首页> 外文期刊>Wind Energy Science >Feature selection techniques for modelling tower fatigue loads of a wind turbine with neural networks
【24h】

Feature selection techniques for modelling tower fatigue loads of a wind turbine with neural networks

机译:具有神经网络的风力涡轮机塔疲劳负荷的特征选择技术

获取原文
获取外文期刊封面目录资料

摘要

The rapid development of the wind industry in recent decades and the establishment of this technology as a mature and cost-competitive alternative have stressed the need for sophisticated maintenance and monitoring methods. Structural health monitoring has risen as a diagnosis strategy to detect damage or failures in wind turbine structures with the help of measuring sensors. The amount of data recorded by the structural health monitoring system can potentially be used to obtain knowledge about the condition and remaining lifetime of wind turbines. Machine learning techniques provide the opportunity to extract this information, thereby improving the reliability and cost-effectiveness of the wind industry as well. This paper demonstrates the modelling of damage-equivalent loads of the fore–aft bending moments of a wind turbine tower, highlighting the advantage of using the neighbourhood component analysis. This feature selection technique is compared to common dimension reduction/feature selection techniques such as correlation analysis, stepwise regression, or principal component analysis. For this study, recordings of data were gathered during approximately 11 months, preprocessed, and filtered by different operational modes, namely standstill, partial load, and full load. The results indicate that all feature selection techniques were able to maintain high accuracy when trained with artificial neural networks. The neighbourhood component analysis yields the lowest number of features required while maintaining the interpretability with an absolute mean squared error of around 0.07?% for full load. Finally, the applicability of the resulting model for predicting loads in the wind turbine is tested by reducing the amount of data used for training by 50?%. This analysis shows that the predictive model can be used for continuous monitoring of loads in the tower of the wind turbine.
机译:近几十年来风产业的快速发展和作为成熟和成本竞争替代方案的这项技术的建立强调了对复杂的维护和监测方法的需求。在测量传感器的帮助下,结构健康监测作为诊断策略,以检测风力涡轮机结构中的损坏或故障。结构健康监测系统记录的数据量可能用于获得有关风力涡轮机的条件和剩余寿命的知识。机器学习技术提供了提取这些信息的机会,从而提高了风力行业的可靠性和成本效益。本文展示了风力涡轮机塔的前后弯矩的损坏等同载荷的建模,突出了使用邻域分量分析的优点。将该特征选择技术与常见的尺寸减小/特征选择技术进行比较,例如相关分析,逐步回归或主成分分析。对于本研究,在大约11个月内收集数据的记录,预处理,并通过不同的操作模式过滤,即静止,部分负载和满载。结果表明,当用人工神经网络训练时,所有特征选择技术都能够保持高精度。邻域分量分析产生了在保持完全负载约0.07Ω%的绝对平均平方误差的可解释性的同时产生的最低功能。最后,通过将用于训练的数据量减少50℃的数据量来测试所得到的模型用于预测风力涡轮机中的负荷的适用性。该分析表明,预测模型可用于连续监测风力涡轮机塔中的负载。

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