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Article

Stress Prediction Processes of Metal Pressure-Bearing Complex Components in Thermal Power Plants Based on Machine Learning

1
Jiangsu Frontier Electric Power Technology Co., Ltd., Nanjing 211100, China
2
College of Materials Science and Engineering, Hohai University, Changzhou 213200, China
*
Author to whom correspondence should be addressed.
Processes 2025, 13(2), 358; https://doi.org/10.3390/pr13020358
Submission received: 11 December 2024 / Revised: 18 January 2025 / Accepted: 27 January 2025 / Published: 27 January 2025
(This article belongs to the Special Issue Industrial Applications of Modeling Tools)

Abstract

The real-time stress assessment of metal pressure components is one of the key factors in ensuring the safe operation of thermal power plants. To address the challenge of real-time prediction of stress in the key areas of complex special-shaped metal pressure-bearing components in a certain domestic 300 MW thermal power plant, three typical complex metal pressure-bearing components, the main steam pipe tee (MSPT), the steam drum downcomer joint (DDJ) and the header ligament (HL), were taken as research objects. The stress distribution of the three complex metal pressure-bearing components under different conditions was analyzed through the finite element method, and the stress results at the dangerous points were used as samples to establish training sample data. Subsequently, different machine learning methods were employed to train the sample data. The training results indicate that neural networks (NNs) and the Auto-Sklearn Regression (ASR) models can accurately predict the stress of the key parts of complex metal pressure-bearing components in real time. The ASR method demonstrates better performance in stress prediction of the main steam pipe tee, with a prediction accuracy of ≥96%. The NN model shows better prediction for the header ligament, with a prediction accuracy of ≥94%. These research findings provide effective support for the high-temperature lifespan assessment and safe operation of thermal power plants.
Keywords: thermal power plant; metal pressure component; finite element analysis; machine learning; high-temperature stress prediction thermal power plant; metal pressure component; finite element analysis; machine learning; high-temperature stress prediction

Share and Cite

MDPI and ACS Style

Wang, S.; Shi, R.; Wu, J.; Ma, Y.; Yang, C.; Liu, H. Stress Prediction Processes of Metal Pressure-Bearing Complex Components in Thermal Power Plants Based on Machine Learning. Processes 2025, 13, 358. https://doi.org/10.3390/pr13020358

AMA Style

Wang S, Shi R, Wu J, Ma Y, Yang C, Liu H. Stress Prediction Processes of Metal Pressure-Bearing Complex Components in Thermal Power Plants Based on Machine Learning. Processes. 2025; 13(2):358. https://doi.org/10.3390/pr13020358

Chicago/Turabian Style

Wang, Shutao, Renqiang Shi, Jian Wu, Yunfei Ma, Chao Yang, and Huan Liu. 2025. "Stress Prediction Processes of Metal Pressure-Bearing Complex Components in Thermal Power Plants Based on Machine Learning" Processes 13, no. 2: 358. https://doi.org/10.3390/pr13020358

APA Style

Wang, S., Shi, R., Wu, J., Ma, Y., Yang, C., & Liu, H. (2025). Stress Prediction Processes of Metal Pressure-Bearing Complex Components in Thermal Power Plants Based on Machine Learning. Processes, 13(2), 358. https://doi.org/10.3390/pr13020358

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