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首页> 外文期刊>International Journal of Advanced Robotic Systems >Deep submergence rescue vehicle docking based on parameter adaptive control with acoustic and visual guidance
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Deep submergence rescue vehicle docking based on parameter adaptive control with acoustic and visual guidance

机译:基于参数自适应控制的深度淹没救援车辆对接,具有声学和视觉指导

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In view of the difficulties in the attitude determination of wrecked submarine and the automatic attitude matching of deep submergence rescue vehicles during the docking and guidance of a submarine rescue vehicle, this study proposes a docking method based on parameter adaptive control with acoustic and visual guidance. This study omits the process of obtaining the information of the wrecked submarine in advance, thus saving considerable detection time and improving rescue efficiency. A parameter adaptive controller based on reinforcement learning is designed. The S-plane and proportional integral derivative controllers are trained through reinforcement learning to obtain the control parameters in the improvement of the environmental adaptability and anti-current ability of deep submarine rescue vehicles. The effectiveness of the proposed method is proved by simulation and pool tests. The comparison experiment shows that the parameter adaptive controller based on reinforcement learning has better control effect, accuracy, and stability than the untrained control method.
机译:鉴于在潜艇救援车辆在对接和指导期间沉默潜艇和深层淹没车辆自动姿态匹配的态度决定的困难,本研究提出了一种基于参数自适应控制的对接方法,具有声学和视觉指导。本研究省略了预先获取破坏潜艇信息的过程,从而节省了相当大的检测时间和提高救援效率。设计了一种基于钢筋学习的参数自适应控制器。通过加强学习训练S平面和比例整体衍生物控制器,以便在改善深潜艇救援车辆的环境适应性和防电流能力方面获得控制参数。通过仿真和池测试证明了所提出的方法的有效性。比较实验表明,基于加固学习的参数自适应控制器具有更好的控制效果,准确性和稳定性而不是未训练的控制方法。

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