首页> 外文期刊>Wind Energy Science >Decreasing wind speed extrapolation error via domain-specific feature extraction and selection
【24h】

Decreasing wind speed extrapolation error via domain-specific feature extraction and selection

机译:通过域特定的特征提取和选择降低风速外推误差

获取原文
           

摘要

Model uncertainty is a significant challenge in the wind energy industry and can lead to mischaracterization of millions of dollars' worth of wind resources. Machine learning methods, notably deep artificial neural networks?(ANNs), are capable of modeling turbulent and chaotic systems and offer a promising tool to produce high-accuracy wind speed forecasts and extrapolations. This paper uses data collected by profiling Doppler lidars over three field campaigns to investigate the efficacy of using ANNs for wind speed vertical extrapolation in a variety of terrains, and it quantifies the role of domain knowledge in ANN extrapolation accuracy. A series of 11?meteorological parameters (features) are used as ANN inputs, and the resulting output accuracy is compared with that of both standard log-law and power-law extrapolations. It is found that extracted nondimensional inputs, namely turbulence intensity, current wind speed, and previous wind speed, are the features that most reliably improve the ANN's accuracy, providing up to a 65 % and 52 % increase in extrapolation accuracy over log-law and power-law predictions, respectively. The volume of input data is also deemed important for achieving robust results. One test case is analyzed in depth using dimensional and nondimensional features, showing that the feature nondimensionalization drastically improves network accuracy and robustness for sparsely sampled atmospheric cases.
机译:模型不确定性是风能行业的重大挑战,可以导致数百万美元的风力资源减价。机器学习方法,特别是深层人工神经网络?(ANNS),能够建模湍流和混沌系统,并提供有希望的工具,以产生高精度的风速预测和外推。本文使用分析多普勒利尔德收集的数据在三个现场运动中,研究使用ANNS在各种地形中的风速垂直外推的功效,并且它量化了域知识在ANN推断精度的作用。一系列11?气象参数(特征)用作ANN输入,并将所得的输出精度与标准对数法和电力 - 法外推的相比进行了比较。发现,提取的非潜能输入,即湍流强度,电流风速和先前的风速,是最可靠地提高安氏准确性的特征,提供高达65%和52%的逻辑法的外推精度增加。权力法预测分别。对于实现稳健的结果,输入数据的数量也认为很重要。使用尺寸和非潜能特征深入地分析一个测试用例,表明特征不如稀疏采样的大气案例的全面提高网络精度和鲁棒性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号