Artificial Neural Network Model for Estimating the Pelton Turbine Shaft Power of a Micro-Hydropower Plant under Different Operating Conditions
Abstract
:1. Introduction
2. Materials and Methods
2.1. Experimental Model Description
2.2. Operating Conditions of Pressure Head and Electrical Power Consumption
2.3. Turbine Shaft Power Analysis of the Micro-Hydropower Plant
- The brake power generated at the turbine shaft is estimated as
2.4. Absolute Error
2.5. Root Mean Square Error (RMSE)
- n is the number of observations;
- is the actual value;
- is the predicted value.
2.6. Coefficient of Determination ()
- n is the number of observations;
- is the actual value;
- is the predicted value;
- is the mean of the actual values.
2.7. Artificial Neural Network Model
2.8. Methodology
- Variation of the electrical load exerted on the generator (1.5, 3, 4.5, 6, 7.5 and 9 kW of electrical power consumption), as shown in the flow diagram in Figure 3, considering the rotational speed of the turbine-generator shaft as constant. It starts with an injector opening of 25% and a load applied to the generator of 1.5 kW (0.5 kW for each phase), with a shaft speed of 200 rpm. The load is then increased to 3 kW (1 kW per phase) and, in turn, the flow rate is increased to maintain the shaft speed at 200 rpm. This process continues for electrical loads of 4.5, 6, 7.5 and 9 kW. At the end of this test, the system is switched off and then switched on again using the same procedure but with a shaft speed of 400 rpm.
- Variation of the turbine inlet water flow. We consider an injector opening of 100% and an electrical energy consumption of 9 kW (3 kW for each phase) applied to the electrical generator. We start with a flow rate of 25 /h and then increase the flow rate by 5 /h increments until the maximum allowed flow rate in each test.
2.9. The Training Algorithm and Implementation
2.10. Artificial Neural Network Selection
2.11. Levenberg–Marquardt Algorithm
2.12. Scaled Conjugate Gradient (SCG)
2.13. Neural Networks with Bayesian Learning
3. Results and Discussion
3.1. Comparison of Experimental Result with Artificial Neural Network Models: Flow Variation Case
3.2. Comparison of the Experimental Results with the Models of Artificial Neural Networks: Case of Variation of the Consumption of Electricity
4. Conclusions
- The results of the turbine power estimation from experimental data show that in the case where we varied the turbine inlet flow rate to change the shaft power, the Levenberg–Marquardt algorithm was the best predictor in terms of accuracy.
- The Levenberg–Marquardt training algorithm slightly outperformed the Bayesian inference model in terms of estimating the turbine output power results when varying the electrical load applied to the electrical generator connected to the turbine.Overall, the Levenberg–Marquardt algorithm achieved a higher accuracy in estimating the Pelton turbine power output from experimental tests under different operating conditions, as measured using absolute error, RMSE and .
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ANN | Artificial Neural Network |
L–M | Levenberg–Marquardt |
SCG | Scaled Conjugate Gradient |
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Delgado-Currín, R.R.; Calderón-Muñoz, W.R.; Elicer-Cortés, J.C. Artificial Neural Network Model for Estimating the Pelton Turbine Shaft Power of a Micro-Hydropower Plant under Different Operating Conditions. Energies 2024, 17, 3597. https://doi.org/10.3390/en17143597
Delgado-Currín RR, Calderón-Muñoz WR, Elicer-Cortés JC. Artificial Neural Network Model for Estimating the Pelton Turbine Shaft Power of a Micro-Hydropower Plant under Different Operating Conditions. Energies. 2024; 17(14):3597. https://doi.org/10.3390/en17143597
Chicago/Turabian StyleDelgado-Currín, Raúl R., Williams R. Calderón-Muñoz, and J. C. Elicer-Cortés. 2024. "Artificial Neural Network Model for Estimating the Pelton Turbine Shaft Power of a Micro-Hydropower Plant under Different Operating Conditions" Energies 17, no. 14: 3597. https://doi.org/10.3390/en17143597
APA StyleDelgado-Currín, R. R., Calderón-Muñoz, W. R., & Elicer-Cortés, J. C. (2024). Artificial Neural Network Model for Estimating the Pelton Turbine Shaft Power of a Micro-Hydropower Plant under Different Operating Conditions. Energies, 17(14), 3597. https://doi.org/10.3390/en17143597