基于神经网络的欠驱动双桥起重机匹配和非匹配扰动自适应滑模控制

Tianci Wen, Yongchun Fang, Biao Lu
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引用次数: 0

摘要

为了提高运输能力,双桥式起重机系统(DOCS)在大型/重型货物和集装箱运输中发挥着越来越重要的作用。遗憾的是,在试图解决控制问题时,当前的方法未能充分考虑外部干扰、输入死区、参数不确定性等因素,以及 DOCS 通常会遇到的其他未建模动态问题。因此,控制性能急剧下降,严重阻碍了 DOCS 的实际应用。受此启发,本文设计了一种基于神经网络的 DOCS 自适应滑模控制(SMC)方法来解决上述问题,该方法即使在存在匹配和不匹配干扰的情况下,也能对致动和欠致动状态变量实现令人满意的控制性能。基于严格的 Lyapunov 分析证明了理想平衡点的渐进稳定性。最后,还收集了大量硬件实验结果,以验证所提方法的效率和鲁棒性。
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Neural network-based adaptive sliding mode control for underactuated dual overhead cranes suffering from matched and unmatched disturbances

To improve transportation capacity, dual overhead crane systems (DOCSs) are playing an increasingly important role in the transportation of large/heavy cargos and containers. Unfortunately, when trying to deal with the control problem, current methods fail to fully consider such factors as external disturbances, input dead zones, parameter uncertainties, and other unmodeled dynamics that DOCSs usually suffer from. As a result, dramatic degradation is caused in the control performance, which badly hinders the practical applications of DOCSs. Motivated by this fact, this paper designs a neural network-based adaptive sliding mode control (SMC) method for DOCS to solve the aforementioned issues, which achieves satisfactory control performance for both actuated and underactuated state variables, even in the presence of matched and mismatched disturbances. The asymptotic stability of the desired equilibrium point is proved with rigorous Lyapunov-based analysis. Finally, extensive hardware experimental results are collected to verify the efficiency and robustness of the proposed method.

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