A Workflow Scheduling Strategy for Reasoning Tasks of Autonomous Driving

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Jianbin Liao, Rong-jia Xu, Kai Lin, Bing Lin, Xinwei Chen, Hongliang Yu
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引用次数: 0

Abstract

In different periods of time, the real-time reasoning tasks generated by autonomous vehicles are scheduled within the tolerance time, which is an important problem to be solved in autonomous driving. Traditionally, tasks are arranged on the on-board unit (OBU), which results in a long time to complete. Heuristic algorithm is widely used in task scheduling, which often leads to premature convergence. Task scheduling in the edge environment can effectively reduce the completion time of tasks. A workflow scheduling strategy in edge environment is designed. To optimize the completion time of reasoning tasks, this paper proposes a Q-learning algorithm based on simulated annealing (SA-QL). Moreover, this paper comprehensively reflects the performance of SA-RL and PSO algorithm from four aspects. Experimental results show that SA-RL algorithm and PSO algorithm have good performance in feasibility and effectiveness. TD(0) algorithms show better performance of exploration, TD(λ) algorithms show that of convergence.
自动驾驶推理任务的工作流调度策略
在不同时间段内,自动驾驶车辆产生的实时推理任务被安排在容忍时间内,这是自动驾驶中需要解决的一个重要问题。传统上,任务被安排在车载单元(OBU)上,这导致完成任务需要很长时间。启发式算法在任务调度中应用广泛,但往往会导致任务调度的过早收敛。边缘环境下的任务调度可以有效缩短任务的完成时间。设计了一种边缘环境下的工作流调度策略。为了优化推理任务的完成时间,本文提出了一种基于模拟退火(SA-QL)的q学习算法。此外,本文从四个方面全面反映了SA-RL和PSO算法的性能。实验结果表明,SA-RL算法和粒子群算法具有良好的可行性和有效性。TD(0)算法具有较好的搜索性能,TD(λ)算法具有较好的收敛性。
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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来源期刊
CiteScore
1.70
自引率
10.00%
发文量
24
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