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Best Practices for Wake Model and Optimization Algorithm Selection in Wind Farm Layout Optimization

机译:风电场布局优化中唤醒模型和优化算法选择的最佳实践

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This paper presents the results of two case studies regarding the wind farm layout optimization problem. We asked members of the computational optimization and wind communities to take part in the studies that we designed. Nine individuals participated. Case study 1 considered variations in optimization strategies for a given simple Gaussian wake model. Participants were provided with a wake model that outputs annual energy production (AEP) for an input set of wind turbine locations. Participants used an optimization method of their choosing to find an optimal wind farm layout. Case study 2 looked at trade-offs in performance resulting from variation in both physics model and optimization strategy. For case study 2, participants calculated AEP using a wake model of their choice while also using their chosen optimization method. Participants then used their wake model to calculate the AEP of all other participants' optimized layouts. Results for case study 1 show that the best optimal wind farm layouts in this study were achieved by participants who used gradient-based optimization methods. A front-runner emerged with the Sparse Nonlinear OPTimizer plus Wake Expansion Continuation (SNOPT+WEC) optimization method, which consistently discovered the highest submitted AEP. For case study 2, two participants found a similar layout that was judged to be superior by all five participants. It is unclear if the better solution resulted from an improved optimization process, or a wake model that was more amenable to optimization.
机译:本文介绍了有关风电场布局优化问题的两个案例研究的结果。我们要求计算优化和风能社区的成员参加我们设计的研究。九个人参加。案例研究1考虑了给定简单高斯唤醒模型的优化策略的变化。为参与者提供了唤醒模型,该模型可以输出一组风力涡轮机位置的年能源产量(AEP)。参与者使用了自己选择的优化方法来找到最佳的风电场布局。案例研究2研究了物理模型和优化策略的差异所导致的性能折衷。对于案例研究2,参与者使用自己选择的唤醒模型并同时使用他们选择的优化方法来计算AEP。然后,参与者使用其唤醒模型来计算所有其他参与者优化布局的AEP。案例研究1的结果表明,该研究中的最佳最佳风电场布局是由使用基于梯度的优化方法的参与者实现的。稀疏非线性OPTimizer加上唤醒扩展连续(SNOPT + WEC)优化方法成为领跑者,该方法始终发现提交量最高的AEP。对于案例研究2,两名参与者发现了一个相似的布局,被所有五名参与者都认为是更好的布局。尚不清楚更好的解决方案是由改进的优化过程还是由更适合优化的唤醒模型产生的。

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