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Cited 24 time in webofscience Cited 26 time in scopus
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Real-World Data-Driven Machine-Learning-Based Optimal Sensor Selection Approach for Equipment Fault Detection in a Thermal Power Plantopen access

Authors
Khalid, SalmanHwang, HyunhoKim, Heung Soo
Issue Date
Nov-2021
Publisher
MDPI
Keywords
real-world data; data-driven machine learning; thermal power plant; optimal sensor selection; boiler water wall tube; turbine; fault detection
Citation
MATHEMATICS, v.9, no.21
Indexed
SCIE
SCOPUS
Journal Title
MATHEMATICS
Volume
9
Number
21
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/4253
DOI
10.3390/math9212814
ISSN
2227-7390
2227-7390
Abstract
Due to growing electricity demand, developing an efficient fault-detection system in thermal power plants (TPPs) has become a demanding issue. The most probable reason for failure in TPPs is equipment (boiler and turbine) fault. Advance detection of equipment fault can help secure maintenance shutdowns and enhance the capacity utilization rates of the equipment. Recently, an intelligent fault diagnosis based on multivariate algorithms has been introduced in TPPs. In TPPs, a huge number of sensors are used for process maintenance. However, not all of these sensors are sensitive to fault detection. The previous studies just relied on the experts' provided data for equipment fault detection in TPPs. However, the performance of multivariate algorithms for fault detection is heavily dependent on the number of input sensors. The redundant and irrelevant sensors may reduce the performance of these algorithms, thus creating a need to determine the optimal sensor arrangement for efficient fault detection in TPPs. Therefore, this study proposes a novel machine-learning-based optimal sensor selection approach to analyze the boiler and turbine faults. Finally, real-world power plant equipment fault scenarios (boiler water wall tube leakage and turbine electric motor failure) are employed to verify the performance of the proposed model. The computational results indicate that the proposed approach enhanced the computational efficiency of machine-learning models by reducing the number of sensors up to 44% in the water wall tube leakage case scenario and 55% in the turbine motor fault case scenario. Further, the machine-learning performance is improved up to 97.6% and 92.6% in the water wall tube leakage and turbine motor fault case scenarios, respectively.
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