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A comparative study of Naive Bayes classifier and Bayes net classifier for fault diagnosis of monoblock centrifugal pump using wavelet analysis

机译:基于小波分析的朴素贝叶斯分类器和贝叶斯网络分类器在整体离心泵故障诊断中的比较研究。

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摘要

In most of the industries related to mechanical engineering, the usage of pumps is high. Hence, the system which takes care of the continuous running of the pump becomes essential. In this paper, a vibration based condition monitoring system is presented for monoblock centrifugal pumps as it plays relatively critical role in most of the industries. This approach has mainly three steps namely feature extraction, classification and comparison of classification. In spite of availability of different efficient algorithms for fault detection, the wavelet analysis for feature extraction and Naive Bayes algorithm and Bayes net algorithm for classification is taken and compared. This paper presents the use of Naive Bayes algorithm and Bayes net algorithm for fault diagnosis through discrete wavelet features extracted from vibration signals of good and faulty conditions of the components of centrifugal pump. The classification accuracies of different discrete wavelet families were calculated and compared to find the best wavelet for the fault diagnosis of the centrifugal pump.
机译:在与机械工程相关的大多数行业中,泵的使用率很高。因此,照顾泵的连续运行的系统变得至关重要。本文针对整体式离心泵提出了一种基于振动的状态监测系统,因为该系统在大多数行业中都扮演着相对重要的角色。该方法主要包括三个步骤,即特征提取,分类和分类比较。尽管有各种有效的故障检测算法可用,但还是进行了小波分析,特征提取和朴素贝叶斯算法以及贝叶斯网络分类算法进行比较。本文介绍了Naive Bayes算法和Bayes网络算法在故障诊断中的应用,该方法通过从离心泵组件的良好和故障状态的振动信号中提取离散小波特征来进行。计算不同离散小波家族的分类精度,并进行比较,以找到最佳小波,用于离心泵的故障诊断。

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