Rotor/Stator Internal Phase to Phase Fault Detection in Three-Phase Wound Rotor Induction Machines

2019 ◽  
Vol 47 (16-17) ◽  
pp. 1489-1504
Author(s):  
Peyman Naderi ◽  
Sahar Sharouni ◽  
Payman Hajihosseini
2019 ◽  
Vol 63 (3) ◽  
pp. 169-177
Author(s):  
Mohamed Amine Khelif ◽  
Azeddine Bendiabdellah ◽  
Bilal Djamal Eddine Cherif

Currently, with the power electronics evolution, a major research axis is oriented towards the diagnosis of converters supplying induction machines. Indeed, a converter such as the inverter is susceptible to have structural failures such as faulty leg and/or open-circuit IGBT faults. In this paper, the detection of the faulty leg and the localization of the open-circuit switch of an inverter are investigated. The fault detection technique used in this work is based essentially upon the monitoring of the root mean square (RMS) value and the calculation of the mean value of the three-phase currents. In the first part of the paper work, the faulty leg is detected by monitoring the RMS value of the three-phase currents and comparing them to the nominal value of the phase current. The second part, the open-circuit IGBT fault is localized simply by knowing the polarity of the calculated mean value current of the faulty phase. The work is first accomplished using simulation work and then the obtained simulation results are validated by experimental work conducted in our LDEE laboratory to illustrate the effectiveness, simplicity and rapidity of the proposed technique.


2016 ◽  
Vol 78 (9) ◽  
Author(s):  
Rozbeh Yousefi ◽  
Rubiyah Yusof ◽  
Reza Arfa

Induction motors (IM) as a critical component of many industrial processes are subjected to issues such as aging motors, high reliability requirements, and cost competitiveness. Therefore, many research efforts have been focused on fault detection in IMs. The main specification of this paper involves fault detection of three phase IMs using vibration and electrical current setup. This paper compares the results obtained by vibration and electrical current setup in order to a better understanding of fault detection setups’ operation in induction machines. The experimentation was performed on two faulty and one healthy squirrel cage motor. A number of data was captured through the labVIEW software. Principal Component Analysis (PCA) was employed for feature extraction to classify the faults of IMs. Most vibration hardware systems are relatively costly and difficult to set up, but they resulted in significantly higher accurate and classified data in comparison to the results of current setup.  


2020 ◽  
Vol 10 (14) ◽  
pp. 4965
Author(s):  
Yordanos Dametw Mamuya ◽  
Yih-Der Lee ◽  
Jing-Wen Shen ◽  
Md Shafiullah ◽  
Cheng-Chien Kuo

Fault location with the highest possible accuracy has a significant role in expediting the restoration process, after being exposed to any kind of fault in power distribution grids. This paper provides fault detection, classification, and location methods using machine learning tools and advanced signal processing for a radial distribution grid. The three-phase current signals, one cycle before and one cycle after the inception of the fault are measured at the sending end of the grid. A discrete wavelet transform (DWT) is employed to extract useful features from the three-phase current signal. Standard statistical techniques are then applied onto DWT coefficients to extract the useful features. Among many features, mean, standard deviation (SD), energy, skewness, kurtosis, and entropy are evaluated and fed into the artificial neural network (ANN), Multilayer perceptron (MLP), and extreme learning machine (ELM), to identify the fault type and its location. During the training process, all types of faults with variations in the loading and fault resistance are considered. The performance of the proposed fault locating methods is evaluated in terms of root mean absolute percentage error (MAPE), root mean squared error (RMSE), Willmott’s index of agreement (WIA), coefficient of determination ( R 2 ), and Nash-Sutcliffe model efficiency coefficient (NSEC). The time it takes for training and testing are also considered. The proposed method that discrete wavelet transforms with machine learning is a very accurate and reliable method for fault classifying and locating in both a balanced and unbalanced radial system. 100% fault detection accuracy is achieved for all types of faults. Except for the slight confusion of three line to ground (3LG) and three line (3L) faults, 100% classification accuracy is also achieved. The performance measures show that both MLP and ELM are very accurate and comparative in locating faults. The method can be further applied for meshed networks with multiple distributed generators. Renewable generations in the form of distributed generation units can also be studied.


2008 ◽  
Vol 55 (12) ◽  
pp. 4200-4209 ◽  
Author(s):  
A. Bellini ◽  
A. Yazidi ◽  
F. Filippetti ◽  
C. Rossi ◽  
G.-A. Capolino

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