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首页> 外文期刊>Journal of Sound and Vibration >Outlier ensembles: A robust method for damage detection and unsupervised feature extraction from high-dimensional data
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Outlier ensembles: A robust method for damage detection and unsupervised feature extraction from high-dimensional data

机译:异常值合奏:高维数据损坏检测和无监督功能提取的鲁棒方法

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摘要

Outlier ensembles are shown to provide a robust method for damage detection and dimension reduction via a wholly unsupervised framework. Most interestingly, when utilised for feature extraction, the proposed heuristic defines features that enable near-equivalent classification performance (95.85%) when compared to the features found (in previous work) through supervised techniques (97.39%) - specifically, a genetic algorithm. This is significant for practical applications of structural health monitoring, where labelled data are rarely available during data mining. Ensemble analysis is applied to practical examples of problematic engineering data; two case studies are presented in this work. Case study I illustrates how outlier ensembles can be used to expose outliers hidden within a dataset. Case study II demonstrates how ensembles can be utilised as a tool for robust outlier analysis and feature extraction in a noisy, high-dimensional feature-space. (C) 2019 Elsevier Ltd. All rights reserved.
机译:出现异常集合可以通过全全文框架提供损坏检测和尺寸减少的稳健方法。最有趣的是,当使用特征提取时,拟议的启发式定义了与通过监督技术(97.39%)(97.39%)的特征(在以前的工作)相比(在以前的工作)的特征相比(97.39%)的特征,具体定义了近等效的分类性能(95.85%)。这对于结构健康监测的实际应用是重要的,其中标记数据在数据挖掘期间很少可用。合奏分析应用于有问题的工程数据的实际例子;这项工作提出了两项​​案例研究。案例研究我说明了出口集合如何用于公开隐藏在数据集中的异常值。案例研究II展示了如何使用的乐队作为强大的异常分析和功能提取的工具,在嘈杂的高维特征空间中。 (c)2019 Elsevier Ltd.保留所有权利。

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