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Optimization of potential field method parameters through networks for swarm cooperative manipulation tasks:

机译:通过网络优化群体协同操作任务的潜在现场方法参数:

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An interesting current research field related to autonomous robots is mobile manipulation performed by cooperating robots (in terrestrial, aerial and underwater environments). Focusing on the underwater scenario, cooperative manipulation of Intervention-Autonomous Underwater Vehicles (I-AUVs) is a complex and difficult application compared with the terrestrial or aerial ones because of many technical issues, such as underwater localization and limited communication. A decentralized approach for cooperative mobile manipulation of I-AUVs based on Artificial Neural Networks (ANNs) is proposed in this article. This strategy exploits the potential field method; a multi-layer control structure is developed to manage the coordination of the swarm, the guidance and navigation of I-AUVs and the manipulation task. In the article, this new strategy has been implemented in the simulation environment, simulating the transportation of an object. This object is moved along a desired trajectory in an unknown environment and it is transported by four underwater mobile robots, each one provided with a seven-degrees-of-freedom robotic arm. The simulation results are optimized thanks to the ANNs used for the potentials tuning.
机译:当前与自主机器人有关的一个有趣的研究领域是由协作机器人执行的移动操纵(在陆地,空中和水下环境中)。针对水下场景,由于地面定位和通信受限等许多技术问题,与地面或空中相比,介入自主水下航行器(I-AUV)的协同操纵是一个复杂而困难的应用。本文提出了一种基于人工神经网络(ANN)的I-AUV协同移动操纵的分散方法。该策略利用了潜在的现场方法。开发了一种多层控制结构来管理群的协调,I-AUV的引导和导航以及操纵任务。在本文中,此新策略已在模拟环境中实现,可以模拟对象的运输。该物体在未知的环境中沿着所需的轨迹运动,并由四个水下移动机器人运输,每个机器人都配备了七个自由度的机械臂。得益于用于电位调整的ANN,优化了仿真结果。

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