基于半监督分类的系统监控新方法

Foued Theljani, K. Laabidi, M. Lahmari-Ksouri, S. Zidi
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引用次数: 1

摘要

本文研究具有多种可能功能模式的系统的故障诊断问题。提出了一种将监督学习和无监督学习相结合的新方法。由于监督学习需要一个广泛的标记基础,可能并不总是在足够的基数中可用,我们的目标首先是通过自适应聚类算法(SACA)对关键故障集(类)进行无监督分组。在这个框架内,提出的算法是基于聚类质心和样本之间度量距离的评估。一个集成的优化过程允许调整决策的置信阈值。接下来,使用人工神经网络(ANN)进行额外的监督分类步骤,为决策提供实用信息。该网络是根据专门针对多类问题的分类层次进行训练的。在由三个连接的油箱组成的液压系统上对所开发的方法进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New approach for systems monitoring based on semi-supervised classification
In this paper, we consider the problem of fault diagnosis for systems with many possible functioning modes. A new methodology has been proposed combining both supervised and unsupervised learning methods. Since supervised learning requires necessarily a broad labelled base that may not always available in a sufficient cardinality, we aim at first an unsupervised grouping of a critical faults set (classes) though a Self-Adaptive Clustering Algorithm (SACA). Within this framework, the presented algorithm is based on the evaluation of a metric distance between cluster centroids and samples. An integrated process for optimization allows the tuning of confidence threshold for decision. Next, an additional supervised classification step using Artificial Neural Network (ANN) provides practical information for decision-making. The network is trained according to the classification multi-levels dedicated for multi-class problems. The developed approach is assessed on a hydraulic system consisting of three connected tanks.
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