Fault diagnosis (FD) of once-through Benson boilers, as a crucial equipment of many thermal power plants, is of paramount importance to guarantee continuous performance. In this study, a new fault diagnosis methodology based on data-driven methods is presented to diagnose faults in once-through Benson boilers. The present study tackles this issue by adopting a combination of data-driven methods to improve the robustness of FD blocks. For this purpose, one-class versions of minimum spanning tree and K-means algorithms are employed to handle the strong interaction between measurements and part load operation and also to reduce computation time and system training error. Furthermore, an adaptive neuro-fuzzy inference system algorithm is adopted to improve accuracy and robustness of the proposed fault diagnosing system by fusion of the output of minimum spanning tree (MST) and K-means algorithms. Performance of the presented scheme against six major faults is then assessed by analyzing several test scenario.

Data-Driven Fault Diagnosis of Once-through Benson Boilers / Azari M.S.; Flammini F.; Caporuscio M.; Santini S.. - ELETTRONICO. - (2019), pp. 345-354. (Intervento presentato al convegno 4th International Conference on System Reliability and Safety, ICSRS 2019 tenutosi a ita nel 2019) [10.1109/ICSRS48664.2019.8987699].

Data-Driven Fault Diagnosis of Once-through Benson Boilers

Flammini F.;
2019

Abstract

Fault diagnosis (FD) of once-through Benson boilers, as a crucial equipment of many thermal power plants, is of paramount importance to guarantee continuous performance. In this study, a new fault diagnosis methodology based on data-driven methods is presented to diagnose faults in once-through Benson boilers. The present study tackles this issue by adopting a combination of data-driven methods to improve the robustness of FD blocks. For this purpose, one-class versions of minimum spanning tree and K-means algorithms are employed to handle the strong interaction between measurements and part load operation and also to reduce computation time and system training error. Furthermore, an adaptive neuro-fuzzy inference system algorithm is adopted to improve accuracy and robustness of the proposed fault diagnosing system by fusion of the output of minimum spanning tree (MST) and K-means algorithms. Performance of the presented scheme against six major faults is then assessed by analyzing several test scenario.
2019
2019 4th International Conference on System Reliability and Safety, ICSRS 2019
4th International Conference on System Reliability and Safety, ICSRS 2019
ita
2019
Azari M.S.; Flammini F.; Caporuscio M.; Santini S.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1402079
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