TY - JOUR
T1 - Neural network predictive control in renewable systems (HKT-PV) for delivered power smoothing
AU - Cano Ortega, Antonio
AU - Arévalo Cordero, Wilian Paul
AU - Jurado Melguizo, Francisco
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/5/15
Y1 - 2024/5/15
N2 - The reduction of power fluctuations from intermittent renewable sources is one of the most pressing challenges today. Recent research has shown that prediction and control mechanisms, when combined with energy storage systems, significantly contribute to improving these techniques. However, substantial research gaps still exist regarding the optimization of energy storage system operability. This article introduces an innovative power smoothing method based on neural network predictive control, in conjunction with the exponential moving average method. The proposed approach encompasses the ability to substantially reduce energy fluctuations, optimize battery state of charge, and mitigate ramp rates, thereby preventing deep discharges that shorten battery lifespan. Furthermore, the control system's primary objective is to optimize energy exchange with the grid, surpassing the performance offered by other conventional power smoothing methods. The control system excels in optimizing energy exchange within the network, surpassing conventional methods. Extensive testing on the University of Cuenca microgrid reveals a consistently more stable and higher battery charge compared to conventional methods. Numerical results for underscore the method's effectiveness with a fluctuation suppression rate of 30.78 % compared to 34.85 % (low pass filter) and 36.22 % (ramp rate) methods respectively. The enhanced voltage profiles at the common coupling point ensure the delivery of high-quality and stable power.
AB - The reduction of power fluctuations from intermittent renewable sources is one of the most pressing challenges today. Recent research has shown that prediction and control mechanisms, when combined with energy storage systems, significantly contribute to improving these techniques. However, substantial research gaps still exist regarding the optimization of energy storage system operability. This article introduces an innovative power smoothing method based on neural network predictive control, in conjunction with the exponential moving average method. The proposed approach encompasses the ability to substantially reduce energy fluctuations, optimize battery state of charge, and mitigate ramp rates, thereby preventing deep discharges that shorten battery lifespan. Furthermore, the control system's primary objective is to optimize energy exchange with the grid, surpassing the performance offered by other conventional power smoothing methods. The control system excels in optimizing energy exchange within the network, surpassing conventional methods. Extensive testing on the University of Cuenca microgrid reveals a consistently more stable and higher battery charge compared to conventional methods. Numerical results for underscore the method's effectiveness with a fluctuation suppression rate of 30.78 % compared to 34.85 % (low pass filter) and 36.22 % (ramp rate) methods respectively. The enhanced voltage profiles at the common coupling point ensure the delivery of high-quality and stable power.
KW - Battery operation
KW - Exponential moving average
KW - Neural network predictive control
KW - Power smoothing
KW - Renewable energy integration
KW - Battery operation
KW - Exponential moving average
KW - Neural network predictive control
KW - Power smoothing
KW - Renewable energy integration
UR - https://revistas.reduc.edu.cu/index.php/rpa/article/view/e3044
UR - https://www.sciencedirect.com/science/article/pii/S2352152X24009174
U2 - 10.1016/j.est.2024.111332
DO - 10.1016/j.est.2024.111332
M3 - Artículo
AN - SCOPUS:85189011433
SN - 2352-152X
VL - 87
SP - 1
EP - 14
JO - Journal of Energy Storage
JF - Journal of Energy Storage
M1 - 111332
ER -