2018
DOI: 10.24002/jbi.v9i2.1518
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Autonomous Robot Path Planning Menggunakan Perbandingan Metode Particle Swarm Optimization dan Genetic Algorithm

Abstract: 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 meth… Show more

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“…According to Tuegeh & Purnomo (2009), the PSO method is a population-based random search computation technique called particle which is based on the behavior of individuals moving within the herd. Each individual particle spreads information in the form of its best position to other particles, the information received makes the other particles adjust their position and velocity according to the information received (Ariyati & Musthafa, 2018).…”
Section: Particle Swarm Optimizationmentioning
confidence: 99%
“…According to Tuegeh & Purnomo (2009), the PSO method is a population-based random search computation technique called particle which is based on the behavior of individuals moving within the herd. Each individual particle spreads information in the form of its best position to other particles, the information received makes the other particles adjust their position and velocity according to the information received (Ariyati & Musthafa, 2018).…”
Section: Particle Swarm Optimizationmentioning
confidence: 99%