Predicting Steam Turbine Power Generation: A Comparison of Long Short-Term Memory and Willans Line Model

Author:

Pasandideh Mostafa1,Taylor Matthew2,Tito Shafiqur Rahman1ORCID,Atkins Martin2,Apperley Mark1

Affiliation:

1. Ahuora—Centre for Smart Energy Systems, School of Computing and Mathematical Sciences, University of Waikato, Hamilton 3240, New Zealand

2. Ahuora—Centre for Smart Energy Systems, School of Engineering, University of Waikato, Hamilton 3240, New Zealand

Abstract

This study focuses on using machine learning techniques to accurately predict the generated power in a two-stage back-pressure steam turbine used in the paper production industry. In order to accurately predict power production by a steam turbine, it is crucial to consider the time dependence of the input data. For this purpose, the long-short-term memory (LSTM) approach is employed. Correlation analysis is performed to select parameters with a correlation coefficient greater than 0.8. Initially, nine inputs are considered, and the study showcases the superior performance of the LSTM method, with an accuracy rate of 0.47. Further refinement is conducted by reducing the inputs to four based on correlation analysis, resulting in an improved accuracy rate of 0.39. The comparison between the LSTM method and the Willans line model evaluates the efficacy of the former in predicting production power. The root mean square error (RMSE) evaluation parameter is used to assess the accuracy of the prediction algorithm used for the generator’s production power. By highlighting the importance of selecting appropriate machine learning techniques, high-quality input data, and utilising correlation analysis for input refinement, this work demonstrates a valuable approach to accurately estimating and predicting power production in the energy industry.

Funder

Ahuora project

Publisher

MDPI AG

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Knowledge-Guided Learning of Temporal Dynamics and its Application to Gas Turbines;The 15th ACM International Conference on Future and Sustainable Energy Systems;2024-05-31

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