Early damage detection and classification by condition monitoring systems is crucial to enable predictive maintenance of manufacturing systems and industrial facilities. Data analysis can be improved by applying machine learning algorithms and fusion of data from heterogenous sensors. This paper presents an approach for a step-wise integration of classifications gained from vibration and acoustic emission sensors in order to combine the information from signals acquired in the low and high frequency ranges. A test rig comprising a drive train and bearings with small artificial damages is used for acquisition of experimental data. The results indicate that an improvement of damage classification can be obtained using the proposed algorithm o...
Detection of abnormalities and defects in rotating machines is of prime importance for industry and...
This master’s thesis is concerned analysis of signal of acoustic emission. The analysis is based on ...
Acoustic emission (AE) measurements are one of many non-destructive testing methods which had found ...
Early damage detection and classification by condition monitoring systems is crucial to enable predi...
This paper describes recent developments in a program to detect damage to helicopter drivetrains usi...
To implement the tool condition monitoring system in a metal cutting process, it is necessary to hav...
Retrieval of beneficial information, knowledge and development of new methods can be carried out usi...
The industry's interest in electrified powertrain-equipped vehicles has increased due to environment...
International audienceDesigned to break the paradigm for efficiency, the new generation of engines p...
The increasing demand for predictive maintenance is a main driver of the development of better fault...
Condition monitoring of deterioration in the metallurgical equipment is essential for faultless oper...
Industries such as transport and energy generation are aiming to create cleaner, lighter, more relia...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
Common applications of Condition-Based Maintenance utilize sensors mounted on mechanical components ...
The development of intelligent and autonomous monitoring systems applied to rotating machinery, repr...
Detection of abnormalities and defects in rotating machines is of prime importance for industry and...
This master’s thesis is concerned analysis of signal of acoustic emission. The analysis is based on ...
Acoustic emission (AE) measurements are one of many non-destructive testing methods which had found ...
Early damage detection and classification by condition monitoring systems is crucial to enable predi...
This paper describes recent developments in a program to detect damage to helicopter drivetrains usi...
To implement the tool condition monitoring system in a metal cutting process, it is necessary to hav...
Retrieval of beneficial information, knowledge and development of new methods can be carried out usi...
The industry's interest in electrified powertrain-equipped vehicles has increased due to environment...
International audienceDesigned to break the paradigm for efficiency, the new generation of engines p...
The increasing demand for predictive maintenance is a main driver of the development of better fault...
Condition monitoring of deterioration in the metallurgical equipment is essential for faultless oper...
Industries such as transport and energy generation are aiming to create cleaner, lighter, more relia...
Bearings are the elements that allow the rotatory movement in induction motors, and the fault occurr...
Common applications of Condition-Based Maintenance utilize sensors mounted on mechanical components ...
The development of intelligent and autonomous monitoring systems applied to rotating machinery, repr...
Detection of abnormalities and defects in rotating machines is of prime importance for industry and...
This master’s thesis is concerned analysis of signal of acoustic emission. The analysis is based on ...
Acoustic emission (AE) measurements are one of many non-destructive testing methods which had found ...