首页> 外文会议>International workshop on structural health monitoring >Improvement of the Damage Detection Performance of a SHM Framework by Using AdaBoost: Validation on an Operating Wind Turbine
【24h】

Improvement of the Damage Detection Performance of a SHM Framework by Using AdaBoost: Validation on an Operating Wind Turbine

机译:使用Adaboost改进SHM框架的损伤检测性能:操作风力涡轮机的验证

获取原文

摘要

In SHM applications various damage-sensitive features can be used for making decisions regarding damage detection. In all cases, classifiers evaluate the results and make a final decision regarding the state of the structure. Often, there are discrepancies among the decisions of different classifiers, resulting in different detection performances for each damage feature. This is expected as different classifiers may be better suited for different data settings, even in data sets corresponding to the same system. Boosting algorithms combine multiple base classifiers to produce an ensemble, whose joint decision offers a better performance than any of the base classifiers. Adaptive Boosting (AdaBoost) is deployed in this paper to build a strong classifier based on the classifiers of a three-tier modular SHM framework for improving detection performance. The framework consists of three parts application of machine learning clustering algorithms for data normalization, feature extraction and hypothesis testing (HT). Each connection of damage feature, also referred to as condition parameter (CP), and HT composes a classifier that can be used as a weak classifier in the boosting algorithm. Information from the SHM framework classifiers is used, in order to build a strong classifier that is able to classify the value of any CP and improve the detection performance. The integration of AdaBoost with the three-tier SHM framework is validated on an operating 3 kW wind turbine. The results are demonstrated in receiver operating characteristic (ROC) curves with AdaBoost increasing the performance of damage detection
机译:在SHM应用中,各种损坏敏感功能可用于做出关于损坏检测的决定。在所有情况下,分类者评估结果并对结构状态进行最终决定。通常,不同分类器的决定存在差异,导致每个损坏特征的不同检测性能。即使在与相同系统对应的数据集中,这通常可能更适合不同的数据设置,这是预期的。升压算法组合多个基本分类器来生成集合,其联合判定提供比任何基本分类器更好的性能。在本文中部署了自适应升压(Adaboost),以基于三层模块化SHM框架的分类器来构建强大的分类器,用于提高检测性能。该框架包括三个部件应用机器学习聚类算法,用于数据归一化,特征提取和假设检测(HT)。每个损坏功能的连接,也称为条件参数(CP)和HT组成了一个分类器,该分类器可以用作升压算法中的弱分类器。使用SHM框架分类器的信息,以构建能够对任何CP值进行分类并提高检测性能的强分类器。 Adaboost与三层SHM框架的集成在操作3 KW风力涡轮机上验证。在接收器操作特征(ROC)曲线中,adaboost增加了结果,提高了损坏检测的性能

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