A comparison of eight optimization methods applied to a wind farm layout optimization problem

IF 3.6 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
Jared J. Thomas, Nicholas F. Baker, P. Malisani, Erik Quaeghebeur, Sebastian Sanchez Perez-Moreno, John P. Jasa, C. Bay, F. Tilli, David Bieniek, N. Robinson, A. Stanley, Wesley Holt, A. Ning
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引用次数: 4

Abstract

Abstract. Selecting a wind farm layout optimization method is difficult. Comparisons between optimization methods in different papers can be uncertain due to the difficulty of exactly reproducing the objective function. Comparisons by just a few authors in one paper can be uncertain if the authors do not have experience using each algorithm. In this work we provide an algorithm comparison for a wind farm layout optimization case study between eight optimization methods applied, or directed, by researchers who developed those algorithms or who had other experience using them. We provided the objective function to each researcher to avoid ambiguity about relative performance due to a difference in objective function. While these comparisons are not perfect, we try to treat each algorithm more fairly by having researchers with experience using each algorithm apply each algorithm and by having a common objective function provided for analysis. The case study is from the International Energy Association (IEA) Wind Task 37, based on the Borssele III and IV wind farms with 81 turbines. Of particular interest in this case study is the presence of disconnected boundary regions and concave boundary features. The optimization methods studied represent a wide range of approaches, including gradient-free, gradient-based, and hybrid methods; discrete and continuous problem formulations; single-run and multi-start approaches; and mathematical and heuristic algorithms. We provide descriptions and references (where applicable) for each optimization method, as well as lists of pros and cons, to help readers determine an appropriate method for their use case. All the optimization methods perform similarly, with optimized wake loss values between 15.48 % and 15.70 % as compared to 17.28 % for the unoptimized provided layout. Each of the layouts found were different, but all layouts exhibited similar characteristics. Strong similarities across all the layouts include tightly packing wind turbines along the outer borders, loosely spacing turbines in the internal regions, and allocating similar numbers of turbines to each discrete boundary region. The best layout by annual energy production (AEP) was found using a new sequential allocation method, discrete exploration-based optimization (DEBO). Based on the results in this study, it appears that using an optimization algorithm can significantly improve wind farm performance, but there are many optimization methods that can perform well on the wind farm layout optimization problem, given that they are applied correctly.
八种优化方法在某风电场布局优化问题中的应用比较
摘要风电场布局优化方法的选择是一个难点。由于难以精确地再现目标函数,不同论文中优化方法之间的比较可能不确定。如果作者没有使用每种算法的经验,那么一篇论文中只有几个作者的比较可能是不确定的。在这项工作中,我们为风电场布局优化案例研究提供了八种优化方法的算法比较,这些优化方法由开发这些算法的研究人员或有其他使用这些算法的经验的研究人员应用或指导。我们为每个研究人员提供了目标函数,以避免由于目标函数的差异而导致相对性能的歧义。虽然这些比较并不完美,但我们试图通过让具有使用每种算法经验的研究人员应用每种算法以及提供用于分析的共同目标函数来更公平地对待每种算法。案例研究来自国际能源协会(IEA)的第37项风能任务,基于拥有81台涡轮机的Borssele III和IV风力发电场。在这个案例研究中,特别感兴趣的是不连通边界区域和凹边界特征的存在。所研究的优化方法包括无梯度、基于梯度和混合方法;离散和连续问题的表述;单次运行和多次启动方式;以及数学和启发式算法。我们为每种优化方法提供了描述和参考(在适用的情况下),以及优缺点列表,以帮助读者确定适合其用例的方法。所有优化方法的性能都相似,优化后的尾迹损失值在15.48%到15.70%之间,而未优化的尾迹损失值为17.28%。每一种布局都是不同的,但所有的布局都表现出相似的特征。所有布局的相似性包括沿外部边界紧密排列风力涡轮机,在内部区域松散间隔涡轮机,以及在每个离散边界区域分配相似数量的涡轮机。采用一种新的顺序分配方法——基于离散勘探的优化方法(DEBO),找到了以年发电量(AEP)为目标的最佳布局。从本研究的结果来看,使用优化算法可以显著提高风电场的性能,但有许多优化方法只要应用得当,就可以很好地解决风电场布局优化问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Wind Energy Science
Wind Energy Science GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
6.90
自引率
27.50%
发文量
115
审稿时长
28 weeks
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