Parameter Estimation of a Macroscale Hydrological Model Using an Adaptive Differential Evolution

Author(s):  
Saswata Nandi ◽  
Manne Janga Reddy
2020 ◽  
Author(s):  
Saswata Nandi ◽  
M. Janga Reddy

Abstract Recently, physically-based hydrological models have been gaining much popularity in various activities of water resources planning and management, such as assessment of basin water availability, floods, droughts, and reservoir operation. Every hydrological model contains some parameters that must be tuned to the catchment being studied to obtain reliable estimates from the model. This study evaluated the performance of different evolutionary algorithms, namely genetic algorithm (GA), shuffled complex evolution (SCE), differential evolution (DE), and self-adaptive differential evolution (SaDE) algorithm for the parameter calibration of a computationally intensive distributed hydrological model, variable infiltration capacity (VIC) model. The methodology applied and tested for a case study of the upper Tungabhadra River basin in India, and the performance of the algorithms is evaluated in terms of reliability, variability, efficacy measures in a limited number of function evaluations, their ability for achieving global convergence, and also by their capability to produce a skillful simulation of streamflows. The results of the study indicated that SaDE facilitates an effective calibration of the VIC model with higher reliability and faster convergence to optimal solutions as compared to the other methods. Moreover, due to the simplicity of the SaDE, it provides easy implementation and flexibility for the automatic calibration of complex hydrological models.


Solar Energy ◽  
2019 ◽  
Vol 190 ◽  
pp. 465-474 ◽  
Author(s):  
Shuijia Li ◽  
Wenyin Gong ◽  
Xuesong Yan ◽  
Chengyu Hu ◽  
Danyu Bai ◽  
...  

2021 ◽  
Vol 17 (37) ◽  
pp. 89-110
Author(s):  
Ayong HIENDRO ◽  
Ismail YUSUF ◽  
ERWAN Komala JUNAIDI

Background: Photovoltaic (PV) systems have become a promising renewable energy technology for electricity sources. The PV parameter estimation plays a vital role in modeling PV systems. Even though many optimization algorithms have been presented to obtain PV parameters, it is still challenging to investigate high-performance algorithms. Aim: This study aimed to propose a triangular adaptive differential evolution (TADE) algorithm to give a precise estimate of PV parameters. Methods: RTC-France PV cell, Photowatt-PWP 201 PV module, and KC200GT PV module were used as the case studies by using diode circuit models. The root mean square error (RMSE) between measured and estimated data was adopted to define PV parameter objective functions. A Friedman test was used to assess the reliability of algorithms. The parameter estimation results were cross-checked to confirm the accuracy of TADE algorithm performances. The PV module operating under various weather conditions was also performed to evaluate the TADE algorithm. Results and Discussion: The results verified that in most of the cases, the TADE algorithm surpassed other state-of-the-art optimization algorithms. For the double-diode model, the TADE algorithm obtained the RTC-France PV cell parameters with the RMSE value of 9.8243x10-04, the most accurate of all algorithms. Experimental results also showed that the TADE algorithm presented an excellent capability and accuracy in discovering the PV parameters and provided the best estimates for I-V and P-V experimental data of real PV cells and modules. Conclusions: The results have proven that the TADE algorithm has a great performance in terms of accuracy, reliability, and convergence speed for estimating PV parameters, even in different weather conditions


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