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Altitude optimization of Airborne Wind Energy systems: A Bayesian Optimization approach

机译:机载风能系统的高度优化:贝叶斯优化方法

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This study presents a data-driven approach for optimizing the operating altitude of Airborne Wind Energy (AWE) systems to maximize net energy production. Determining the optimal operating altitude of an AWE system is challenging, as the wind speed constantly varies with both time and altitude. Furthermore, without expensive auxiliary equipment, the wind speed is only measurable at the AWE system's operating altitude. The work presented in this paper shows how tools from machine learning can be blended with real-time control to optimize the AWE system's operating altitude efficiently, without the use of auxiliary wind profiling equipment. Specifically, Bayesian Optimization, which is a data-driven technique for finding the optimum of an unknown and expensive-to-evaluate objective function, is applied to the real-time control of an AWE system. The underlying objective function is modeled by a Gaussian Process (GP); then, Bayesian Optimization utilizes the predictive uncertainty information from the GP to decide the best subsequent operating altitude. In the AWE application, conventional Bayesian Optimization is extended to handle the time-varying nature of the wind shear profile (wind speed vs. time). Using real wind data, our method is validated against three baseline approaches. Our simulation results show that the Bayesian Optimization method is successful in dramatically increasing power production over these baselines.
机译:这项研究提出了一种数据驱动的方法,用于优化机载风能(AWE)系统的运行高度,以最大程度地提高净能源产量。由于风速随时间和海拔高度不断变化,因此确定AWE系统的最佳运行高度具有挑战性。此外,在没有昂贵的辅助设备的情况下,只能在AWE系统的运行高度上测量风速。本文介绍的工作展示了如何将机器学习中的工具与实时控制相结合,从而有效地优化AWE系统的运行高度,而无需使用辅助风廓线设备。具体地说,贝叶斯优化是一种数据驱动技术,用于发现未知且评估成本高的目标函数的最优值,该技术被应用于AWE系统的实时控制。基本目标函数由高斯过程(GP)建模;然后,贝叶斯优化利用来自GP的预测不确定性信息来确定最佳的后续运行高度。在AWE应用程序中,传统的贝叶斯优化方法得到扩展,以处理风切变曲线的时变性质(风速与时间的关系)。使用真实的风数据,我们的方法针对三种基线方法进行了验证。我们的仿真结果表明,贝叶斯优化方法成功地在这些基准上显着提高了发电量。

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