Partzsch Johannes, Schüffny Rene
Chair for Highly Parallel VLSI Systems and Neuromorphic Circuits, Department of Electrical Engineering and Information Technology, Technische Universität Dresden Dresden, Germany.
Front Neurosci. 2015 Oct 20;9:386. doi: 10.3389/fnins.2015.00386. eCollection 2015.
Synaptic connectivity is typically the most resource-demanding part of neuromorphic systems. Commonly, the architecture of these systems is chosen mainly on technical considerations. As a consequence, the potential for optimization arising from the inherent constraints of connectivity models is left unused. In this article, we develop an alternative, network-driven approach to neuromorphic architecture design. We describe methods to analyse performance of existing neuromorphic architectures in emulating certain connectivity models. Furthermore, we show step-by-step how to derive a neuromorphic architecture from a given connectivity model. For this, we introduce a generalized description for architectures with a synapse matrix, which takes into account shared use of circuit components for reducing total silicon area. Architectures designed with this approach are fitted to a connectivity model, essentially adapting to its connection density. They are guaranteeing faithful reproduction of the model on chip, while requiring less total silicon area. In total, our methods allow designers to implement more area-efficient neuromorphic systems and verify usability of the connectivity resources in these systems.
突触连接通常是神经形态系统中最消耗资源的部分。通常,这些系统的架构主要是基于技术考虑来选择的。因此,连接模型固有约束所带来的优化潜力未被利用。在本文中,我们开发了一种替代的、由网络驱动的神经形态架构设计方法。我们描述了分析现有神经形态架构在模拟特定连接模型时性能的方法。此外,我们逐步展示了如何从给定的连接模型推导出神经形态架构。为此,我们引入了一种对具有突触矩阵的架构的通用描述,该描述考虑了电路组件的共享使用以减少总硅面积。用这种方法设计的架构适合于连接模型,本质上适应其连接密度。它们保证在芯片上忠实地再现模型,同时需要更少的总硅面积。总的来说,我们的方法允许设计者实现更具面积效率的神经形态系统,并验证这些系统中连接资源的可用性。