International audienceTraction Motors Condition Monitoring is one of the important factors in increasing motor life time and prevention of any train sudden stop in track and thereupon avoiding interruptions in track traffic. In this paper, a neural network based method for detecting unbalanced voltage fault which isone of the various faults in 3-phase traction motors was surveyed. Proposed method is independent from load state and fault percentage; which means neural network is able to detect fault and load condition without any assumption about the state of the load and fault. In proposed method, two separate neural networks are used for each problem. Experimental acquired data is used to train neural networks. Based on first test results,...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
Motivated by the superior performances of neural networks and neuro-fuzzy approaches to fault detect...
International audienceTraction Motors Condition Monitoring is one of the important factors in increa...
Artificial intellegence (AI) techniques have proved their ability in detection of incipient faults i...
Three-phase motors are commonly adopted in several industrial contexts and their failures can result...
It is documented that almost 98% of all voltage generated by electric utilities has up to 3% unbalan...
This paper describes an Artificial Neural Network (ANN) based fault diagnosis methodology for Induct...
Induction motor is one of the most important motors used in industrial applications. The operating c...
Motor drives are widely used in industry for controlling the speed of three phase AC motors. Faults ...
Induction motors constitute the largest proportion of motors in industry. This type of motor experie...
Abstract-Induction motors are subject to incipient faults which, if undetected, can lead to serious ...
The intention of fault detection is to detect the fault at the beginning stage and shut off the mach...
Recently, electrical drives generally associate inverter and induction machine. Therefore, inverter ...
Current signal monitoring (CSM) can be used as an effective tool for diagnosing broken rotor bars fa...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
Motivated by the superior performances of neural networks and neuro-fuzzy approaches to fault detect...
International audienceTraction Motors Condition Monitoring is one of the important factors in increa...
Artificial intellegence (AI) techniques have proved their ability in detection of incipient faults i...
Three-phase motors are commonly adopted in several industrial contexts and their failures can result...
It is documented that almost 98% of all voltage generated by electric utilities has up to 3% unbalan...
This paper describes an Artificial Neural Network (ANN) based fault diagnosis methodology for Induct...
Induction motor is one of the most important motors used in industrial applications. The operating c...
Motor drives are widely used in industry for controlling the speed of three phase AC motors. Faults ...
Induction motors constitute the largest proportion of motors in industry. This type of motor experie...
Abstract-Induction motors are subject to incipient faults which, if undetected, can lead to serious ...
The intention of fault detection is to detect the fault at the beginning stage and shut off the mach...
Recently, electrical drives generally associate inverter and induction machine. Therefore, inverter ...
Current signal monitoring (CSM) can be used as an effective tool for diagnosing broken rotor bars fa...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
Motivated by the superior performances of neural networks and neuro-fuzzy approaches to fault detect...