Title
RACOD: algorithm/hardware co-design for mobile robot path planning
Abstract
RACOD is an algorithm/hardware co-design for mobile robot path planning. It consists of two main components: CODAcc , a hardware accelerator for collision detection ; and RASExp , an algorithm extension for runahead path exploration. CODAcc uses a novel MapReduce-style hardware computational model and massively parallelizes individual collision checks. RASExp predicts future path explorations and proactively computes its collision status ahead of time, thereby overlapping multiple collision detections. By affording multiple cheap CODAcc accelerators and overlapping collision detections using RASExp, RACOD significantly accelerates planning for mobile robots operating in arbitrary environments. Evaluations of popular benchmarks show up to 41.4× (self-driving cars) and 34.3× (pilotless drones) speedup with less than 0.3% area overhead. While the performance is maximized when CODAcc and RASExp are used together, they can also be used individually. To illustrate, we evaluate CODAcc alone in the context of a stationary robotic arm and show that it improves performance by 3.4×--3.8×. Also, we evaluate RASExp alone on commodity many-core CPU and GPU platforms by implementing it purely in software and show that with 32/128 CPU/GPU threads, it accelerates the end-to-end planning time by 8.6×/2.9×.
Year
DOI
Venue
2022
10.1145/3470496.3527383
ISCA: International Symposium on Computer Architecture
Keywords
DocType
ISSN
hardware acceleration, speculative parallelism, robotics, path planning, collision detection
Conference
1063-6897
Citations 
PageRank 
References 
2
0.36
7
Authors
6
Name
Order
Citations
PageRank
Mohammad Bakhshalipour180.75
Seyed Borna Ehsani220.36
Mohamad Qadri320.36
Dominic Guri420.36
Maxim Likhachev52103157.03
Phillip B. Gibbons66863624.14