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Multi-robot Task Allocation Strategy based on Particle Swarm Optimization and Greedy Algorithm

机译:基于粒子群算法和贪婪算法的多机器人任务分配策略

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In order to improve the resource utilization efficiency of heterogeneous multi-robots, minimize the execution time of multi-type tasks, effectively maintain the load balancing of robot resources, solve the problem of multiple resources and difficult to find a near-optimal solution for multi-robot collaborative planning, a multi-robot task allocation strategy combining improved particle swarm optimization and greedy (IPSO-G) algorithm is proposed. The strategy is divided into two steps: First, the improved particle swarm optimization algorithm is used to search for the combination of tasks and robots; after that, the greedy algorithm is used to sort the task execution order in the task combination, and generate the overall cost of task execution plan. Through continuous iteration of the above process, the strategy finally finds the optimal solution. In the computer simulation environment, one TSP example is used to verify the feasibility and effectiveness of the proposed strategy.
机译:为了提高异构多机器人的资源利用效率,最大程度地减少多类型任务的执行时间,有效维持机器人资源的负载均衡,解决多资源问题,难以为多机器人找到一种接近最优的解决方案。机器人协同计划,提出了一种结合改进粒子群算法和贪婪算法的多机器人任务分配策略。该策略分为两个步骤:首先,使用改进的粒子群优化算法来搜索任务和机器人的组合;然后,采用贪婪算法对任务组合中的任务执行顺序进行排序,生成任务执行计划的总成本。通过上述过程的不断迭代,该策略最终找到了最佳解决方案。在计算机仿真环境中,使用一个TSP示例来验证所提出策略的可行性和有效性。

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