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Comparison of decision tree-fuzzy and rough set-fuzzy methods for fault categorization of mono-block centrifugal pump

机译:整体式离心泵故障分类的决策树-模糊和粗糙集-模糊方法比较

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摘要

Mono-block centrifugal pumps are widely used in a variety of applications. In many applications the role of mono-block centrifugal pump is critical and condition monitoring is essential. Vibration based continuous monitoring and analysis using machine learning approach is gaining momentum. Particularly, artificial neural networks, fuzzy logic have been employed for continuous monitoring and fault diagnosis. This paper presents the use of decision tree and rough sets to generate the rules from statistical features extracted from vibration signals under good and faulty conditions of a mono-block centrifugal pump. A fuzzy classifier is built using decision tree and rough set rules and tested using test data. The results obtained using decision tree rules and those obtained using rough set rules are compared. Finally, the accuracy of a principle component analysis based decision tree-fuzzy system is also evaluated. The study reveals that overall classification accuracy obtained by the decision tree-fuzzy hybrid system is to some extent better than the rough set-fuzzy hybrid system.
机译:整体式离心泵广泛用于各种应用中。在许多应用中,整体式离心泵的作用至关重要,状态监测至关重要。使用机器学习方法进行基于振动的连续监视和分析的势头越来越大。特别地,人工神经网络,模糊逻辑已经被用于连续监视和故障诊断。本文介绍了使用决策树和粗糙集根据整体式离心泵在良好和故障条件下从振动信号提取的统计特征生成规则的方法。使用决策树和粗糙集规则构建模糊分类器,并使用测试数据进行测试。比较使用决策树规则获得的结果和使用粗糙集规则获得的结果。最后,还评估了基于主成分分析的决策树模糊系统的准确性。研究表明,决策树-模糊混合系统获得的总体分类精度在某种程度上优于粗糙集-模糊混合系统。

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