TY - JOUR
T1 - Performance monitoring of kaplan turbine based hydropower plant under variable operating conditions using machine learning approach
AU - Kumar, Krishna
AU - Kumar, Aman
AU - Saini, Gaurav
AU - Mohammed, Mazin abed
AU - Shah, Rachna
AU - Nedoma, Jan
AU - Martinek, Radek
AU - Kadry, Seifedine
PY - 2024/4/1
Y1 - 2024/4/1
N2 - Silt is the leading cause of the erosion of the turbine's underwater components during hydropower generation. This erosion subsequently decreases the machine's efficiency. The present study aims to develop statistical correlations for predicting the efficiency of a hydropower plant based on the Kaplan turbine. Historical data from a Kaplan turbine-based hydropower plant was employed to create the model. Curve fitting, multilinear regression (MLR), and artificial neural network (ANN) techniques were used to develop models for predicting the machine's efficiency. The results show that the ANN method is better at predicting the machine's efficiency than the MLR and curve fitting methods. It got an R2-value of 0.99966, a MAPE of 0.0239%, and an RMSPE of 0.1785%. Equipment manufacturers, plant owners, and researchers can use the established correlation to evaluate the machine's condition in real-time. Additionally, it offers utility in formulating effective operations and maintenance (O&M) strategies.
AB - Silt is the leading cause of the erosion of the turbine's underwater components during hydropower generation. This erosion subsequently decreases the machine's efficiency. The present study aims to develop statistical correlations for predicting the efficiency of a hydropower plant based on the Kaplan turbine. Historical data from a Kaplan turbine-based hydropower plant was employed to create the model. Curve fitting, multilinear regression (MLR), and artificial neural network (ANN) techniques were used to develop models for predicting the machine's efficiency. The results show that the ANN method is better at predicting the machine's efficiency than the MLR and curve fitting methods. It got an R2-value of 0.99966, a MAPE of 0.0239%, and an RMSPE of 0.1785%. Equipment manufacturers, plant owners, and researchers can use the established correlation to evaluate the machine's condition in real-time. Additionally, it offers utility in formulating effective operations and maintenance (O&M) strategies.
KW - ANN
KW - Curve Fitting
KW - Hydro Turbine
KW - Machine Learning
KW - Operation and Maintenance
U2 - 10.1016/j.suscom.2024.100958
DO - 10.1016/j.suscom.2024.100958
M3 - Article
AN - SCOPUS:85185188820
SN - 2210-5379
VL - 42
JO - Sustainable Computing: Informatics and Systems
JF - Sustainable Computing: Informatics and Systems
M1 - 100958
ER -