首页> 外文会议>International Conference on Structural Dynamics >A METHODOLOGY ON INTERPRETABLE NOVELTY DETECTION
【24h】

A METHODOLOGY ON INTERPRETABLE NOVELTY DETECTION

机译:可解释的新奇检测方法

获取原文

摘要

Vibration-based Structural Health Monitoring (VSHM) systems continuously gather data from an array of sensors mounted on a structure. Features are constructed from the data measured. The aim is to monitor the vibration responses in the search for changes that may hint to damage. The continuous data acquisition generates high-dimensional feature spaces that require Data-Driven approaches to make inferences concerning the integrity of the structure. In recent years, machine learning has played an increasingly important role in VSHM. Data-driven algorithms have been successfully used to construct models capable of detecting anomalies such as damage in the features derived from the vibration signals. Mahalanobis Distance based novelty detection is a common used method to detect damage. Yet, the resulting models have been labelled “black box models” given that they lack interpretability. This becomes a relevant challenge in the presence of high-dimensional feature spaces. Using machine learning algorithms that can be interpreted would enable a more reliable novelty detection process, building trust in these methods and easing the decision-making process. Decision Trees (DT) is a widely used interpretable machine learning algorithm. The hierarchical structure of this algorithm enables the prioritisation of features that are used as predictors in the damage detection models. Furthermore, the nature of the algorithm enables the user to track the decisions and understand the classification process in detail. In this paper, we introduce the complementary use of so-called “black box models” and DT for novelty detection. The proposed damage detection approach is tested on an experimental setup with a 14.3m wind turbine blade (WTB) equipped with 24 accelerometers. A pseudo-damage was simulated by adding masses to several locations of the WTB. The pseudo-damage was detected by means of a semi-supervised novelty-detection. The novelties were later studied in detail with decision-trees to make inferences on their potential causes.
机译:基于振动的结构健康监测(VSHM)系统从安装在结构上的传感器阵列中连续收集数据。功能由测量的数据构成。目的是监控搜索中可能提示损坏的变化的振动响应。连续数据采集产生了需要数据驱动方法以制造关于结构完整性的推断的高维特征空间。近年来,机器学习在VSHM中发挥了越来越重要的作用。数据驱动算法已成功地用于构建能够检测从振动信号导出的特征损坏的模型的模型。基于Mahalanobis距离的新奇检测是一种检测损坏的常用方法。然而,由于它们缺乏可解释性,所产生的模型被标记为“黑匣子型号”。这成为在存在高维特征空间的相关挑战。使用可以解释的机器学习算法将能够实现更可靠的新颖性检测过程,在这些方法中构建信任并缓解决策过程。决策树(DT)是一种广泛使用的可解释机学习算法。该算法的层次结构使得能够优先考虑用作损坏检测模型中的预测器的特征。此外,算法的性质使用户能够追踪决策并详细了解分类过程。在本文中,我们介绍了所谓的“黑匣子型号”和DT的互补使用,用于新奇检测。建议的损坏检测方法在具有14.3M风力涡轮机叶片(WTB)的实验装置上进行测试,配备24个加速度计。通过向WTB的几个位置添加质量来模拟伪损坏。通过半监督的新颖性检测检测伪损伤。稍后将详细研究Novelties,决策树对潜在原因进行了推论。

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