Real-Time Evolution and Deployment of Neuromorphic Computing at The Edge

Catherine D. Schuman, Steven R. Young, Bryan P. Maldonado, B. Kaul
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引用次数: 2

Abstract

Extremely low power neuromorphic systems are well-suited for deployment to the edge for many applications. In many use cases of neuromorphic computing for control, a spiking neural network is trained off-line using a simulation and then deployed to a neuromorphic system at the edge, where it will operate without ongoing training or learning. However, it may be desirable to continue training or learning at the edge to refine or adapt to the real-world system. In this work, we propose an approach for performing real-time evolutionary optimization for spiking neural networks for neuromorphic deployment at the edge. In particular, we propose a combination of simulation and real-world evaluations, along with feedback from the real-world environment, to train spiking neural networks for continuous deployment to the edge. We show that the real-time evolution at the edge approach achieves comparable performance to an evolution approach that requires constant evaluation in the realworld environment.
边缘神经形态计算的实时进化和部署
极低功耗的神经形态系统非常适合部署到边缘的许多应用程序。在许多用于控制的神经形态计算用例中,使用模拟离线训练尖峰神经网络,然后将其部署到边缘的神经形态系统中,在那里它将无需持续训练或学习即可运行。然而,在边缘继续训练或学习以改进或适应现实世界的系统可能是可取的。在这项工作中,我们提出了一种用于在边缘进行神经形态部署的峰值神经网络的实时进化优化方法。特别是,我们提出了模拟和现实世界评估的结合,以及来自现实世界环境的反馈,以训练尖峰神经网络,以便持续部署到边缘。我们表明,边缘的实时进化方法与需要在现实环境中不断评估的进化方法实现了相当的性能。
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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