International audienceThis paper proposes a scheme based on the use of unsupervised machine learning approach and a drift detection mechanism in order to perform an early fault diagnosis of simple and multiple stuck-opened/stuck-closed switches in multicellular converters. Only the data samples representing the normal operation conditions are used in order to be adapted to the case where no data is available about faulty behaviors. A health indicator measuring the dissimilarity between normal and current operation conditions is built in order to detect a drift (degradations) in early stage. When a degradation (fault) is detected, the isolation is achieved by taking into account the discrete dynamics of switches. The features related to the ...
This study presents a novel interturn short-circuit fault (ISCF) and demagnetization fault (DF) diag...
Publisher Copyright: © 2022 IEEE.With advancements in science, machine learning and artificial intel...
This paper presents a new fault detection technique for the diagnosis and localization of sub-module...
International audienceThis paper proposes a scheme based on the use of unsupervised machine learning...
Development of machine learning algorithms for multi-classification makes many unsolved classificati...
Tallenna OA-julkaisu, kun saatavillaGrid-connected converters are exposed to the loss of synchronisa...
Induction machines have been key components in the industrial sector for decades, owing to different...
Due to the possibility of putting a large number of modules consisting of switches and capacitors co...
International audienceThis paper presents a model-based approach for the fault diagnosis of three-ce...
Automated early detection and identification of switch faults are essential in high-voltage applicat...
Many commercial and military transport systems have fault diagnostic functions implemented to help p...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
Power electronic based inverters are the major components in industry. A fault diagnostics framework...
The ability of a switch-mode AC/DC power supply to shrink supplies is a benefit and a requirement fo...
International audienceThis paper presents and evaluates a methodology to detect and diagnose single ...
This study presents a novel interturn short-circuit fault (ISCF) and demagnetization fault (DF) diag...
Publisher Copyright: © 2022 IEEE.With advancements in science, machine learning and artificial intel...
This paper presents a new fault detection technique for the diagnosis and localization of sub-module...
International audienceThis paper proposes a scheme based on the use of unsupervised machine learning...
Development of machine learning algorithms for multi-classification makes many unsolved classificati...
Tallenna OA-julkaisu, kun saatavillaGrid-connected converters are exposed to the loss of synchronisa...
Induction machines have been key components in the industrial sector for decades, owing to different...
Due to the possibility of putting a large number of modules consisting of switches and capacitors co...
International audienceThis paper presents a model-based approach for the fault diagnosis of three-ce...
Automated early detection and identification of switch faults are essential in high-voltage applicat...
Many commercial and military transport systems have fault diagnostic functions implemented to help p...
AC drives are employed in process industries for varying applications resulting in a wide range of r...
Power electronic based inverters are the major components in industry. A fault diagnostics framework...
The ability of a switch-mode AC/DC power supply to shrink supplies is a benefit and a requirement fo...
International audienceThis paper presents and evaluates a methodology to detect and diagnose single ...
This study presents a novel interturn short-circuit fault (ISCF) and demagnetization fault (DF) diag...
Publisher Copyright: © 2022 IEEE.With advancements in science, machine learning and artificial intel...
This paper presents a new fault detection technique for the diagnosis and localization of sub-module...