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首页> 外文期刊>European Journal of Control >Hybrid data-driven fuzzy active disturbance rejection control for tower crane systems
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Hybrid data-driven fuzzy active disturbance rejection control for tower crane systems

机译:塔式起重机系统的混合数据驱动模糊主动干扰抑制控制

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摘要

This paper proposes the Virtual Reference Feedback Tuning (VRFT) of a combination of two control algorithms, Active Disturbance Rejection Control (ADRC) as a representative data-driven (or model-free) control algorithm and fuzzy control, in order to exploit the advantages of data-driven control and fuzzy control. The combination of Active Disturbance Rejection Control with Proportional-Derivative Takagi-Sugeno Fuzzy Control (PDTSFC) tuned by Virtual Reference Feedback Tuning results in two novel data-driven algorithms referred to as hybrid data-driven fuzzy ADRC algorithms. The main benefit of this combination is the automatic optimal tuning in a model-free manner of the parameters of the combination of Active Disturbance Rejection Control with Proportional-Derivative Takagi-Sugeno Fuzzy Control called ADRC-PDTSFC. The second benefit is that the suggested combination is time saving in finding the optimal parameters of the controllers. However, since Virtual Reference Feedback Tuning generally works with linear controllers to solve a certain optimization problem and the fuzzy controllers are essentially non-linear, this paper replaces the least-squares algorithm specific to Virtual Reference Feedback Tuning with a metaheuristic optimization algorithm, i.e. Grey Wolf Optimizer. The fuzzy control system stability is guaranteed by including a limit cycle-based stability analysis approach in Grey Wolf Optimizer algorithm to validate the next solution candidates. The hybrid data-driven fuzzy ADRC algorithms are validated as controllers in terms of real-time experiments conducted on three-degree-of-freedom tower crane system laboratory equipment. To determine the efficiency of the new hybrid data-driven fuzzy ADRC algorithms, their performance is compared experimentally with that of two control algorithms, namely Active Disturbance Rejection Control with Proportional-Derivative Takagi-Sugeno Fuzzy Control, whose parameters are optimally tuned by Grey Wolf Optimizer in a model-based manner using the nonlinear process model. (C) 2020 European Control Association. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了两个控制算法,主动干扰抑制控制(ADRC)的组合的虚拟参考反馈调谐(VRFT)作为代表性数据驱动(或非型号)控制算法和模糊控制,以利用优势数据驱动控制和模糊控制。通过虚拟参考反馈调谐调谐的比例衍生Takagi-sugeno模糊控制(PDTSFC)的主动扰动抑制控制的组合导致两个新的数据驱动算法称为混合数据驱动模糊ADRC算法。这种组合的主要好处是以自动的方式以具有比例衍生Takagi-Sugeno模糊控制的主动干扰抑制控制的组合的可自动调谐,称为ADRC-PDTSFC。第二个好处是,建议的组合是找到控制器的最佳参数的时间。然而,由于虚拟参考反馈调整通常适用于线性控制器来解决某个优化问题并且模糊控制器基本上是非线性的,因此替换了特定于虚拟参考反馈调整的最小二乘算法,具有灰度优化算法,即灰色狼优化器。通过在灰狼优化器算法中包括基于极限循环的稳定性分析方法来保证模糊控制系统稳定性,以验证下一个解决方案候选者。在三维自由度塔式起重机系统实验室设备的实时实验方面,混合数据驱动的模糊ADRC算法被验证为控制器。为了确定新的混合数据驱动模糊ADRC算法的效率,它们的性能与两个控制算法的性能进行了比较,即具有比例衍生Takagi-Sugeno模糊控制的主动干扰抑制控制,其参数由灰狼最佳地调整使用非线性过程模型以基于模型的方式优化。 (c)2020欧洲控制协会。 elsevier有限公司出版。保留所有权利。

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