LAPSE:2024.1707
Published Article

LAPSE:2024.1707
A Novel Data Mining Framework to Investigate Causes of Boiler Failures in Waste-to-Energy Plants
August 23, 2024
Abstract
Examining boiler failure causes is crucial for thermal power plant safety and profitability. However, traditional approaches are complex and expensive, lacking precise operational insights. Although data-driven approaches hold substantial potential in addressing these challenges, there is a gap in systematic approaches for investigating failure root causes with unlabeled data. Therefore, we proffered a novel framework rooted in data mining methodologies to probe the accountable operational variables for boiler failures. The primary objective was to furnish precise guidance for future operations to proactively prevent similar failures. The framework was centered on two data mining approaches, Principal Component Analysis (PCA) + K-means and Deep Embedded Clustering (DEC), with PCA + K-means serving as the baseline against which the performance of DEC was evaluated. To demonstrate the framework’s specifics, a case study was performed using datasets obtained from a waste-to-energy plant in Sweden. The results showed the following: (1) The clustering outcomes of DEC consistently surpass those of PCA + K-means across nearly every dimension. (2) The operational temperature variables T-BSH3rm, T-BSH2l, T-BSH3r, T-BSH1l, T-SbSH3, and T-BSH1r emerged as the most significant contributors to the failures. It is advisable to maintain the operational levels of T-BSH3rm, T-BSH2l, T-BSH3r, T-BSH1l, T-SbSH3, and T-BSH1r around 527 °C, 432 °C, 482 °C, 338 °C, 313 °C, and 343 °C respectively. Moreover, it is crucial to prevent these values from reaching or exceeding 594 °C, 471 °C, 537 °C, 355 °C, 340 °C, and 359 °C for prolonged durations. The findings offer the opportunity to improve future operational conditions, thereby extending the overall service life of the boiler. Consequently, operators can address faulty tubes during scheduled annual maintenance without encountering failures and disrupting production.
Examining boiler failure causes is crucial for thermal power plant safety and profitability. However, traditional approaches are complex and expensive, lacking precise operational insights. Although data-driven approaches hold substantial potential in addressing these challenges, there is a gap in systematic approaches for investigating failure root causes with unlabeled data. Therefore, we proffered a novel framework rooted in data mining methodologies to probe the accountable operational variables for boiler failures. The primary objective was to furnish precise guidance for future operations to proactively prevent similar failures. The framework was centered on two data mining approaches, Principal Component Analysis (PCA) + K-means and Deep Embedded Clustering (DEC), with PCA + K-means serving as the baseline against which the performance of DEC was evaluated. To demonstrate the framework’s specifics, a case study was performed using datasets obtained from a waste-to-energy plant in Sweden. The results showed the following: (1) The clustering outcomes of DEC consistently surpass those of PCA + K-means across nearly every dimension. (2) The operational temperature variables T-BSH3rm, T-BSH2l, T-BSH3r, T-BSH1l, T-SbSH3, and T-BSH1r emerged as the most significant contributors to the failures. It is advisable to maintain the operational levels of T-BSH3rm, T-BSH2l, T-BSH3r, T-BSH1l, T-SbSH3, and T-BSH1r around 527 °C, 432 °C, 482 °C, 338 °C, 313 °C, and 343 °C respectively. Moreover, it is crucial to prevent these values from reaching or exceeding 594 °C, 471 °C, 537 °C, 355 °C, 340 °C, and 359 °C for prolonged durations. The findings offer the opportunity to improve future operational conditions, thereby extending the overall service life of the boiler. Consequently, operators can address faulty tubes during scheduled annual maintenance without encountering failures and disrupting production.
Record ID
Keywords
data mining, deep embedded clustering, failure analysis, power plants
Subject
Suggested Citation
Wang D, Jiang L, Kjellander M, Weidemann E, Trygg J, Tysklind M. A Novel Data Mining Framework to Investigate Causes of Boiler Failures in Waste-to-Energy Plants. (2024). LAPSE:2024.1707
Author Affiliations
Wang D: Department of Water Management, Faculty of Civil Engineering and Geosciences, Delft University of Technology, 2628 CN Delft, The Netherlands
Jiang L: Department of Computing Science, Umeå University, SE-901 87 Umeå, Sweden [ORCID]
Kjellander M: Umeå Energi, SE-901 05 Umeå, Sweden
Weidemann E: Umeå Energi, SE-901 05 Umeå, Sweden; Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Trygg J: Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Tysklind M: Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Jiang L: Department of Computing Science, Umeå University, SE-901 87 Umeå, Sweden [ORCID]
Kjellander M: Umeå Energi, SE-901 05 Umeå, Sweden
Weidemann E: Umeå Energi, SE-901 05 Umeå, Sweden; Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Trygg J: Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Tysklind M: Department of Chemistry, Umeå University, SE-907 36 Umeå, Sweden
Journal Name
Processes
Volume
12
Issue
7
First Page
1346
Year
2024
Publication Date
2024-06-28
ISSN
2227-9717
Version Comments
Original Submission
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PII: pr12071346, Publication Type: Journal Article
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LAPSE:2024.1707
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https://doi.org/10.3390/pr12071346
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Aug 23, 2024
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