实时可适应数字神经形态硬件的最新进展

V. Kornijcuk, D. Jeong
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引用次数: 19

摘要

自神经形态工程首次引起公众注意以来,已经过去了30年。神经形态工程旨在利用模拟的、非常大规模的集成电路对大脑进行逆向工程。过去三十年的蓬勃研究丰富了实现这一宏伟目标的神经形态系统。大脑的逆向工程本质上意味着一个独立的神经形态系统的推理和学习能力——特别是后者被称为嵌入式学习。神经形态系统的可重构性也被用于实现系统的现场可编程。考虑到这些期望的属性,概述了数字神经形态硬件的最新进展,重点是实时推理和适应。实时适应,即实时学习,突出了具有内在丰富动态的尖峰神经网络的壮举,这使得网络能够从包含大量数据的环境中学习。实时自适应的实现对数字神经形态硬件设计提出了严格的限制。在这里,限制和最近的尝试,以应付这些限制所产生的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Progress in Real‐Time Adaptable Digital Neuromorphic Hardware
It has been three decades since neuromorphic engineering was first brought to public attention, which aimed to reverse‐engineer the brain using analog, very large‐scale, integrated circuits. Vigorous research in the past three decades has enriched neuromorphic systems for realizing this ambitious goal. Reverse engineering the brain essentially implies the inference and learning capabilities of a standalone neuromorphic system—particularly, the latter is referred to as embedded learning. The reconfigurability of a neuromorphic system is also pursued to make the system field‐programmable. Bearing these desired attributes in mind, recent progress in digital neuromorphic hardware is overviewed, with an emphasis on real‐time inference and adaptation. Real‐time adaptation, that is, learning in realtime, highlights the feat of spiking neural networks with inherent rich dynamics, which allows the networks to learn from environments embodying an enormous amount of data. The realization of real‐time adaptation imposes severe constraints on digital neuromorphic hardware design. Herein, the constraints and recent attempts to cope with the challenges arising from the constraints are addressed.
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