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Wind farm layout optimization for levelized cost of energy minimization with combined analytical wake model and hybrid optimization strategy

机译:混力场布局优化与分析唤醒模型和混合优化策略相结合的能量最小化成本

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摘要

Wind farm layout optimization is a crucial stage for wind farm projects. Most of previous studies aim to maximize the power generation by optimizing turbine locations using analytical wake models and heuristic optimization techniques. However, the performance of analytical wake models was not properly evaluated before being applied on the layout optimization, which may lead a large discrepancy. The efficiency of strategies to solve this optimization problem also needs to be improved with the increasing scale of wind farm. Moreover, the minimization of levelized cost of energy of wind farm is considered to be a more appropriate optimization objective than the power maximization. In this study, the combined analytical wake model considering wake loss, added turbulence and wake superposition model is presented and evaluated by comparing with numerical simulation data. A hybrid optimization strategy assembling genetic algorithm and particle swarm optimization is proposed and used to minimize the levelized cost of energy under different scenarios. The results show that the power generation is underestimated by up to 31% if neglecting the added turbulence model and the combined analytical wake model has an averaged error of 3%. The levelized cost of energy is decreased by 1.9% and the annual energy production, capacity factor and efficiency are improved by 2.3%, 2.3% and 1.3% respectively after the layout optimization for the full various wind scenario with 49 wind turbines. The proposed hybrid optimization strategy increases the optimization effect by up to 0.9% compared with the individual genetic algorithm strategy and improves the efficiency by up to 26% than the individual particle swarm optimization strategy.
机译:风电场布局优化是风电场项目的关键阶段。以前的大多数研究旨在通过使用分析唤醒模型和启发式优化技术优化涡轮机位置来最大化发电。然而,在应用于布局优化之前,未正确评估分析唤醒模型的性能,这可能导致大差异。解决这种优化问题的策略效率也需要提高风电场规模的增加。此外,风电场的稳定能量成本的最小化被认为是比力最大化更适当的优化目标。在该研究中,通过与数值模拟数据进行比较,提出和评估了考虑唤醒损失,增加了湍流和唤醒叠加模型的组合分析唤醒模型。提出了一种混合优化策略组装遗传算法和粒子群优化,并用于最小化不同场景下的能量的级别成本。结果表明,如果忽略添加的湍流模型,则发电量高达31%,并且组合的分析唤醒模型的平均误差为3%。通过49个风力涡轮机的全部各种风情景的布局优化后,分别在49个风景的布局优化后,分别提高了1.9%的能量成本,每年的能量产量,容量因素和效率分别提高2.3%,2.3%和1.3%。与个体遗传算法策略相比,拟议的混合优化策略将优化效果增加到0.9%,并将效率提高到比各个粒子群优化策略高达26%。

著录项

  • 来源
    《Energy Conversion & Management》 |2021年第11期|114778.1-114778.19|共19页
  • 作者单位

    Chongqing Univ Sch Civil Engn Chongqing 400045 Peoples R China|Chongqing Key Lab Wind Engn & Wind Energy Utiliza Chongqing 400045 Peoples R China;

    Chongqing Univ Sch Civil Engn Chongqing 400045 Peoples R China|Chongqing Key Lab Wind Engn & Wind Energy Utiliza Chongqing 400045 Peoples R China;

    Chongqing Univ Sch Civil Engn Chongqing 400045 Peoples R China|Chongqing Key Lab Wind Engn & Wind Energy Utiliza Chongqing 400045 Peoples R China;

    Chongqing Univ Sch Civil Engn Chongqing 400045 Peoples R China|Chongqing Key Lab Wind Engn & Wind Energy Utiliza Chongqing 400045 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Wind farm layout optimization; Analytical wake model; Levelized cost of energy; Genetic algorithm; Particle swarm optimization;

    机译:风电场布局优化;分析唤醒模型;能源稳定性成本;遗传算法;粒子群优化;

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