scholarly journals Fault diagnosis of rolling element bearings using artificial neural network

Author(s):  
Saadi Laribi Souad ◽  
Bendiabdellah Azzedine ◽  
Samir Meradi

Bearings are essential components in the most electrical equipment. Procedures for monitoring the condition of bearings must be developed to prevent unexpected failure of these components during operation to avoid costly consequences. In this paper, the design of a monitoring system for the detection of rolling element-bearings failure is proposed. The method for detecting and locating this type of fault is carried out using advanced intelligent techniques based on a Perceptron Multilayer Artificial Neural Network (MLP-ANN); its database uses statistical indicators characterizing vibration signals. The effectiveness of the proposed method is illustrated using experimentally obtained bearing vibration data, and the results have shown good accuracy in detecting and locating defects.

2016 ◽  
Vol 6 (2) ◽  
pp. 38-46
Author(s):  
V Vital Rao ◽  
Ch Ratnam

In the condition monitoring of rotating machinery, vibration analysis of rolling element bearings is a popular diagnostic tool even though the vibration signals caused by bearing defects are distorted by other faults and mechanical noise, particularly in a hostile environment. The acoustic emission (AE) method is a non-destructive testing (NDT) technique used in structural health monitoring and its application for bearing diagnosis is gaining momentum as an alternative diagnostic tool due to its inherent high signal-to-noise (SNR) ratio. In earlier studies, although the researchers focused on different types of seeded defects, with random shape and size, and measured their vibration amplitude, they could not ascertain the correlation between the defect size and its respective vibration amplitude. A bearing test-rig was designed and established to study the various size defects in rolling element bearings. The experimental investigation reported in this paper predicts the bearing damage severity with respect to the AE amplitude level, using the artificial neural network (ANN) technique. This experiment includes seeded defects of various sizes, ie gradual increase of defect width on the outer race of radially-loaded cylindrical roller bearings at different parameters, and the data acquired through an acoustic emission probe. Experimental data was imported to the ANN, in which a multilayer perception model was used with a back-propagation algorithm using the input parameters of load, r/min and AE amplitude level and defect size as the output. The predicted defect sizes are compared with the actual seeded defect sizes and the percentage error was minimal. In this paper, an attempt has been made to predict the defect size with the help of AE and ANN techniques.


2021 ◽  
Vol 2131 (5) ◽  
pp. 052049
Author(s):  
V Z Manusov ◽  
M R Otuzbaev ◽  
M A Scherbinina ◽  
G V Ivanov

Abstract Assessment of the current technical condition is an important task, so the state of electrical equipment depends on its further operability. Thanks to modern computing devices, it is possible to implement actively artificial intelligence and computer-assisted learning methods that allow achieving high efficiency in data processing. A study was conducted and an algorithm for diagnosing the technical condition based on an artificial neural network was developed. A model based on a multilayer perceptron is proposed, which allows evaluating the technical condition of a high-voltage power transformer. The result of the technical diagnostics of the model is the assignment of the condition to one of the five classes, proposed by the guidelines presented by the International Council on Large Electrical Systems. The methodology is presented on the example of a 250 MVA transformer with a certain defect history, which allowed us to show the reliability and validity of the obtained results. It is shown that the use of the proposed model makes it possible to achieve accuracy in determining the technical condition of 0.95. The introduction of this model into an automated monitoring and diagnostics system will allow assessing the technical condition of electrical equipment in real time with sufficient accuracy.


Author(s):  
Bradley W Harris ◽  
Michael W Milo ◽  
Michael J Roan

Rolling element bearings are vital components in most rotating machines. Bearings often operate in harsh environments where manufacturing imperfections, misalignments, and fatigue can result in reduced component lifespan. These failures are often preceded by changes in the normal vibration of the system. Modeling and detecting these vibrational anomalies is common practice in predicting machine failure. This paper develops and implements a novel approach to detecting bearing vibration anomalies in the time–frequency domain. The performance of the new approach is quantified using both simulated and experimental bearing vibration data. In these ground-truth experiments, the proposed time–frequency method successfully detects anomalies (>98% true positive) using short time spans (<0.1 s) with low false alarm rates (<1% false positive). Using experimental data, this time–frequency approach is shown to outperform one-dimensional time series analysis techniques.


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