带储能的风力涡轮机的预测控制

Rahul Sharma, R. Yan, M. Kearney
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引用次数: 6

摘要

由于风力发电的间歇性,其大规模利用继续受到阻碍。在这个问题的潜在解决方案中,采用基于电池的存储系统被广泛认为是不可避免的。本文的目的是开发一种基于实时模型的优化方法,用于协调控制配备电池储能的风力涡轮机。首先,利用奇异摄动理论系统地简化了风力发电机组-蓄电池系统的数学模型。然后,将得到的降阶模型应用到控制系统的开发中。控制系统采用模型预测控制的实时可实现版本,其中非线性动力学在每个采样瞬间线性化,以同时克服由于非线性优化和由于仅在一个工作点线性化而导致的性能下降问题而引起的计算问题。通过对电池储能的优化管理,所提出的控制器在减少风间歇性方面的有效性得到了验证,并使用了涉及澳大利亚风电场真实风力数据的模拟研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive control of wind turbines with storage
The large-scale use of wind power generation continues to be hindered due to its intermittency. Among the potential solutions to this problem, the adoption of battery-based storage systems is widely seen as inevitable. The aim of this paper is to develop a real-time model-based optimisation approach for the coordinated control of a wind turbine equipped with battery storage. First, the mathematical model of the wind turbine-battery system is systematically reduced using singular perturbation theory. Then, the obtained reduced-order model is utilised in the control system development. The control system is devised using a real-time implementable version of model predictive control whereby the nonlinear dynamics are linearised at each sampling instant to simultaneously overcome the computational issues due to nonlinear optimisation and performance degradation issues due to linearisation at only one operating point. The effectiveness of the proposed controller in reducing wind intermittency through the optimal management of the battery storage is demonstrated using simulation studies involving real wind-data from an Australian wind farm.
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