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Autopilot Design for Unmanned Surface Vehicle based on CNN and ACO

机译:基于CNN和ACO的无人机地面自动驾驶仪设计

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There is a growing concern to design intelligent controllers for autopiloting unmanned surface vehicles as solution for many naval and civilian requirements. Traditional autopilot’s performance declines due to the uncertainties in hydrodynamics as a result of harsh sailing conditions and sea states. This paper reports the design of a novel nonlinear model predictive controller (NMPC) based on convolutional neural network (CNN) and ant colony optimizer (ACO) which is superior to a linear proportional integral-derivative counterpart. This combination helps the control system to deal with model uncertainties with robustness. The results of simulation and experiment demonstrate the proposed method is more efficient and more capable to guide the vehicle through LOS waypoints particularly in the presence of large disturbances.
机译:设计用于自动驾驶无人水面车辆的智能控制器作为许多海军和民用需求的解决方案越来越引起人们的关注。由于恶劣的航行条件和海况,水动力的不确定性,传统自动驾驶仪的性能下降。本文报告了一种基于卷积神经网络(CNN)和蚁群优化器(ACO)的新型非线性模型预测控制器(NMPC)的设计,该控制器优于线性比例积分-微分对应物。这种组合有助于控制系统以鲁棒性处理模型不确定性。仿真和实验结果表明,所提出的方法更有效,更能引导车辆通过LOS航路点,特别是在存在较大干扰的情况下。

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