强弱约束条件下废旧家电回收路径规划的双向 Q-learning

IF 12.5 Q1 TRANSPORTATION
Yang Qi , Jinxin Cao , Baijing Wu
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引用次数: 0

摘要

随着家用电器技术的不断革新和人们生活水平的不断提高,废弃家用电器的产量迅速增加,使其回收利用的意义日益重大。传统的路径规划算法在解决废弃家电回收路径所带来的多目标、多约束挑战时,很难在效率和约束之间取得平衡。为解决这一问题,本研究引入了一种基于 Q-learning 的双向路径规划算法。通过开发双向 Q-learning 机制和改进 Q-learning 的初始化方法,该算法旨在实现对废弃家电回收路径的高效优化。该算法实现了从起点和目标点双向更新状态-行动值函数。此外,还引入了分层强化学习策略和引导奖励,以减少盲目探索,加快收敛速度。通过将复杂的回收任务分解为多个子任务,并在每个子任务层面寻找性能优越的路径,减少了最初探索的盲目性。为了验证所提算法的有效性,我们采用了基于网格的真实环境模拟。对比实验显示,该算法在迭代次数和路径长度上都有显著改善,从而验证了其在回收计划路径规划中的实际应用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bidirectional Q-learning for recycling path planning of used appliances under strong and weak constraints
With the continuous innovation in household appliance technology and the improvement of living standards, the production of discarded household appliances has rapidly increased, making their recycling increasingly significant. Traditional path planning algorithms encounter difficulties in balancing efficiency and constraints in addressing the multi-objective, multi-constraint challenge posed by discarded household appliance recycling routes. To tackle this issue, this study introduces a bi-directional Q-learning-based path planning algorithm. By developing a bi-directional Q-learning mechanism and enhancing the initialization method of Q-learning, the algorithm aims to achieve efficient and effective optimization of discarded household appliance recycling routes. It implements bidirectional updates of the state-action value function from both the starting point and the target point. Additionally, a hierarchical reinforcement learning strategy and guided rewards are introduced to minimize blind exploration and expedite convergence. By decomposing complex recycling tasks into multiple sub-tasks and seeking paths with superior performance at each sub-task level, the initial exploratory blindness is reduced. To validate the efficacy of the proposed algorithm, gridbased modeling of real-world environments is utilized. Comparative experiments reveal significant improvements in iteration counts and path lengths, thereby validating its practical applicability in path planning for recycling initiatives.
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CiteScore
15.20
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