Evolutionary vs imitation learning for neuromorphic control at the edge

Catherine D. Schuman, R. Patton, Shruti R. Kulkarni, Maryam Parsa, Christopher G. Stahl, N. Haas, J. P. Mitchell, Shay Snyder, Amelie Nagle, Alexandra Shanafield, T. Potok
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引用次数: 9

Abstract

Neuromorphic computing offers the opportunity to implement extremely low power artificial intelligence at the edge. Control applications, such as autonomous vehicles and robotics, are also of great interest for neuromorphic systems at the edge. It is not clear, however, what the best neuromorphic training approaches are for control applications at the edge. In this work, we implement and compare the performance of evolutionary optimization and imitation learning approaches on an autonomous race car control task using an edge neuromorphic implementation. We show that the evolutionary approaches tend to achieve better performing smaller network sizes that are well-suited to edge deployment, but they also take significantly longer to train. We also describe a workflow to allow for future algorithmic comparisons for neuromorphic hardware on control applications at the edge.
边缘神经形态控制的进化与模仿学习
神经形态计算提供了在边缘实现极低功耗人工智能的机会。控制应用,如自动驾驶汽车和机器人,也对边缘神经形态系统非常感兴趣。然而,对于边缘控制应用来说,最好的神经形态训练方法是什么还不清楚。在这项工作中,我们使用边缘神经形态实现在自动赛车控制任务上实现并比较了进化优化和模仿学习方法的性能。我们表明,进化方法倾向于实现更适合边缘部署的性能更好的较小网络规模,但它们也需要更长的训练时间。我们还描述了一个工作流,以便将来在边缘控制应用程序上对神经形态硬件进行算法比较。
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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