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Task Allocation of Multiple Robotic Fishes Based on Self-organizing Map Neural Network

机译:基于自组织地图神经网络的多种机器人鱼类的任务分配

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For a water polo ball game there are multiple water polos and multiple robotic fishes in each team, seeking a reasonable task allocation plan is the key point to win the game. To resolve the problem, this paper proposed a multi-target task allocation method based on the Self-organizing map (SOM) neural network. This method takes the position of the water polos as the input vector, competes and compares the position of the water polos and robotic fishes, outputs the corresponding robotic fish of each water polo. The robotic fish will move toward the target water polo when the weight was adjusted, and will finally reach the target water polo. Simulations show that the score of the team using this method is higher than another team. The results prove the correctness and reliability of this method.
机译:对于水球球游戏,每个团队中有多个水球和多个机器人鱼类,寻求合理的任务分配计划是赢得比赛的关键点。为了解决问题,本文提出了一种基于自组织地图(SOM)神经网络的多目标任务分配方法。该方法将水球的位置作为输入向量,竞争和比较水球和机器人鱼类的位置,输出每个水球的相应机器人鱼。当调节重量时,机器人鱼将朝向目标水球移动,最终将到达目标水球。仿真表明,使用此方法的团队的分数高于另一个团队。结果证明了这种方法的正确性和可靠性。

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