利用粒子群优化为波音 747-400 飞机俯仰控制设计人工神经网络和比例积分衍生控制器

Hunachew Moges Mitiku, Ayodeji Olalekan Salau, Estifanos Abeje Sharew
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引用次数: 0

摘要

本文介绍了利用粒子群优化(PSO)技术为波音 747-400 飞机俯仰控制(APC)设计人工神经网络(ANN)和比例积分导数(PID)控制器。干扰、开环不稳定和非线性动态的组合是波音 747-400 商用飞机的主要问题。本文利用小扰动理论线性化方法和基于 ANN 的非线性控制器研究了波音 747-400 飞机俯仰角控制的控制机制。与 ANN 控制器相比,PID 控制器通过 PSO 进行调整,而 PID 则通过图形用户界面 (GUI) 进行调整。该系统的控制器是使用 ANN 控制器设计的,并使用 PSO 方法等最新优化技术对 PID 进行调整,以积分平方误差 (ISE) 作为目标函数。对波音 747-400 商用飞机俯仰控制的时域性能进行了比较研究。在不同的升降舵偏转角度下,ANN 控制器的系统性能(包括上升时间 (tr)、稳定时间 (ts)、过冲百分比 (OS%) 和稳态误差)均优于 PID-PSO 和 PID-GUI 控制器。基本上,过冲百分比和稳态误差分别为 0% 和 0,表明 ANN 控制器实现了 100% 的改进。针对波音 747-400 型飞机的俯仰控制,比较了 PID-GUI、PID-PSO 和 ANN 控制器的各种参数。ANN 控制器结构包括两个输入神经元、两个隐藏层神经元和一个输出层神经元。仿真使用 Matlab/Simulink 进行。结果表明,ANN 控制器改进了 PID-PSO 控制器,ANN 控制器获得的飞机性能指标令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of an artificial neural network and proportional-integral-derivative controller using particle swarm optimization for Boeing 747-400 aircraft pitch control

This paper presents the design of an artificial neural network (ANN) and proportional integral derivative (PID) controller using particle swarm optimization (PSO) for Boeing 747-400 aircraft pitch control (APC). The combinations of disturbance, open loop unstable and nonlinear dynamics are major problems in a Boeing 747-400 commercial aircraft. This paper investigates the control mechanism of pitch angle control of Boeing 747-400 with small disturbance theory linearization methods and ANN based non-linear controllers. A PID controller is tuned by PSO, whereas the PID is tuned by graphical user interface (GUI) when compared with an ANN controller. The controller for this system was designed using an ANN controller and PID tuned using a recent optimization technique such as the PSO method with integral square error (ISE) as an objective function. A comparative study of the time domain performances of the pitch control of the Boeing 747-400 commercial aircraft was presented. The ANN controller outperformed the PID-PSO and PID-GUI controllers in terms of system performance, including rising time (tr), settling time (ts), percentage overshoot (percent OS), and steady state error, across various elevator deflection angles. Basically, the percentage overshoot and steady state error were 0% and 0 respectively, indicating that the ANN controller achieved an improvement of 100%. Various parameters were compared with the PID-GUI, PID-PSO, and ANN controllers for pitch control of the Boeing 747-400 air craft. The ANN controller architecture comprises of two input neurons, two hidden layer neurons, and one output layer neuron. The simulation was performed using Matlab/Simulink. The results show that the PID-PSO controller was improved by the ANN controller and the performance specifications of the aircraft obtained by the ANN controller were satisfactory.

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