Hardware-Friendly Implementation of Physical Reservoir Computing with CMOS-based Time-domain Analog Spiking Neurons

Nanako Kimura, Ckristian Duran, Zolboo Byambadorj, Ryosho Nakane, Tetsuya Iizuka
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Abstract

This paper introduces an analog spiking neuron that utilizes time-domain information, i.e., a time interval of two signal transitions and a pulse width, to construct a spiking neural network (SNN) for a hardware-friendly physical reservoir computing (RC) on a complementary metal-oxide-semiconductor (CMOS) platform. A neuron with leaky integrate-and-fire is realized by employing two voltage-controlled oscillators (VCOs) with opposite sensitivities to the internal control voltage, and the neuron connection structure is restricted by the use of only 4 neighboring neurons on the 2-dimensional plane to feasibly construct a regular network topology. Such a system enables us to compose an SNN with a counter-based readout circuit, which simplifies the hardware implementation of the SNN. Moreover, another technical advantage thanks to the bottom-up integration is the capability of dynamically capturing every neuron state in the network, which can significantly contribute to finding guidelines on how to enhance the performance for various computational tasks in temporal information processing. Diverse nonlinear physical dynamics needed for RC can be realized by collective behavior through dynamic interaction between neurons, like coupled oscillators, despite the simple network structure. With behavioral system-level simulations, we demonstrate physical RC through short-term memory and exclusive OR tasks, and the spoken digit recognition task with an accuracy of 97.7% as well. Our system is considerably feasible for practical applications and also can be a useful platform for studying the mechanism of physical RC.
利用基于 CMOS 的时域模拟尖峰神经元,以硬件友好方式实现物理存储计算
本文介绍了一种模拟尖峰神经元,它利用时域信息(即两个信号转换的时间间隔和脉冲宽度)来构建尖峰神经网络(SNN),从而在互补金属氧化物半导体(CMOS)平台上实现硬件友好型物理存储计算(RC)。通过采用两个对内部控制电压具有相反灵敏度的压控振荡器(VCO),实现了具有泄漏积分和发射功能的神经元,并且神经元连接结构受限于在二维平面上仅使用 4 个相邻神经元,以可行地构建规则的网络拓扑结构。这样的系统使我们能够用一个基于计数器的读出电路来组成 SNN,从而简化了 SNN 的硬件实现。此外,自下而上集成的另一个技术优势是能够动态捕捉网络中的每一个神经元状态,这将大大有助于找到如何提高时间信息处理中各种计算任务性能的指导原则。尽管网络结构简单,但 RC 所需的各种非线性物理动态可以通过神经元之间的动态交互来实现,就像耦合振荡器一样。通过行为系统级仿真,我们在短时记忆和排他 OR 任务中演示了物理 RC,在口语数字识别任务中的准确率也达到了 97.7%。我们的系统在实际应用中具有相当大的可行性,也可以成为研究物理 RC 机制的有用平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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