Data-Driven Model-Free Control of Torque-Applying System for a Mechanically Closed-Loop Test Rig Using Neural Networks

A. Parvaresh, M. Mardani
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引用次数: 2

Abstract

This paper presents a data-driven approach that utilizes the gathered experimental data to model and control a test rig constructed for the high-powered gearboxes. For simulating a wide variety of operational conditions, the test rig should be capable of providing different speeds and torques; this is possible using a torque-applying system. For this purpose, Electro-Hydraulic Actuators (EHAs) are used. Since applying accurate torque is a crucial demand as it affects the performance evaluation of the gearboxes, precise modelling of the actuation system along with a high-performance controller are required. In order to eliminate the need to solve complex nonlinear equations of EHA that originate from friction, varying properties of flow and similar, a data-driven system based on neural networks is used for modelling. In this manner, the model of the system, which captures the whole dynamic of the system, can be obtained without any simplifying assumptions. The model is validated with experimental data, and the learning factors are set to zero to reduce the high computational costs. After that, another network of neurons is used as a controller. The performance of the proposed controller under normal conditions and in the presence of disturbances are investigated. The results show a good tracking of this controller for various reference inputs in different conditions with acceptable characteristics. Additionally, the obtained results are compared with a conventional proportional-integral-derivative (PID) controller results, and the superior features of the proposed scheme is concluded.
基于神经网络的机械闭环试验台加矩系统数据驱动无模型控制
本文提出了一种数据驱动的方法,利用收集到的实验数据对大功率变速箱试验台进行建模和控制。为了模拟各种各样的操作条件,试验台应该能够提供不同的速度和扭矩;这可以使用扭矩施加系统。为此,使用了电液执行器(EHAs)。由于应用准确的扭矩是一项至关重要的需求,因为它影响到变速箱的性能评估,因此需要精确的驱动系统建模以及高性能控制器。为了消除由于摩擦、流动特性变化等引起的EHA复杂非线性方程的求解需求,采用基于神经网络的数据驱动系统进行建模。这样,就可以在不作任何简化假设的情况下得到反映系统整体动态的系统模型。用实验数据对模型进行了验证,并将学习因子设置为零,以减少高昂的计算成本。之后,另一个神经元网络被用作控制器。研究了该控制器在正常情况下和存在干扰情况下的性能。结果表明,该控制器对不同条件下的各种参考输入具有良好的跟踪性能。此外,将所得到的结果与传统的比例-积分-导数(PID)控制器的结果进行了比较,得出了所提方案的优越性。
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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