Generation of Snake Robot Locomotion Patterns Using Genetic Algorithm
Juhyun Pyo, Meungsuk Lee, Dong-Gwan Shin, Kap-Ho Seo, Hangil Joe, Jin-Ho Suh, Maolin Jin
- Year
- 2021
- Citations
- 2
Abstract
This paper presents a novel method of designing an efficient locomotion pattern generating algorithm for snake robots by a genetic algorithm (GA). In search and rescue operations in disaster areas, a snake robot requires multiple locomotion patterns. To overcome the complexity of snake robot control, we used a central pattern generator (CPG)-based control method which mimics the motion of a biological snake. GA was used to optimize CPG parameters to maximize locomotion performance. The locomotion performance according to the CPG parameters change was analyzed using the snake robot simulator. The proposed locomotion pattern generation algorithm evolved quickly for the target performance and obtained CPG parameters for the desired locomotion.
Keywords
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