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首页> 外文期刊>IEEE Journal of Oceanic Engineering >On-line learning control of autonomous underwater vehicles using feedforward neural networks
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On-line learning control of autonomous underwater vehicles using feedforward neural networks

机译:使用前馈神经网络的自动水下航行器在线学习控制

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摘要

A neural-network-based learning control scheme for the motion control of autonomous underwater vehicles (AUV) is described. The scheme has a number of advantages over the classical control schemes and conventional adaptive control techniques. The dynamics of the controlled vehicle need not be fully known. The controller with the aid of a gain layer learns the dynamics and adapts fast to give the correct control action. The dynamic response and tracking performance could be accurately controlled by adjusting the network learning rate. A modified direct control scheme using multilayered neural network architecture is used in the studies with backpropagation as the learning algorithm. Results of simulation studies using nonlinear AUV dynamics are described in detail. The robustness of the control system to sudden and slow varying disturbances in the dynamics is studied and the results are presented.
机译:描述了一种用于自主水下航行器(AUV)运动控制的基于神经网络的学习控制方案。与经典控制方案和常规自适应控制技术相比,该方案具有许多优点。不需要完全了解受控车辆的动态。借助增益层的控制器可以学习动态特性,并快速适应以给出正确的控制动作。通过调整网络学习速率,可以准确地控制动态响应和跟踪性能。在研究中使用了使用多层神经网络架构的改进直接控制方案,并将反向传播作为学习算法。详细介绍了使用非线性AUV动力学进行仿真研究的结果。研究了控制系统对动力学中突然和缓慢变化的干扰的鲁棒性,并给出了结果。

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