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Recent progress on sampling based dynamic motion planning algorithms

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conference contribution
posted on 2024-11-14, 09:42 authored by Andrew Short, Zengxi PanZengxi Pan, Nathan Larkin, Stephen Van DuinStephen Van Duin
This paper reviews recent developments extending sampling based motion planning algorithms to operate in dynamic environments. Sampling based planners provide an effective approach for solving high degree of freedom robot motion planning problems. The two most common algorithms are the Probabilistic Roadmap Method and Rapidly Exploring Random Trees. These standard techniques are well established, however they assume a fully known environment and generate paths ahead of time. For realistic applications a robot may be required to update its path in real-time as information is gained or obstacles change position. Variants of these standard algorithms designed for dynamic environments are categorically presented and common implementation strategies are explored.

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Citation

Short, A., Pan, Z., Larkin, N. & van Duin, S. (2016). Recent progress on sampling based dynamic motion planning algorithms. 2016 IEEE International Conference on Advanced Intelligent Mechatronics (AIM) (pp. 1305-1311). USA: IEEE.

Parent title

IEEE/ASME International Conference on Advanced Intelligent Mechatronics, AIM

Volume

2016-September

Pagination

1305-1311

Language

English

RIS ID

110383

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