在风能现场实验中,预测获得一致和重要结果所需的最短测量和实验持续时间的方法

Daniel R. Houck, Nathaniel B. de Velder, David C. Maniaci, Brent C. Houchens
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引用次数: 0

摘要

摘要实验为科学提供了令人难以置信的价值,但实验结果必须始终伴随着不确定性量化才有意义。这就需要解决不确定性的来源以及如何减少不确定性。在风能领域,现场实验有时需要进行对照和处理。在这种情况下,偏差误差造成的不确定性往往可以忽略,因为它们对对照组和处理组的影响大致相同。然而,随机误差造成的不确定性会传播,如果来源不相关,对照组和处理组之间差异的不确定性总是大于单个测量的随机不确定性。由于随机不确定性通常会随着额外测量的增加而减小,因此需要知道达到可接受的不确定性水平所需的最短实验持续时间。我们提出了一种通用方法来模拟建议的实验,计算不确定性,并确定产生具有统计意义的收敛结果所需的测量持续时间和实验持续时间。然后,通过一个虚拟实验作为案例研究来演示该方法,该实验使用真实世界的风力资源数据和若干模拟尖端扩展,通过预期功率差异对结果进行参数化。利用本文演示的方法,可以通过考虑具体细节(如控制器切换时间表、风力统计和后处理分选程序)更好地规划实验,从而可以预测它们对不确定性的影响,并在实验前确定实现有统计意义的收敛结果所需的测量持续时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Method to predict the minimum measurement and experiment durations needed to achieve converged and significant results in a wind energy field experiment
Abstract. Experiments offer incredible value to science, but results must always come with an uncertainty quantification to be meaningful. This requires grappling with sources of uncertainty and how to reduce them. In wind energy, field experiments are sometimes conducted with a control and treatment. In this scenario uncertainty due to bias errors can often be neglected as they impact both control and treatment approximately equally. However, uncertainty due to random errors propagates such that the uncertainty in the difference between the control and treatment is always larger than the random uncertainty in the individual measurements if the sources are uncorrelated. As random uncertainties are usually reduced with additional measurements, there is a need to know the minimum duration of an experiment required to reach acceptable levels of uncertainty. We present a general method to simulate a proposed experiment, calculate uncertainties, and determine both the measurement duration and the experiment duration required to produce statistically significant and converged results. The method is then demonstrated as a case study with a virtual experiment that uses real-world wind resource data and several simulated tip extensions to parameterize results by the expected difference in power. With the method demonstrated herein, experiments can be better planned by accounting for specific details such as controller switching schedules, wind statistics, and postprocess binning procedures such that their impacts on uncertainty can be predicted and the measurement duration needed to achieve statistically significant and converged results can be determined before the experiment.
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