Trajectory planning and obstacle avoidnace for omnidirectinonal robots

dc.contributor.authorHashım Al- Dahhan, Mohammed Rabeea
dc.contributor.departmentÇankaya Üniversitesi, Fen Bilimleri Enstitüsü, Elektronik ve Haberleşme Mühendisliği Bölümütr_TR
dc.date.accessioned2021-06-28T12:19:22Z
dc.date.available2021-06-28T12:19:22Z
dc.date.issued2020
dc.description.abstractPath planning algorithms for mobile robots are concerned with finding a feasible path between a start and goal location in a given environment without hitting obstacles. In the existing literature, important performance metrics for path planning algorithms are the path length, computation time and path safety, which is quantified by the minimum distance of a path from obstacles. The subject of this thesis is the development of path planning algorithms that consist of straight-line segments. Such paths are suitable for omni-directional robots and can as well be used as initial solution paths for applying smoothing. As the main contribution of the thesis, we develop three new planning methodologies that address all of the stated performance metrics. The original idea of the first approach is the pre-processing of the environment map by increasing the obstacle region. That is, when applying sampling-based path planning algorithms such as PRM* (probabilistic roadmap), RRT* (rapidly exploring random tree) or FMT (fast marching tree), node samples in irrelevant regions of the environment are avoided. This measure speeds up the path computation and increases path safety. The second approach proposes the computation of a modified environment map that confines solution paths to the vicinity of the Voronoi boundary of the given environment. Using this modified environment map, we adapt the sampling strategy of the popular path planning algorithms PRM, PRM* and FMT. As a result, we are able to generate solution paths with a reduced computation time and increased path safety. Different from the first two approaches, the third approach uses information about the topology of the environment from the generalized Voronoi diagram of the environment. Specifically, initial solution paths that follow Voronoi edges are iteratively refined by introduce shortcuts and by adding new waypoints to remove corners in the path. The thesis performs comprehensive computational experiments to illustrate the advantages of the proposed approaches. In particular, the third approach proves to be most promising since it addresses the properties of environments for mobile robots.tr_TR
dc.description.abstractPath planning algorithms for mobile robots are concerned with finding a feasible path between a start and goal location in a given environment without hitting obstacles. In the existing literature, important performance metrics for path planning algorithms are the path length, computation time and path safety, which is quantified by the minimum distance of a path from obstacles. The subject of this thesis is the development of path planning algorithms that consist of straight-line segments. Such paths are suitable for omni-directional robots and can as well be used as initial solution paths for applying smoothing. As the main contribution of the thesis, we develop three new planning methodologies that address all of the stated performance metrics. The original idea of the first approach is the pre-processing of the environment map by increasing the obstacle region. That is, when applying sampling-based path planning algorithms such as PRM* (probabilistic roadmap), RRT* (rapidly exploring random tree) or FMT (fast marching tree), node samples in irrelevant regions of the environment are avoided. This measure speeds up the path computation and increases path safety. The second approach proposes the computation of a modified environment map that confines solution paths to the vicinity of the Voronoi boundary of the given environment. Using this modified environment map, we adapt the sampling strategy of the popular path planning algorithms PRM, PRM* and FMT. As a result, we are able to generate solution paths with a reduced computation time and increased path safety. Different from the first two approaches, the third approach uses information about the topology of the environment from the generalized Voronoi diagram of the environment. Specifically, initial solution paths that follow Voronoi edges are iteratively refined by introduce shortcuts and by adding new waypoints to remove corners in the path. The thesis performs comprehensive computational experiments to illustrate the advantages of the proposed approaches. In particular, the third approach proves to be most promising since it addresses the properties of environments for mobile robots.tr_TR
dc.identifier.citationHashım Al- Dahhan, Mohammed Rabeea (2020). Trajectory planning and obstacle avoidnace for omnidirectinonal robots / Her yönde hareket edebilen robotlar için yol planlama ve engelden kaçınma. Yayımlanmış doktora tezi. Ankara: Çankaya Üniversitesi, Fen bilimleri Enstitüsü.tr_TR
dc.identifier.endpage137tr_TR
dc.identifier.startpage1tr_TR
dc.identifier.urihttp://hdl.handle.net/20.500.12416/4873
dc.language.isoengtr_TR
dc.rightsinfo:eu-repo/semantics/openAccesstr_TR
dc.subjectPath Planningtr_TR
dc.subjectOmni-Directional Robotstr_TR
dc.subjectSampling-Based Algorithmstr_TR
dc.subjectVoronoi Diagramtr_TR
dc.subjectSafetytr_TR
dc.subjectFast Computationtr_TR
dc.subjectShortest Pathtr_TR
dc.subjectYol Planlamatr_TR
dc.subjectHer Yönde Hareket Edebilen Robotlartr_TR
dc.subjectÖrnekleme Tabanlı Algoritmalartr_TR
dc.subjectVoronoi Diyagramıtr_TR
dc.subjectGüvenliktr_TR
dc.subjectHızlı Hesaplamatr_TR
dc.subjectEn Kısa Yoltr_TR
dc.titleTrajectory planning and obstacle avoidnace for omnidirectinonal robotstr_TR
dc.title.alternativeHer yönde hareket edebilen robotlar için yol planlama ve engelden kaçınmatr_TR
dc.typedoctoralThesistr_TR

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