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The Observer-based Neural Network Adaptive Robust Control of Underwater Hydraulic Manipulator

机译:基于观察者的神经网络自适应鲁棒控制水下液压机械手

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Hydraulic system is widely used in industry where large actuation forces are needed such as electro-hydraulic positioning system, active suspension control, and so on. One of the main problem in hydraulic system is the nontriviality, for instance, the deadbands in valve operation, frictions of links, saturations, pressure dynamics, etc. both system unknown nonlinearities and external disturbances should be considered in controller design. For underwater hydraulic manipulator, because of the environment of sea and the large nonlinearities of the hydraulic manipulator system, both system unknown nonlinearities and external disturbances should be considered in controller design. A lot of control methods have been proposed to solve the problem properly, such as sliding mode control, adaptive control, fuzzy adaptive control, adaptive robust control, ect. However, due to limited knowledge about hydraulic manipulator system, it is hard to precisely estimate the nonlinearities for a possible higher performance. In this paper, a neural network adaptive robust control method is proposed to help control an underwater hydraulic manipulator. In order to achieve better performance using adaptive robust control strategy, unknown nonlinearities in the system are approximated by the outputs of radial basis function neural network (RBFNNs). A projection law has been used to bound the NN weights when they are tuning on-line to avoid possible adaptive divergence, and the tracking transient performance is guaranteed by robust control law. Simulation results illustrate that manipulator has a good tracking performance.
机译:液压系统广泛用于工业,其中需要大型致动力,例如电动液压定位系统,主动悬架控制等。液压系统中的主要问题之一是非活动性,例如,阀门操作中的死区,链路,饱和,压力动力学等摩擦。在控制器设计中应考虑系统未知的非线性和外部干扰。对于水下液压机械手,由于海洋环境和液压机械手系统的大型非线性,在控制器设计中应考虑系统未知的非线性和外部干扰。已经提出了许多控制方法来解决问题,如滑模控制,自适应控制,模糊自适应控制,自适应鲁棒控制,ECT。然而,由于关于液压机械手系统的知识有限,难以精确地估计可能更高的性能的非线性。本文提出了一种神经网络自适应鲁棒控制方法,以帮助控制水下液压机械手。为了实现使用自适应鲁棒控制策略的更好的性能,系统中的未知非线性由径向基函数神经网络(RBFNN)的输出近似。投影法已被用来在在线调谐以避免可能的自适应发散时绑定NN重量,并且通过稳健的控制法保证跟踪瞬态性能。仿真结果说明了机械手具有良好的跟踪性能。

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