2015
DOI: 10.14569/ijacsa.2015.060408
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Robot Path Planning Based on Random Coding Particle Swarm Optimization

Abstract: Abstract-Mobile robot navigation is to find an optimal path to guide the movement of the robot, so path planning is guaranteed to find a feasible optimal path. However, the path planning problem must be solve two problems, i.e., the path must be kept away from obstacles or avoid the collision with obstacles and the length of path should be minimized. In this paper, a path planning algorithm based on random coding particle swarm optimization (RCPSO) algorithm is proposed to get the optimal collision-free path. … Show more

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Cited by 10 publications
(8 citation statements)
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“…This makes it difficult using FL method to address path planning problems in unstructured environments without combining it with other methods. Despite the strength of good optimization capacity of GA, it is difficult for GA to scale well with complex scenarios and it is characterized with convenience at local minima and oscillation problems [239,240]. Also, due to its complex principle, it may be difficult to deal with dynamic data sets to achieve good results [233].…”
Section: Challenges Of Nature-inspired Path Planning Methodsmentioning
confidence: 99%
See 2 more Smart Citations
“…This makes it difficult using FL method to address path planning problems in unstructured environments without combining it with other methods. Despite the strength of good optimization capacity of GA, it is difficult for GA to scale well with complex scenarios and it is characterized with convenience at local minima and oscillation problems [239,240]. Also, due to its complex principle, it may be difficult to deal with dynamic data sets to achieve good results [233].…”
Section: Challenges Of Nature-inspired Path Planning Methodsmentioning
confidence: 99%
“…Though PSO is described to be simple with less computing time requirement and effective in implementing with varied optimization problems with good results [192][193][194][195], it is difficult to deal with trapping into local minima problems under complex map [194,240]. Although ACO is noted for fast convergence with optimal results [233,234], it requires a lot of computing time and it is difficult to determine the parameters which affects obtaining quick convergence [233,240]. Compared to conventional algorithms, memetic algorithm is described to possess the ability to produce faster convergence and good result; however, it can result in premature convergence [235].…”
Section: Challenges Of Nature-inspired Path Planning Methodsmentioning
confidence: 99%
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“…3) Random Co ding PSO: Random Coding PSO (RCPSO) [8] is an extension ofthe above explained PSO algorithm. In this algorithm, random coding and genetic algorithm 's crossover operator are introduced to the concept of particle swanns.…”
Section: A Previous Workmentioning
confidence: 99%
“…It has been an important progress several tasks like in planning [4], [5], design [6] and control [7], [8]. It gives more feasibility to robotic mechanisms because of the existence of several solutions in the specified workspace.…”
Section: Introductionmentioning
confidence: 99%