The availability of complex rotating machines is vital for the prevention of catastrophic failures in a significant number of industrial operations. Reliability engineering theories stipulate that optimising the mean-time-to-repair (MTTR) for failed machines can immensely boost availability. In practice, however, a significant amount of time is taken to accurately detect and classify rotor-related anomalies which often negate the drive to achieve a truly robust maintenance decision-making system. Earlier studies have attempted to address these limitations by classifying the poly coherent composite spectra (pCCS) features generated at different machine speeds using principal components analysis (PCA). As valuable as the observations obtained...
AbstractBearing failure is one of the most common causes of breakdown in rotating machines. The mach...
Abstract—Condition surveillance of rotating machinery in a plant is very important for guaranteeing ...
Statistical estimates of vibration signals such as the mean and variance can provide indication of f...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
This article compares two intelligent methods for automatic detection of unbalancing, cracks, and pa...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
As the concept of Industry 4.0 is introduced, artificial intelligence-based fault analysis is attrac...
A new approach for detecting mechanical unbalance and shaft misalignment in rotating machinery is pr...
Vibration analysis of rotating machinery can give an indication of possible faults thus allowing mai...
The measurement and diagnosis of the severity of failures in rotating machines allow the execution o...
One of the most important subsystems of the vehicles and machines operating currently in industry an...
SUMMARY: The task of condition monitoring and fault diagnosis of rotating machinery faults is signif...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
The development of technologies for the maintenance industry has taken an important role to meet the...
AbstractBearing failure is one of the most common causes of breakdown in rotating machines. The mach...
Abstract—Condition surveillance of rotating machinery in a plant is very important for guaranteeing ...
Statistical estimates of vibration signals such as the mean and variance can provide indication of f...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
This article compares two intelligent methods for automatic detection of unbalancing, cracks, and pa...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
As the concept of Industry 4.0 is introduced, artificial intelligence-based fault analysis is attrac...
A new approach for detecting mechanical unbalance and shaft misalignment in rotating machinery is pr...
Vibration analysis of rotating machinery can give an indication of possible faults thus allowing mai...
The measurement and diagnosis of the severity of failures in rotating machines allow the execution o...
One of the most important subsystems of the vehicles and machines operating currently in industry an...
SUMMARY: The task of condition monitoring and fault diagnosis of rotating machinery faults is signif...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
The development of technologies for the maintenance industry has taken an important role to meet the...
AbstractBearing failure is one of the most common causes of breakdown in rotating machines. The mach...
Abstract—Condition surveillance of rotating machinery in a plant is very important for guaranteeing ...
Statistical estimates of vibration signals such as the mean and variance can provide indication of f...