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Model Predictive Control for Wake Redirection in Wind Farms: a Koopman Dynamic Mode Decomposition Approach

机译:风电场Wake重定向模型预测控制:Koopman动态模式分解方法

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Wind farms are high order systems whose dynamics are governed by non linear partial differential equations with no known analytic solution, making the design and implementation of numerical optimal controllers in high fidelity fluid dynamics solvers computationally expensive and unsuitable for real time usage. Reduced order state models provide a possible route to the design and implementation of practical cooperative wind farm controllers. This work makes use of an innovative algorithm in the context of wind farm modelling - Input Output Dynamic Mode Decomposition - to find suitable reduced order models to be used for model predictive control. The contribution of the work in this article resides in deriving a reduced order model from high fidelity simulation data where wake redirection control by yaw misalignment is evaluated. A model based predictive controller is designed and tested. In the present case study it is shown that a reduced order linear state space model with 37 states can accurately reproduce the downstream turbine generator power dynamics with a fit of 88%, reconstruct the upstream turbine wake with an average normalized root mean squared error of 4% and that optimal controllers can be designed for a collective power reference tracking problem.
机译:风电场是高阶系统,其动态由非线性部分微分方程管辖,没有已知的分析解决方案,使得在高保真流体动力学求解器中的数字最佳控制器的设计和实现计算昂贵,不适合实时使用。减少的订单状态模型提供了实用合作风电场控制器的设计和实现的可能路线。这项工作在风电场建模 - 输入输出动态模式分解中使用了一种创新算法 - 找到适用于模型预测控制的合适减少订单模型。本文中的工作的贡献驻留在从高保真仿真数据中获取减少的订单模型,其中评估了横摆物未对准的唤醒重定向控制。设计并测试了基于模型的预测控制器。在本案例研究中,表明,具有37个状态的减小的顺序线性状态空间模型可以精确地再现下游汽发电机动力动力学,适用于88%,重建上游涡轮机唤醒,平均归一化的根均匀误差为4 %和最佳控制器可以设计用于集体功率参考跟踪问题。

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