A Novel Model-Based Adaptive Feedforward-Feedback Control Method for Real-Time Hybrid Simulation considering Additive Error Model

X. Ning, Wei Huang, Guoshan Xu, Zhen Wang, Bin Wu, Lichang Zheng, Bin Xu
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Abstract

Adaptive control methods have been widely adopted to handle the variable time delay in real-time hybrid simulation (RTHS). Nevertheless, the initial parameter settings in adaptive control law, the parameter estimation method, and the testing system nonlinearity will affect RTHS’s accuracy and stability at different levels. To this end, this study proposes a novel model-based adaptive feedforward-feedback control method that considers an additive error model. In the proposed method, the time delay and amplitude discrepancy are roughly compensated by a feedforward controller and then finely reduced by an adaptive controller, and an outer-loop control formed by the feedback controller is introduced to improve the ability and robustness furthermore. What’s more, the testing system, composed of the transfer system and physical specimen, is divided into the nominal and additive error models. The feedforward controller is devised using the inverse nominal model, whose parameters are constant. The adaptive controller is designed to adopt a discrete-time additive error model, in which the parameters are identified online by the Kalman filter. Numerical simulations, parametric studies, and actual experiments were carried out to inspect the feasibility and effectiveness of this method thoroughly. Results indicate that the proposed method can effectively improve the accuracy and stability of RTHS and significantly reduce the dependence on the adaptive control law. Moreover, the proposed method exhibits strong robustness and is, therefore, useful in RTHS.
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基于模型的新型自适应前馈-反馈控制方法,用于考虑加性误差模型的实时混合仿真
在实时混合仿真(RTHS)中,自适应控制方法被广泛用于处理变时延问题。然而,自适应控制律的初始参数设置、参数估计方法以及测试系统的非线性都会在不同程度上影响RTHS的精度和稳定性。为此,本研究提出了一种考虑加性误差模型的基于模型的自适应前馈反馈控制方法。该方法通过前馈控制器对时滞和幅度差进行粗补偿,再通过自适应控制器对时滞和幅度差进行精细减小,并引入由反馈控制器形成的外环控制,进一步提高了系统的能力和鲁棒性。测试系统由传递系统和物理试样组成,分为标称误差模型和加性误差模型。采用参数不变的逆标称模型设计前馈控制器。自适应控制器采用离散时间加性误差模型,通过卡尔曼滤波在线辨识参数。通过数值模拟、参数化研究和实际实验,全面验证了该方法的可行性和有效性。结果表明,该方法能有效提高RTHS的精度和稳定性,显著降低对自适应控制律的依赖。此外,所提出的方法具有很强的鲁棒性,因此在RTHS中很有用。
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