A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment
Sampling-based path planning methods for autonomous agents are one of the well-known classes of robotic navigation approaches with significant advantages including ease of implementation and efficiency in problems with high degrees of freedom. However, there are some serious drawbacks like inability...
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my.uniten.dspace-218682023-05-16T10:45:48Z A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment Khaksar W. Hong T.S. Khaksar M. Motlagh O. 54960984900 8231495000 55350135000 25641787000 Sampling-based path planning methods for autonomous agents are one of the well-known classes of robotic navigation approaches with significant advantages including ease of implementation and efficiency in problems with high degrees of freedom. However, there are some serious drawbacks like inability to plan in unknown environments, failure in complex workspaces, instability of results in different runs, and generating non-optimal solutions; which make sampling-based planners less efficient in practice. In this paper, a fuzzy controller is proposed which utilizes the heuristic rules of Tabu search to improve the quality of generated samples. The main contribution of this work is the ability of the proposed sampling-based planner to work effectively in unknown environments and to plan efficiently in complex workspaces by letting the fuzzy-Tabu controller check the quality of the generated samples before any further processing. The efficiency of the proposed planner is tested in several workspaces and the comparison studies show significant improvement in runtime and failure rate. Furthermore, the decision variables of the proposed controller are discussed in detail to determine their effect on the performance of the algorithm. © 2014, Springer Science+Business Media New York. Final 2023-05-16T02:45:48Z 2023-05-16T02:45:48Z 2014 Article 10.1007/s10489-014-0572-7 2-s2.0-84918819113 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84918819113&doi=10.1007%2fs10489-014-0572-7&partnerID=40&md5=c0944bd4e2ba09a9ccac9ddd32f9539b https://irepository.uniten.edu.my/handle/123456789/21868 41 3 870 886 All Open Access, Green Kluwer Academic Publishers Scopus |
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Sampling-based path planning methods for autonomous agents are one of the well-known classes of robotic navigation approaches with significant advantages including ease of implementation and efficiency in problems with high degrees of freedom. However, there are some serious drawbacks like inability to plan in unknown environments, failure in complex workspaces, instability of results in different runs, and generating non-optimal solutions; which make sampling-based planners less efficient in practice. In this paper, a fuzzy controller is proposed which utilizes the heuristic rules of Tabu search to improve the quality of generated samples. The main contribution of this work is the ability of the proposed sampling-based planner to work effectively in unknown environments and to plan efficiently in complex workspaces by letting the fuzzy-Tabu controller check the quality of the generated samples before any further processing. The efficiency of the proposed planner is tested in several workspaces and the comparison studies show significant improvement in runtime and failure rate. Furthermore, the decision variables of the proposed controller are discussed in detail to determine their effect on the performance of the algorithm. © 2014, Springer Science+Business Media New York. |
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54960984900 |
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54960984900 Khaksar W. Hong T.S. Khaksar M. Motlagh O. |
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Khaksar W. Hong T.S. Khaksar M. Motlagh O. |
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Khaksar W. Hong T.S. Khaksar M. Motlagh O. A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
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Khaksar W. |
title |
A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
title_short |
A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
title_full |
A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
title_fullStr |
A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
title_full_unstemmed |
A fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
title_sort |
fuzzy-tabu real time controller for sampling-based motion planning in unknown environment |
publisher |
Kluwer Academic Publishers |
publishDate |
2023 |
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1806427411413204992 |
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13.214268 |