GENETIC ALGORITHM-PID CONTROLLER FOR MODEL ORDER REDUCTION PANTOGRAPHCATENARY SYSTEM

Q3 Economics, Econometrics and Finance
N. A. Al-awad, Izz K. Abboud, M. Al-Rawi
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引用次数: 1

Abstract

Controlling the contact force between the pantograph and the catenary has come to be a requirement for improving the performances and affectivity of high-speed train systems Indeed, these performances can also significantly be decreased due to the fact of the catenary equal stiffness variation. In addition, the contact force can also additionally differ and ought to end up null, which may additionally purpose the loss of contact. Then, in this paper, we current an active manipulate of the minimize order model of pantograph-catenary system .The proposed manipulate approach implements an optimization technique, like particle swarm (PSO), the usage of a frequent approximation of the catenary equal stiffness. All the synthesis steps of the manipulate law are given and a formal evaluation of the closed loop stability indicates an asymptotic monitoring of a nominal steady contact force. Then, the usage of Genetic Algorithm with Proportional-Integral-derivative (G.A-PID) as proposed controller appeared optimum response where, the contacts force consequences to be virtually equal to its steady reference. Finally it seems the advantageous of suggestion approach in contrast with classical manipulate strategies like, Internal mode control(IMC) method, linear quadratic regulator (LQR).The outcomes via the use of MATLAB simulation, suggests (G.A-PID) offers better transient specifications in contrast with classical manipulate.
模型降阶弓网系统的遗传算法PID控制器
控制受电弓和接触网之间的接触力已经成为提高高速列车系统性能和有效性的要求。事实上,由于接触网等刚度变化的事实,这些性能也会显著降低。此外,接触力也可能额外不同,并且最终应该为零,这可能额外导致接触损失。然后,在本文中,我们提出了一种对弓网系统最小阶模型的主动操纵方法。所提出的操纵方法实现了一种类似粒子群(PSO)的优化技术,即使用接触网等刚度的频繁近似。给出了操纵定律的所有综合步骤,对闭环稳定性的正式评估表明了对标称稳定接触力的渐近监测。然后,使用比例积分导数遗传算法(G.A-PID)作为所提出的控制器出现了最佳响应,其中,接触力的结果几乎等于其稳定参考。最后,与内模控制(IMC)方法、线性二次调节器(LQR)等经典操纵策略相比,建议方法似乎具有优势。通过使用MATLAB仿真的结果表明,与经典操纵相比,G.A-PID提供了更好的瞬态规范。
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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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
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0
审稿时长
8 weeks
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