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Identification of Non-linear Dynamic Model of UUV Based on ESN Neural Network

机译:基于ESN神经网络的UUV非线性动态模型的识别

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Unmanned underwater vehicle (UUV) is a highly complex nonlinear dynamic system, and neural network has the ability to arbitrary approximate nonlinear system in theoretically. Furthermore, echo state network (ESN) is a new type recurrent neural network based on state reservoir. To improve the accuracy of UUV's dynamic model, this paper based on the use of echo state networks (ESN) of the system identification method, using "meta-learning" strategy for offline training ESN network and genetic algorithm to optimize the main parameters, to remove the difficulty of choosing the ESN parameters. This method was applied to approximate of dynamic model of six degree of freedom of UUV, and build on the dynamic model. Finally, the simulation proved that the network structure identification algorithm has a good approximation ability and fast training speed.
机译:无人驾驶水下车辆(UUV)是一种高度复杂的非线性动态系统,神经网络在理论上具有可任意近似非线性系统的能力。此外,回声状态网络(ESN)是基于状态储层的新型复发性神经网络。为了提高UUV动态模型的准确性,本文基于使用回声状态网络(ESN)的系统识别方法,使用“元学习”策略用于离线训练ESN网络和遗传算法来优化主要参数,到删除选择ESN参数的难度。该方法应用于六种UUV自由度的动态模型的近似,并在动态模型上构建。最后,仿真证明了网络结构识别算法具有良好的近似能力和快速训练速度。

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