Rotor bars are one of the most failure-critical components in induction machines. We present an approach for developing a rotor bar fault identification classifier for induction machines. The developed machine learning-based models are based on simulated electrical current and vibration velocity data and measured vibration acceleration data. We introduce an approach that combines sequential model-based optimization and the nested cross-validation procedure to provide a reliable estimation of the classifiers’ generalization performance. These methods have not been combined earlier in this context. Automation of selected parts of the modeling procedure is studied with the measured data. We compare the performance of logistic regression and Ca...
In this paper, condition monitoring of induction machines using air-gap magnetic flux density spectr...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
In this work, we propose a new and simple method to insure an online and automatic detection of faul...
Rotor bars are one of the most failure-critical components in induction machines. We present an appr...
In this paper, the performance of machine learning methods for squirrel cage induction motor broken ...
Electric motor condition monitoring can detect anomalies in the motor performance which have the pot...
A robust method to monitor the operating conditions of induction motors is presented. This method ut...
In this paper, a condition monitoring vector database (CMVDB) approach for broken bar fault diagnost...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
Broken rotor bars (BRBs) in induction motors (IMs) are a common kind of failure and one of the most ...
Database (CMVDB) approach for broken bar fault diagnostics of squirrel-cage induction machines is pr...
Previous work on condition monitoring of induction machines has focused on steady-state speed operat...
The paper discusses the spectral markers of fault rotor bars in induction motor current signature a...
Induction motors are frequently used in many automated systems as a major driving force, and thus, t...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
In this paper, condition monitoring of induction machines using air-gap magnetic flux density spectr...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
In this work, we propose a new and simple method to insure an online and automatic detection of faul...
Rotor bars are one of the most failure-critical components in induction machines. We present an appr...
In this paper, the performance of machine learning methods for squirrel cage induction motor broken ...
Electric motor condition monitoring can detect anomalies in the motor performance which have the pot...
A robust method to monitor the operating conditions of induction motors is presented. This method ut...
In this paper, a condition monitoring vector database (CMVDB) approach for broken bar fault diagnost...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
Broken rotor bars (BRBs) in induction motors (IMs) are a common kind of failure and one of the most ...
Database (CMVDB) approach for broken bar fault diagnostics of squirrel-cage induction machines is pr...
Previous work on condition monitoring of induction machines has focused on steady-state speed operat...
The paper discusses the spectral markers of fault rotor bars in induction motor current signature a...
Induction motors are frequently used in many automated systems as a major driving force, and thus, t...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
In this paper, condition monitoring of induction machines using air-gap magnetic flux density spectr...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
In this work, we propose a new and simple method to insure an online and automatic detection of faul...