Comparison of Centralized Task Allocation Methods with A* Path Planning for Multi-Quadruped Robot
Handan Çevik Sari, Hakan Temeltaş
- 发表年份
- 2023
- 引用次数
- 1
摘要
This work focuses on analyzing different centralized task allocation methods for multiple quadruped systems. The goal is to assign tasks to agents by considering obstacles in the area in a way that minimizes power consumption, completes the mission in the shortest possible time, and maximizes task completion ratio. The power consumption and cost-of-transmission for cheetah-type quadruped are analyzed, and the power consumption is extrapolated for speeds between (0.1,0.8) m/s using the results from the literature. A* path planning algorithm is utilized to consider obstacles in the area. Particle swarm optimization and genetic algorithm analyzed to show that a combination of power consumption, mission completion time, and task completion ratio can result in a more efficient and effective task allocation process compared to shortest greedy distance-based allocations. The findings can contribute to the development of more advanced and autonomous systems in various fields, leading to increased productivity, accuracy, and efficiency.
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