TY - GEN
T1 - An ML-Based Simulation Capability to Generate Training Data-set of Boiler Subsystems
AU - Alhammadi, Ala Abdelrazaq
AU - Yeun, Chan Yeob
AU - Damiani, Ernesto
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - The paper proposes a framework for optimizing and improving steam power plant operations using artificial intelligence (AI). In particular, we will do a case study on the boiler subsystem, which constitutes a significant portion of the steam power plant. Moreover, this power plant has other important subsystems such as; a condenser, a turbine, feed water, and other minor auxiliaries. The boiler subsystem will be studied and simulated using Simulink environment in MATLAB. Our objective is to utilize this simulation model to gather data that may be used in an AI approach. By contrasting our data-set with the real power plant, we may adjust our simulation model. The simulation data set was selected because it enables simple input parameter modification without involving or affecting the real power plant. Consequently, after using the machine learning model, comparing the outputs of the data from the actual power plant with the simulated data set. Furthermore, a validation technique will be used to determine how the data-set of the regression model will optimize the real power plant. This paper discusses the proposed framework and provides an explanation of the machine learning technique with which the data-set will move to a further process of training and testing using different regression analyses. Furthermore, this paper focuses on machine learning algorithms, namely, linear regression, decision tree, and random forest. In addition using r2-score for comparing the performance of these algorithms.
AB - The paper proposes a framework for optimizing and improving steam power plant operations using artificial intelligence (AI). In particular, we will do a case study on the boiler subsystem, which constitutes a significant portion of the steam power plant. Moreover, this power plant has other important subsystems such as; a condenser, a turbine, feed water, and other minor auxiliaries. The boiler subsystem will be studied and simulated using Simulink environment in MATLAB. Our objective is to utilize this simulation model to gather data that may be used in an AI approach. By contrasting our data-set with the real power plant, we may adjust our simulation model. The simulation data set was selected because it enables simple input parameter modification without involving or affecting the real power plant. Consequently, after using the machine learning model, comparing the outputs of the data from the actual power plant with the simulated data set. Furthermore, a validation technique will be used to determine how the data-set of the regression model will optimize the real power plant. This paper discusses the proposed framework and provides an explanation of the machine learning technique with which the data-set will move to a further process of training and testing using different regression analyses. Furthermore, this paper focuses on machine learning algorithms, namely, linear regression, decision tree, and random forest. In addition using r2-score for comparing the performance of these algorithms.
KW - Artificial Intelligence
KW - Decision Tree
KW - linear Regression
KW - Machine Learning
KW - r2-score
KW - Random forest
KW - Steam Power Plant
UR - https://www.scopus.com/pages/publications/85160799578
U2 - 10.1109/ICBATS57792.2023.10111123
DO - 10.1109/ICBATS57792.2023.10111123
M3 - Conference contribution
AN - SCOPUS:85160799578
T3 - 2nd International Conference on Business Analytics for Technology and Security, ICBATS 2023
BT - 2nd International Conference on Business Analytics for Technology and Security, ICBATS 2023
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2nd International Conference on Business Analytics for Technology and Security, ICBATS 2023
Y2 - 7 March 2023 through 8 March 2023
ER -