Dadu-CD: Fast and Efficient Processing-in-Memory Accelerator for Collision Detection

Yuxin Yang, Xiaoming Chen, Yinhe Han
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引用次数: 9

Abstract

Collision detection is a fundamental task in motion planning of robotics. Typically, the performance of collision detection is the bottleneck of an entire motion planning, and so does the energy consumption. Several hardware accelerators have been proposed for collision detection, which achieves higher performance and energy efficiency than general-purpose CPUs and GPUs. However, existing accelerators are still facing the limited memory bandwidth bottleneck, due to the large data volume required by the parallel processing cores and the limited DRAM bandwidth. In this work, we propose a novel collision detection accelerator by employing the processing-in-memory technique. We elaborate the in-memory processing architecture to fully utilize the internal bandwidth of DRAM banks. To make the algorithm and hardware suitable for in-memory processing to be highly efficient, a set of innovative software and hardware techniques are also proposed. Compared with a state-of-the-art ASIC-based collision detection accelerator, both performance and energy efficiency of our accelerator are significantly improved.
Dadu-CD:快速高效的内存处理碰撞检测加速器
碰撞检测是机器人运动规划中的一项基本任务。通常,碰撞检测的性能是整个运动规划的瓶颈,能量消耗也是瓶颈。已经提出了几种用于碰撞检测的硬件加速器,它们比通用cpu和gpu实现了更高的性能和能效。然而,由于并行处理核需要的数据量大,而DRAM带宽有限,现有的加速器仍然面临着有限的内存带宽瓶颈。在这项工作中,我们提出了一种新的碰撞检测加速器,采用内存处理技术。为了充分利用DRAM组的内部带宽,我们详细设计了内存处理架构。为了使算法和硬件更高效地适用于内存处理,本文还提出了一套创新的软硬件技术。与目前最先进的基于asic的碰撞检测加速器相比,我们的加速器的性能和能效都有了显著提高。
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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