基于级联Hammerstein神经网络的风电机组频率控制模型预测控制

N. Kayedpour, Arash E. Samani, J. D. De Kooning, L. Vandevelde, G. Crevecoeur
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引用次数: 1

摘要

本文提出了一种基于神经网络的模型预测控制(MPC)方法,用于提高风力发电机组控制系统的性能,为电网提供频率控制辅助服务。采用闭环Hammerstein结构对5MW浮式海上风电机组永磁同步发电机(PMSG)的性能进行了近似分析。多层感知器神经网络对非线性稳态部分的气动特性进行估计,采用带外源输入的线性自回归(ARX)方法对线性定常动态部分进行辨识。使用级联Hammerstein设计的特定结构简化了每个工作点的在线线性化。该算法避免了非线性优化的需要,采用二次规划方法获得控制动作。最终,所提出的控制设计能够在最佳的节距和转矩配合下对电网频率变化做出快速稳定的响应。比较了MPC与增益调度比例积分(PI)控制器的性能。结果表明,所设计的控制系统在未来电力系统的频率控制和频率控制方面是有效的。
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Model Predictive Control with a Cascaded Hammerstein Neural Network of a Wind Turbine Providing Frequency Containment Reserve
This article presents an application of neural network-based Model Predictive Control (MPC) to improve the wind turbine control system's performance in providing frequency control ancillary services to the grid. A closed-loop Hammerstein structure is used to approximate the behavior of a 5MW floating offshore wind turbine with a Permanent Magnet Synchronous Generator (PMSG). The multilayer perceptron neural networks estimate the aerodynamic behavior of the nonlinear steady-state part, and the linear AutoRegressive with Exogenous input (ARX) is applied to identify the linear time-invariant dynamic part. Using the specific structure of the Cascade Hammerstein design simplifies the online linearization at each operating point. The proposed algorithm evades the necessity of nonlinear optimization and uses quadratic programming to obtain control actions. Eventually, the proposed control design provides a fast and stable response to the grid frequency variations with optimal pitch and torque cooperation. The performance of the MPC is compared with the gain-scheduled proportional-integral (PI) controller. Results demonstrate the effectiveness of the designed control system in providing Frequency Containment Reserve (FCR) and frequency regulation in the future of power systems.
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