Brain-inspired event-based neuromorphic processing systems have emerged as a promising technology in particular for bio-medical circuits and systems. However, both neuromorphic and biological implementations of neural networks have critical energy and memory constraints. To minimize the use of memory resources in multi-core neuromorphic processors, we propose a network design approach inspired by biological neural networks. We use this approach to design a new routing scheme optimized for small-world networks and, at the same time, to present a hardware-aware placement algorithm that optimizes the allocation of resources for small-world network models. We validate the algorithm with a canonical small-world network and present preliminary results for other networks derived from it
翻译:脑受事件启发的神经形态处理系统已成为一种有前景的技术,特别是生物医疗电路和系统的技术。然而,神经网络的神经形态和生物应用都具有重大的能量和记忆限制。为了尽量减少在多核心神经形态处理器中使用记忆资源,我们提议了一种由生物神经网络启发的网络设计方法。我们利用这种方法设计了一个新的路径规划计划,为小世界网络优化了路线规划,同时提出了一种硬件定位算法,优化了小世界网络模型的资源分配。我们用一个金刚小世界网络验证了算法,并为从中产生的其他网络提供了初步结果。