。然而,在硬件SNNS中学习是一个更具挑战性的任务。由于其激活的基于非微弱的事件性质,传统的监督学习方法不能直接应用于SNNS。出于这个原因,SNNS的学习是目前是一个积极的研究主题。强化学习(RL)是一种特别有希望的神经形态实施的学习方法,尤其是在自主试剂控制领域。生物启发的RL模型的SNN实现是这项工作的重点。特别是在本文中,我们提出了一种具有RL能力的新的数字乘数硬件实现。我们展示了所提出的网络如何在依赖于上下文的任务中学习刺激响应关联。该任务受到动物中RL的生物实验的启发。使用标准数字设计流程描述架构,并使用功率和空间高效的核心。将所提出的硬件SNN模型与来自动物实验的数据和计算模型进行比较。我们使用机器人执行与行为实验的比较,以在闭合的感觉电动机循环中显示硬件中的学习能力。

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