Double global optimum genetic algorithm–particle swarm optimization-based welding robot path planning

2015 ◽  
Vol 48 (2) ◽  
pp. 299-316 ◽  
Author(s):  
Xuewu Wang ◽  
Yingpan Shi ◽  
Dongyan Ding ◽  
Xingsheng Gu
2018 ◽  
Vol 9 (2) ◽  
pp. 61
Author(s):  
Miftah Rahmalia Ariyati ◽  
Ahmad Reza Musthafa

Abstract. A research on robot planning path has been widely conducted and developed. Generally, the desired path is the safe one which has no obstacles and it can be conducted in a quick process. There are several methods that can be applied in planning the path including particle swarm optimization method and genetic algorithm. Both methods are compared in this research in order to discover the best method. Particle swarm optimization method utilizes the particle population movement and genetic algorithm method explores a population consisting individuals’ solutions. The finding reveals that particle swarm optimization method is better than generic algorithm method. This is due to computation time and path required by particle swarm optimization method are shorter than genetic method algorithm. Keyword: Robot path planning, particle swarm optimization, genetic algorithm.Abstrak. Penelitian mengenai perencanaan jalur untuk robot mobil telah banyak diteliti dan dikembangkan. Pada umumnya perencanaan jalur yang diinginkan adalah jalur yang yang aman, tanpa rintangan, dan jarak tempuh yang singkat. Terdapat beberapa metode yang dapat diterapkan dalam perencanaan jalur ini diantaranya adalah metode particle swarm optimization dan genetic algorithm. Pada penelitian ini, kedua metode optimasi tersebut diterapkan. Kedua metode optimasi tersebut dibandingkan untuk didapatkan metode dengan hasil yang terbaik. Metode particle swarm optimization memanfaatkan pergerakan populasi partikel dan metode genetic algorithm melakukan pencarian pada sebuah populasi dari sejumlah individu-individu yang merupakan solusi permasalahan. Hasil penelitian yang dilakukan dengan membandingkan kedua metode optimasi ini adalah metode particle swarm optimization lebih baik daripada metode genetic algorithm. Hal ini berdasarkan pada waktu komputasi dan jalur tempuh yang dibutuhkan oleh metode particle swarm optimization lebih pendek dibandingkan metode genetic algorithm. Kata Kunci: perencanaan jalur robot, particle swarm optimization, genetic algorithm.


2020 ◽  
Vol 17 (5) ◽  
pp. 172988142093615
Author(s):  
Biwei Tang ◽  
Kui Xiang ◽  
Muye Pang ◽  
Zhu Zhanxia

Path planning is of great significance in motion planning and cooperative navigation of multiple robots. Nevertheless, because of its high complexity and nondeterministic polynomial time hard nature, efficiently tackling with the issue of multi-robot path planning remains greatly challenging. To this end, enhancing a coevolution mechanism and an improved particle swarm optimization (PSO) algorithm, this article presents a coevolution-based particle swarm optimization method to cope with the multi-robot path planning issue. Attempting to well adjust the global and local search abilities and address the stagnation issue of particle swarm optimization, the proposed particle swarm optimization enhances a widely used standard particle swarm optimization algorithm with the evolutionary game theory, in which a novel self-adaptive strategy is proposed to update the three main control parameters of particles. Since the convergence of particle swarm optimization significantly influences its optimization efficiency, the convergence of the proposed particle swarm optimization is analytically investigated and a parameter selection rule, sufficiently guaranteeing the convergence of this particle swarm optimization, is provided in this article. The performance of the proposed planning method is verified through different scenarios both in single-robot and in multi-robot path planning problems. The numerical simulation results reveal that, compared to its contenders, the proposed method is highly promising with respect to the path optimality. Also, the computation time of the proposed method is comparable with those of its peers.


Author(s):  
Masakazu Kobayashi ◽  
Higashi Masatake

A robot path planning problem is to produce a path that connects a start configuration and a goal configuration while avoiding collision with obstacles. To obtain a path for robots with high degree of freedom of motion such as an articulated robot efficiently, sampling-based algorithms such as probabilistic roadmap (PRM) and rapidly-exploring random tree (RRT) were proposed. In this paper, a new robot path planning method based on Particle Swarm Optimization (PSO), which is one of heuristic optimization methods, is proposed in order to improve efficiency of path planning for a wider range of problems. In the proposed method, a group of particles fly through a configuration space while avoiding collision with obstacles and a collection of their trajectories is regarded as a roadmap. A velocity of each particle is updated for every time step based on the update equation of PSO. After explaining the details of the proposed method, this paper shows the comparisons of efficiency between the proposed method and RRT for 2D maze problems and then shows application of the proposed method to path planning for a 6 degree of freedom articulated robot.


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