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首页> 外文期刊>International Journal of Advanced Robotic Systems >Multi-AUV Hunting Algorithm Based on Bio-inspired Neural Network in Unknown Environments:
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Multi-AUV Hunting Algorithm Based on Bio-inspired Neural Network in Unknown Environments:

机译:在未知环境中基于生物启发式神经网络的多AUV狩猎算法:

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摘要

The multi-AUV hunting problem is one of the key issues in multi-robot system research. In order to hunt the target efficiently a new hunting algorithm based on a bio-inspired neural network has been proposed in this paper. Firstly, the AUV's working environment can be represented, based on the biological-inspired neural network model. There is one-to-one correspondence between each neuron in the neural network and the position of the grid map in the underwater environment. The activity values of biological neurons then guide the AUV's sailing path and finally the target is surrounded by AUVs. In addition, a method called negotiation is used to solve the AUV's allocation of hunting points. The simulation results show that the algorithm used in the paper can provide rapid and highly efficient path planning in the unknown environment with obstacles and non-obstacles.
机译:多AUV搜寻问题是多机器人系统研究中的关键问题之一。为了有效地寻找目标,本文提出了一种新的基于生物启发式神经网络的寻找算法。首先,基于生物启发的神经网络模型可以表示AUV的工作环境。神经网络中的每个神经元与水下环境中的网格图位置之间存在一一对应的关系。然后,生物神经元的活动值指导AUV的航行路线,最后目标被AUV包围。另外,使用一种称为协商的方法来解决AUV搜寻点的分配。仿真结果表明,本文所使用的算法可以在未知环境中有障碍物和无障碍物的情况下提供快速高效的路径规划。

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