基于在线递归闭环子空间辨识的广域模型预测阻尼控制器

Hua Ye, Yutian Liu
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引用次数: 1

摘要

本文提出了一种将在线递归闭环子空间模型辨识与模型预测控制理论相结合的自适应阻尼控制器设计方法。首先确定了包含主导低频振荡模态的降阶状态空间模型。通过模型预测和优化,以电力系统的当前状态为初始状态,得到了一个无限水平闭环最优控制。在每个时间间隔内重复在线模型辨识和控制优化。该策略克服了基于离线辨识的固定参数控制器的固有缺点,解决了复杂工况变化和系统参数时变不确定特性导致控制性能下降的问题。仿真结果证明了该控制器在抑制区域间低频振荡方面的有效性和鲁棒性。文中还讨论了该控制器与多机电力系统中的pss及其他类似控制器的协调策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wide-area model predictive damping controller based on online recursive closed-loop subspace identification
This paper proposes an adaptive damping controller design method by integrating online recursive closed-loop subspace model identification with model predictive control theory. The reduced order state space model which contains dominant low frequency oscillation modes was firstly identified. According to model prediction and optimization with the current state of power system as the initial state, an infinite horizon closed-loop optimal control was obtained. Online model identification and control optimization were repeated in each time interval. The strategy overcomes the inherent shortcomings of controllers with fixed parameters based on offline identification thus solves the problem of the control performance degradation due to variation of the complex operation conditions and time-varying and uncertain characteristic of system parameters. Simulation results demonstrate the effectiveness and robustness of the proposed controller in damping inter-area low frequency oscillations. The strategy to coordinate the proposed controller with PSSs and other similar controllers in multi-machine power systems is also discussed.
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