The use of machine learning for predictive maintenance has been the focus of many studies, usually utilizing industrial setups consisting of actual industrial motors. This work examines the possibility of creating a simple setup to develop a machine learning model to detect electric motor failures, eliminating the need to rely on having access to industrial equipment in the early stages. The work conducted in this thesis leverages autoencoders, a specific type of neural network, to detect motor faults based on vibration readings from an accelerometer. The final model detected anomalies with 100% accuracy at three different speeds when a constant load was applied to the motor. However, it should be improved when a variation in load is intro...
This paper presents an approach for automatic anomaly detection through vibration analysis based on ...
Over the last few years, the industrial dependency to operate induction motors and generators has be...
Abstract The increasing complexity of modern industrial systems calls for automatic and innovative p...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
In this paper, an artificial neural network simulator is employed to carry out diagnosis and prognos...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usua...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
This article presents aspects of a tool to assist in predictive maintenance based on vibration analy...
With the rapid development and wide application of electric vehicles (EVs), condition monitoring and...
Electric motor condition monitoring can detect anomalies in the motor performance which have the pot...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
The modern industrial world calls for efficient, reliable and safe systems. A contribution to the so...
This paper presents an approach for automatic anomaly detection through vibration analysis based on ...
Over the last few years, the industrial dependency to operate induction motors and generators has be...
Abstract The increasing complexity of modern industrial systems calls for automatic and innovative p...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
In this paper, an artificial neural network simulator is employed to carry out diagnosis and prognos...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usua...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
Unplanned downtime in industries poses significant challenges, affecting production efficiency and p...
This article presents aspects of a tool to assist in predictive maintenance based on vibration analy...
With the rapid development and wide application of electric vehicles (EVs), condition monitoring and...
Electric motor condition monitoring can detect anomalies in the motor performance which have the pot...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
The modern industrial world calls for efficient, reliable and safe systems. A contribution to the so...
This paper presents an approach for automatic anomaly detection through vibration analysis based on ...
Over the last few years, the industrial dependency to operate induction motors and generators has be...
Abstract The increasing complexity of modern industrial systems calls for automatic and innovative p...