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Programmable Spike-Timing-Dependent Plasticity Learning Circuits in Neuromorphic VLSI Architectures

机译:神经形态VLSI架构中的可编程峰值依赖时间可塑性学习电路

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Hardware implementations of spiking neural networks offer promising solutions for computational tasks that require compact and low-power computing technologies. As these solutions depend on both the specific network architecture and the type of learning algorithm used, it is important to develop spiking neural network devices that offer the possibility to reconfigure their network topology and to implement different types of learning mechanisms. Here we present a neuromorphic multi-neuron VLSI device with on-chip programmable event-based hybrid analog/digital circuits; the event-based nature of the input/output signals allows the use of address-event representation infrastructures for configuring arbitrary network architectures, while the programmable synaptic efficacy circuits allow the implementation of different types of spike-based learning mechanisms. The main contributions of this article are to demonstrate how the programmable neuromorphic system proposed can be configured to implement specific spike-based synaptic plasticity rules and to depict how it can be utilised in a cognitive task. Specifically, we explore the implementation of different spike-timing plasticity learning rules online in a hybrid system comprising a workstation and when the neuromorphic VLSI device is interfaced to it, and we demonstrate how, after training, the VLSI device can perform as a standalone component (i.e., without requiring a computer), binary classification of correlated patterns.
机译:尖峰神经网络的硬件实现为需要紧凑和低功耗计算技术的计算任务提供了有希望的解决方案。由于这些解决方案既取决于特定的网络体系结构,也取决于所使用的学习算法的类型,因此开发尖峰的神经网络设备非常重要,因为它可以重新配置其网络拓扑并实现不同类型的学习机制。在这里,我们介绍了一种神经形态多神经元VLSI器件,该器件具有片上可编程基于事件的混合模拟/数字电路。输入/输出信号基于事件的性质允许使用地址事件表示基础结构来配置任意网络体系结构,而可编程突触功效电路允许实现不同类型的基于尖峰的学习机制。本文的主要贡献是演示如何将建议的可编程神经形态系统配置为实现特定的基于尖峰的突触可塑性规则,并描述如何将其用于认知任务。具体来说,我们探讨了在包含工作站的混合系统中以及在将神经形态VLSI设备连接到其上时,如何在线执行不同的尖峰定时可塑性学习规则,并演示了经过培训后,VLSI设备如何作为独立组件运行(即不需要计算机)相关模式的二进制分类。

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