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基于粒子群和神经网络的分数阶比例积分微分(FOPID)控制器用于双转子系统,具有改进的跟踪性能和能量降低。

Particle swarm-based and neuro-based FOPID controllers for a Twin Rotor System with improved tracking performance and energy reduction.

作者信息

Norsahperi N M H, Danapalasingam K A

机构信息

Department of Electrical and Electronics Engineering, Faculty of Engineering, Universiti Putra Malaysia, 43400, UPM Serdang, Selangor, Malaysia; Centre for Artificial Intelligence and Robotics, School of Electrical Engineering, Faculty of Engineering, Universiti Teknologi Malaysia, 81310, Skudai, Johor, Malaysia.

Centre for Artificial Intelligence and Robotics, School of Electrical Engineering, Faculty of Engineering, Universiti Teknologi Malaysia, 81310, Skudai, Johor, Malaysia.

出版信息

ISA Trans. 2020 Jul;102:230-244. doi: 10.1016/j.isatra.2020.03.001. Epub 2020 Mar 6.

Abstract

This paper examines two approaches in tuning fractional order proportional-integral-differential (FOPID) control named as neuro-based FOPID (NNFOPID) and particle swarm-based FOPID (PSOFOPID) for pitch control of a Twin Rotor Aerodynamic System (TRAS). For the neuro-based FOPID control, the innovations are the modification of output equation in the artificial neural network and the implementation of the Rectified Linear Unit (ReLU) activation function. The advantages of the proposed approach are a lighter network and the ability to tune more practical controller parameters without a deep knowledge of the system to achieve a satisfying pitch tracking response. As for the particle swarm-based FOPID control, the application of PSO with spreading factor algorithm is extended for tuning the FOPID controller gains and the innovation here is a new procedure in setting the initial search range. The important advantages of this proposed swarm-based algorithm are the avoidance of being trapped in local optima and reduction of the search area respectively. The performances of the proposed controllers are proven by extensive simulations and experimental verifications based on five standard criteria: square-wave characteristics, reference to disturbance ratio, evaluation time, energy consumption of the control signal and tracking performance. The performances of the proposed controllers are compared against an optimised PID control in three system conditions, namely Case I) without coupling effect and wind disturbance, Case II) with coupling effect only and Case III) with wind disturbance only. Together, this study finds that NNFOPID control offers an accurate system positioning by a 34% reduction in steady-state error with the lowest energy consumption and minimum evaluation time in Case II. In terms of the tracking performance and robustness for Case II, the superiority of PSOFOPID control is confirmed by a 27% reduction in the tracking error and the lowest oscillation value. The experimental results also validate the robustness and energy consumption of both controllers in Case III. It is envisaged that the proposed control designs can be very useful in tuning FOPID controller gains for high performance, low energy, and robust aerodynamics systems.

摘要

本文研究了两种用于双转子气动系统(TRAS)俯仰控制的分数阶比例积分微分(FOPID)控制器整定方法,即基于神经网络的FOPID(NNFOPID)和基于粒子群优化的FOPID(PSOFOPID)。对于基于神经网络的FOPID控制,创新之处在于人工神经网络输出方程的修改以及整流线性单元(ReLU)激活函数的应用。该方法的优点是网络更轻,并且无需深入了解系统就能调整更实用的控制器参数,以实现令人满意的俯仰跟踪响应。至于基于粒子群优化的FOPID控制,扩展了带有扩展因子算法的粒子群优化算法来整定FOPID控制器增益,这里的创新是一种设置初始搜索范围的新方法。这种基于粒子群优化的算法的重要优点分别是避免陷入局部最优和缩小搜索区域。基于五个标准准则,即方波特性、参考与干扰比、评估时间、控制信号能耗和跟踪性能,通过大量仿真和实验验证了所提出控制器的性能。在三种系统条件下,将所提出控制器的性能与优化的PID控制进行了比较,即情况I)无耦合效应和风干扰,情况II)仅具有耦合效应,情况III)仅具有风干扰。综合来看,本研究发现,在情况II中,NNFOPID控制实现了准确的系统定位,稳态误差降低了34%,能耗最低且评估时间最短。在情况II的跟踪性能和鲁棒性方面,PSOFOPID控制的优越性得到了证实,跟踪误差降低了27%,振荡值最低。实验结果也验证了两种控制器在情况III中的鲁棒性和能耗。可以设想,所提出的控制设计对于整定高性能、低能耗和鲁棒的气动系统的FOPID控制器增益非常有用。

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