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Fault Detection Assessment Architectures based on Classification Methods and Information Fusion

机译:基于分类方法和信息融合的故障检测评估架构

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Classifiers based on machine learning are popular in literature, in order to support predictive maintenance of machinery. Depending on the process data, one classifier can assess target classes better than others. It often happens that the classifiers complement each other. A fusion strategy is needed in order to exploit the strength of each classifier. This paper presents fault detection assessment architectures based on information fusion and classification methods. It proposes the use of information fusion methods and different architectures, in order to improve the overall result of the fault detection assessment. Dempster-Shafer and Yager rules of combination are used to fuse the classification method predictions. The rules of combination improve the results by complementing the classifiers performance. A comparison between centralized and decentralized architectures is presented. The results show that the information fusion using decentralized architectures improves the overall performance of the fault detection assessment.
机译:基于机器学习的分类器在文献中流行,以支持机械的预测维护。根据过程数据,一个分类器可以比其他分类器更好地评估目标类。经常发生分类器相互补充。需要融合策略,以利用每个分类器的强度。本文介绍了基于信息融合和分类方法的故障检测评估架构。它建议使用信息融合方法和不同的架构,以提高故障检测评估的整体结果。 Dempster-Shafer和Yager组合规则用于熔断分类方法预测。组合规则通过补充分类器性能来改善结果。呈现集中和分散体系结构之间的比较。结果表明,使用分散架构的信息融合可提高故障检测评估的整体性能。

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