论文标题

超导神经形态电路的扇出和风扇的特性

Fan-out and Fan-in properties of superconducting neuromorphic circuits

论文作者

Schneider, M. L., Segall, K.

论文摘要

神经形态计算有可能通过从不同的角度设计硬件来进一步取得基于软件的人工神经网络(ANN)的成功。当前对神经形态硬件的研究通过提高能量效率,操作速度,甚至试图通过本质上添加诸如Spiking操作之类的功能来扩展ANN的实用性,从而对ANN性能进行巨大改进。一个有希望的神经形态硬件平台是基于超导电子设备,除了在神经态电路中以及在不同的超导芯片之间提供近乎无损通信的潜力,它有可能在设备级别上纳入所有这些优势。在这里,我们探索了基本的脑启发的建筑组件之一,这是基于约瑟夫森连接的超导电路中实现的粉丝和风扇。从我们的计算和WRSPICE模拟中,我们发现扇出仅应受到连接数和电路尺寸限制的限制,我们证明了在1到10,000的水平上的模拟结果,类似于人脑。我们发现,粉丝的局限性有更多的限制,但是根据当前技术,应达到几次100比1的粉丝级别。我们讨论了我们的发现以及在超导性神经形态电路中设定界限和风扇范围的关键参数。

Neuromorphic computing has the potential to further the success of software-based artificial neural networks (ANNs) by designing hardware from a different perspective. Current research in neuromorphic hardware targets dramatic improvements to ANN performance by increasing energy efficiency, speed of operation, and even seeks to extend the utility of ANNs by natively adding functionality such as spiking operation. One promising neuromorphic hardware platform is based on superconductive electronics, which has the potential to incorporate all of these advantages at the device level in addition to offering the potential of near lossless communications both within the neuromorphic circuits as well as between disparate superconductive chips. Here we explore one of the fundamental brain-inspired architecture components, the fan-in and fan-out as realized in superconductive circuits based on Josephson junctions. From our calculations and WRSPICE simulations we find that the fan-out should be limited only by junction count and circuit size limitations, and we demonstrate results in simulation at a level of 1-to-10,000, similar to that of the human brain. We find that fan-in has more limitations, but a fan-in level on the order of a few 100-to-1 should be achievable based on current technology. We discuss our findings and the critical parameters that set the limits on fan-in and fan-out in the context of superconductive neuromorphic circuits.

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