Adaptive backstepping hierarchical sliding mode control for uncertain 3D overhead crane systems

H. Xuan, Thai Nguyen Van, Anh Le Viet, N. Thuy, M. Xuan
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引用次数: 14

Abstract

This paper presents an adaptive backstepping hierarchical sliding mode control algorithm for uncertain 3D overhead crane model. Backstepping sliding mode is constructed based on hierarchical structure to guarantee tracking for trolley and anti-swing for load. Neural network is adopted to approximate the uncertain terms. The disadvantage of sliding mode control is fixed by changing signum function to saturation function. The purposes of this paper are to use RBF neural network to approximate nonlinear function of crane, design hierarchical sliding mode controller based on Lyapunov theory.
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不确定三维桥式起重机系统的自适应反演分层滑模控制
针对不确定三维桥式起重机模型,提出了一种自适应反步分层滑模控制算法。基于层次结构构造了反步滑模,保证了小车的跟踪性和负载的抗摇摆性。采用神经网络对不确定项进行逼近。通过将sgn函数改为饱和函数,解决了滑模控制的缺点。本文的目的是利用RBF神经网络逼近起重机的非线性函数,设计基于李雅普诺夫理论的分层滑模控制器。
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