2022
DOI: 10.3390/s22239203
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A Sampling-Based Algorithm with the Metropolis Acceptance Criterion for Robot Motion Planning

Abstract: Motion planning is one of the important research topics of robotics. As an improvement of Rapidly exploring Random Tree (RRT), the RRT* motion planning algorithm is widely used because of its asymptotic optimality. However, the running time of RRT* increases rapidly with the number of potential path vertices, resulting in slow convergence or even an inability to converge, which seriously reduces the performance and practical value of RRT*. To solve this issue, this paper proposes a two-phase motion planning al… Show more

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Cited by 3 publications
(2 citation statements)
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“…After it decays to a certain value, the recovery learning rate is re-adjusted. Based on the Metropolis criterion, the current local optimal solution is removed, and the global optimal solution is re-found [6]. The Metropolis criteria are as follows:…”
Section: Cosine Annealingmentioning
confidence: 99%
“…After it decays to a certain value, the recovery learning rate is re-adjusted. Based on the Metropolis criterion, the current local optimal solution is removed, and the global optimal solution is re-found [6]. The Metropolis criteria are as follows:…”
Section: Cosine Annealingmentioning
confidence: 99%
“…In Ref. [ 158 ], based on the Metropolis acceptance criterion, an asymptotic vertex acceptance criterion and a nonlinear dynamic vertex acceptance criterion are developed. Q-Learning is an algorithm in reinforcement learning for making decisions and learning based on behavioural norms and rewards, in Ref.…”
Section: Overview Of Rrt-based Algorithm Improvementsmentioning
confidence: 99%