Authors
Waqar Muhammad Ashraf, Yasir Rafique, Ghulam Moeen Uddin, Fahid Riaz, Muhammad Asim, Muhammad Farooq, Abid Hussain, Chaudhary Awais Salman
Publication date
2022/3/1
Journal
Alexandria Engineering Journal
Volume
61
Issue
3
Pages
1864-1880
Publisher
Elsevier
Description
The vibrations of bearings holding the high-speed shaft of a steam turbine are critically controlled for the safe and reliable power generation at the power plants. In this paper, two artificial intelligence (AI) process models, i.e., artificial neural network (ANN) and support vector machine (SVM) based relative vibration modeling of a steam turbine shaft bearing of a 660 MW supercritical steam turbine system is presented. After extensive data processing and machine learning based visualization tests performed on the raw operational data, ANN and SVM models are trained, validated and compared by external validation tests. ANN has outperformed SVM in terms of better prediction capability and is, therefore, deployed for simulating the constructed operating scenarios. ANN process model is tested for the complete load range of power plant, i.e., from 353 MW to 662 MW and 4.07% reduction in the relative vibration of the …
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