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首页> 外文期刊>Proceedings of the IEEE >Spike-Based Synaptic Plasticity in Silicon: Design, Implementation, Application, and Challenges
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Spike-Based Synaptic Plasticity in Silicon: Design, Implementation, Application, and Challenges

机译:硅中基于尖峰的突触可塑性:设计,实现,应用和挑战

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摘要

The ability to carry out signal processing, classification, recognition, and computation in artificial spiking neural networks (SNNs) is mediated by their synapses. In particular, through activity-dependent alteration of their efficacies, synapses play a fundamental role in learning. The mathematical prescriptions under which synapses modify their weights are termed synaptic plasticity rules. These learning rules can be based on abstract computational neuroscience models or on detailed biophysical ones. As these rules are being proposed and developed by experimental and computational neuroscientists, engineers strive to design and implement them in silicon and en masse in order to employ them in complex real-world applications. In this paper, we describe analog very large-scale integration (VLSI) circuit implementations of multiple synaptic plasticity rules, ranging from phenomenological ones (e.g., based on spike timing, mean firing rates, or both) to biophysically realistic ones (e.g., calcium-dependent models). We discuss the application domains, weaknesses, and strengths of various representative approaches proposed in the literature, and provide insight into the challenges that engineers face when designing and implementing synaptic plasticity rules in VLSI technology for utilizing them in real-world applications.
机译:人工突触神经网络(SNN)进行信号处理,分类,识别和计算的能力由其突触介导。尤其是通过突触的活动性改变,突触在学习中起着基本作用。突触修改其权重的数学处方称为突触可塑性规则。这些学习规则可以基于抽象的计算神经科学模型或详细的生物物理模型。由于这些规则是由实验和计算神经科学家提出和开发的,工程师们努力在硅片中批量设计和实现它们,以便将其应用于复杂的实际应用中。在本文中,我们描述了多种突触可塑性规则的模拟超大规模集成(VLSI)电路实现,范围从现象学的(例如,基于峰值定时,平均激发速率或两者)到生物物理的现实的(例如钙)相关模型)。我们讨论了文献中提出的各种代表性方法的应用领域,弱点和优点,并洞察了工程师在VLSI技术中设计和实现突触可塑性规则以在实际应用中利用它们时面临的挑战。

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