首页> 外文期刊>IEEE Journal of Solid-State Circuits >A 65-nm 8-to-3-b 1.0–0.36-V 9.1–1.1-TOPS/W Hybrid-Digital-Mixed-Signal Computing Platform for Accelerating Swarm Robotics
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A 65-nm 8-to-3-b 1.0–0.36-V 9.1–1.1-TOPS/W Hybrid-Digital-Mixed-Signal Computing Platform for Accelerating Swarm Robotics

机译:65nm 8-to-3-b 1.0-0.36-V 9.1-1-1-1-1-100混合数字混合信号计算平台,用于加速群机器人

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摘要

Low-power edge-intelligence is leading to spectacular advances in smart sensors, actuators, and human-machine interfaces. In particular, energy efficiency is driving key advances in robotics, where low-power computation is augmented with smart control and mechanical systems to enable small-sized and intelligent drones, unmanned aerial vehicles (UAVs), micro-sized cars, and so on with applications in surveillance, disaster relief, and reconnaissance. Furthermore, for a variety of tasks, swarms of robots are often used as opposed to the individual robots. This article presents an energy-efficient computing platform that can enable a sample class of algorithms for swarm robotics. We demonstrate that both physical-model-based algorithms as well as learning-based algorithms can be supported on the same computing platform. We also demonstrate that with changing swarm sizes, the number of bits required to compute also scales. We take advantage of this observation to propose a hybrid-digital-mixed-signal computing platform, whose energy efficiency scales with the resolution of the data path and hence the swarm size. Measurements on a 65-nm CMOS test-chip demonstrate a peak energy efficiency of 9.1 TOPS/W at a 3-b resolution, and it scales down to 1.1 TOPS/W at an 8-b resolution.
机译:低功耗边缘智能导致智能传感器,执行器和人机接口的壮观进步。特别地,能量效率正在推动机器人的主要进步,其中利用智能控制和机械系统增强了低功耗计算,以实现小型和智能的无人机,无人驾驶飞行器(无人机),微尺寸汽车等。在监控,救灾和侦察中的应用。此外,对于各种任务,机器人的群体通常与各个机器人相反。本文介绍了一个节能的计算平台,可以为群体机器人提供一种样本类算法。我们证明了基于物理模型的算法以及基于学习的算法,可以在同一计算平台上支持。我们还表明,随着群体的变化,计算也需要缩放所需的比特数。我们利用该观察来提出混合数字混合信号计算平台,其能效具有数据路径的分辨率并因此的大小。 65nm CMOS试验芯片上的测量展示了3英镑分辨率的9.1顶部/倍的峰值能效,并以8-B分辨率缩小为1.1顶/倍。

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