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A novel hybrid optimization methodology to optimize the total number and placement of wind turbines

机译:一种新颖的混合优化方法,可优化风力涡轮机的总数和位置

摘要

Due to increasing penetration of wind energy in the recent times, wind farmers tend to generate increasing amount of energy out of wind farms. In order to achieve the target, many wind farms are operated with a layout design of numerous turbines placed close to each other in a limited land area leading to greater energy losses due to ‘wake effects’. Moreover, these turbines need to satisfy many other constraints such as topological constraints, minimum allowable capacity factors, inter-turbine distances, noise constraints etc. Thus, the problem of placing wind turbines in a farm to maximize the overall produced energy while satisfying all constraints is highly constrained and complex. Existing methods to solve the turbine placement problem typically assume knowledge about the total number of turbines to be placed in the farm. However, in reality, wind farm developers often have little or no information about the best number of turbines to be placed in a farm. This study proposes a novel hybrid optimization methodology to simultaneously determine the optimum total number of turbines to be placed in a wind farm along with their optimal locations. The proposed hybrid methodology is a combination of probabilistic genetic algorithms and deterministic gradient based optimization methods. Application of the proposed method on representative case studies yields higher Annual Energy Production (AEP) than the results found by using two of the existing methods.
机译:由于近来风能渗透的增加,风农倾向于从风电场中产生越来越多的能量。为了实现该目标,许多风力发电场的运行设计都是在有限的土地区域内将许多涡轮机彼此靠近放置,由于“唤醒效应”而导致更大的能量损失。而且,这些涡轮机需要满足许多其他约束,例如拓扑约束,最小允许容量因子,涡轮间距离,噪声约束等。因此,将风力涡轮机放置在农场中以在满足所有约束的同时最大化总产生的能量的问题。是高度受限和复杂的。解决涡轮机放置问题的现有方法通常假定有关要在农场中放置的涡轮机总数的知识。但是,实际上,风电场开发人员通常很少或几乎没有关于要在电场中放置的最佳数量的涡轮机的信息。这项研究提出了一种新颖的混合优化方法,可以同时确定要放置在风电场中的涡轮机的最佳总数以及它们的最佳位置。所提出的混合方法是概率遗传算法和基于确定性梯度的优化方法的结合。与通过使用两种现有方法得出的结果相比,将这种方法应用于有代表性的案例研究可产生更高的年度能源生产(AEP)。

著录项

  • 作者

    Mittal P; Kulkarni K; Mitra K;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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