半监督支持向量机在结构健康监测数据分离中的应用

Q1 Engineering
Hassan Fazeli, M. Safi, N. Hassani
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引用次数: 0

摘要

结构健康监测得益于统计损伤检测技术在这一领域的适应性。我们建议使用高效的半监督支持向量机来使用未标记的数据对健康和不健康阶段进行分类。由于支持向量机在该领域非常流行,因此使用半监督支持向量机来完成此任务。为此,采用基于模型和基于数据相结合的方法来确定损伤敏感特征。为了评价分类算法的性能,给出了分类算法的查全率和查全率标准。为了比较所提出算法的有效性,通过标记和未标记的数据来确定结构响应的不同状态,可以看出,使用未标记的数据会增强分类方法的有效性,特别是在缺乏标记数据的情况下。我们证明了这些方法在低标记数据情况下的性能优于当前使用的监督算法,但是,当可以访问大量标记数据时,它们的结果与SVM大致相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Semi-Supervised Support Vector Machines in Data Separation Methods in Structural Health Monitoring
Structural health monitoring has been aided from the adaptability of statistical damage-detection techniques in this area. We propose using efficient semi-supervised support vector machines to use unlabeled data for classifying between healthy and unhealthy stages. Since support vector machines are a very popular in this area, the semi-supervised SVM s are used to do so. For this reason, a combined model-based and data-based approach is taken to determine the damage sensitive features. To evaluate the performance of classification algorithm, the Precision and Recall criteria for the mentioned algorithms are presented. To compare the effectiveness of the proposed algorithm, different states of the structural response is determined by the labeled and unlabeled data It can be seen that the use of unlabeled data will enhance the effectiveness of the classification methods especially in the lack labeled data. We demonstrate the improved performance of these methods over currently used supervised algorithms in low labeled data situations but, their results are approximately the same with SVM when large labeled data is accessible.
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