Shi Zhiguo, Tu Jun, Li Yuankai, Wei Junming
School of Computer and Communication Engineering, University of Science and Technology, Beijing 100083, China ; Department of Aerospace Engineering, Ryerson University, 350 Victoria Street, Toronto, ON, Canada M5B 2K3.
School of Computer and Communication Engineering, University of Science and Technology, Beijing 100083, China.
ScientificWorldJournal. 2014 Feb 4;2014:818701. doi: 10.1155/2014/818701. eCollection 2014.
MOdeling of task planning for multirobot system is developed from two parts: task decomposition and task allocation. In the part of task decomposition, the conditions and processes of decomposition are elaborated. In the part of task allocation, the collaboration strategy, the framework of reputation mechanism, and three types of reputations are defined in detail, which include robot individual reputation, robot group reputation, and robot direct reputation. A time calibration function and a group calibration function are designed to improve the effectiveness of the proposed method and proved that they have the characteristics of time attenuation, historical experience related, and newly joined robot reward. Tasks attempt to be assigned to the robot with higher overall reputation, which can help to increase the success rate of the mandate implementation, thereby reducing the time of task recovery and redistribution. Player/Stage is used as the simulation platform, and three biped-robots are established as the experimental apparatus. The experimental results of task planning are compared with the other allocation methods. Simulation and experiment results illustrate the effectiveness of the proposed method for multi-robot collaboration system.
任务分解和任务分配。在任务分解部分,阐述了分解的条件和过程。在任务分配部分,详细定义了协作策略、声誉机制框架以及三种类型的声誉,包括机器人个体声誉、机器人团队声誉和机器人直接声誉。设计了时间校准函数和团队校准函数以提高所提方法的有效性,并证明它们具有时间衰减、与历史经验相关以及对新加入机器人奖励的特性。任务尝试分配给整体声誉较高的机器人,这有助于提高任务执行成功率,从而减少任务恢复和重新分配的时间。使用Player/Stage作为仿真平台,并建立三个双足机器人作为实验装置。将任务规划的实验结果与其他分配方法进行比较。仿真和实验结果说明了所提方法对多机器人协作系统的有效性。