Today, real-time fault detection and predictive maintenance based on sensor data are actively introduced in various areas such as manufacturing, aircraft, and power system monitoring. Many faults in motors or rotating machinery like industrial robots, aircraft engines, and wind turbines can be diagnosed by analyzing signal data such as vibration and noise. In this study, to detect failures based on vibration data, preprocessing was performed using signal processing techniques such as the Hamming window and the cepstrum transform. After that, 10 statistical condition indicators were extracted to train the machine learning models. Specifically, two types of Mahalanobis distance (MD)-based one-class classification methods, the MD classifier an...
The rolling element bearings, and gears are the main components of rotating machines and are most pr...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
One of the biggest challenges for the fault diagnosis research of industrial robots is that the norm...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
A diagnostic system for the predictive maintenance of production facilities is highly recommended du...
This paper studies the use of an ensemble of one-class classifiers for broken rotor bars detection i...
Machine health monitoring of rotating mechanical systems is an important task in manufacturing engin...
Fault analysis of Industrial Motors has been an area where there has been tremendous focus in the pa...
This article compares two intelligent methods for automatic detection of unbalancing, cracks, and pa...
In day-to-day life 90% of industries use induction motors due toless maintenance, high efficiency, g...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
Rotor bars are one of the most failure-critical components in induction machines. We present an appr...
The development of technologies for the maintenance industry has taken an important role to meet the...
SummaryFault detection and diagnosis is the most important technology in condition-based maintenance...
The rolling element bearings, and gears are the main components of rotating machines and are most pr...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
One of the biggest challenges for the fault diagnosis research of industrial robots is that the norm...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
A diagnostic system for the predictive maintenance of production facilities is highly recommended du...
This paper studies the use of an ensemble of one-class classifiers for broken rotor bars detection i...
Machine health monitoring of rotating mechanical systems is an important task in manufacturing engin...
Fault analysis of Industrial Motors has been an area where there has been tremendous focus in the pa...
This article compares two intelligent methods for automatic detection of unbalancing, cracks, and pa...
In day-to-day life 90% of industries use induction motors due toless maintenance, high efficiency, g...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
Rotor bars are one of the most failure-critical components in induction machines. We present an appr...
The development of technologies for the maintenance industry has taken an important role to meet the...
SummaryFault detection and diagnosis is the most important technology in condition-based maintenance...
The rolling element bearings, and gears are the main components of rotating machines and are most pr...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
One of the biggest challenges for the fault diagnosis research of industrial robots is that the norm...