Evolutionary algorithms for self-tuning Active Vibration Control of flexible beam

M. Fadil, I. Darus
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引用次数: 5

Abstract

This paper presents the development of self tuning Active Vibration Control (AVC) strategy for flexible beam structure. An experimental procedure was conducted on a flexible beam structure with clamped-free boundary condition. The beam was forced to vibrate using an external force and a set of input-output vibration data was acquired. Using the input-output data, the flexible beam model was developed using Least Squares (LS) algorithm that incorporated the Auto Regressive (ARX) model structure. The AVC controllers developed are proportional-derivative (PD) and proportionalintegral-derivative (PID). The parameters of PD and PID controllers were tuned using iterative learning algorithm (ILA) and evolutionary Particle Swarm Optimization (PSO) techniques. Mean squared errors (MSE) were used to compare PSO tuned PD (PD-PSO), PSO tuned PID (PID-PSO) and PID with ILA (PID-ILA) controllers. It was found that the PID-ILA controller tuned using ILA had performed better than PID-PSO but PD-PSO is the best among the three controllers.
柔性梁自调谐振动主动控制的进化算法
本文介绍了柔性梁结构自整定振动主动控制策略的研究进展。对具有无夹紧边界条件的柔性梁结构进行了实验研究。利用外力使梁产生振动,得到一组输入-输出振动数据。利用输入-输出数据,采用最小二乘(LS)算法建立了柔性梁模型,并结合了自动回归(ARX)模型结构。所开发的AVC控制器有比例导数控制器(PD)和比例积分导数控制器(PID)。采用迭代学习算法(ILA)和进化粒子群优化(PSO)技术对PD和PID控制器的参数进行了整定。均方误差(MSE)用于比较PSO调谐PD (PD-PSO), PSO调谐PID (PID-PSO)和PID与ILA (PID-ILA)控制器。结果表明,PID-ILA控制器的性能优于PID-PSO控制器,而PD-PSO控制器的性能最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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