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Biogeography-Based Teaching Learning-Based Optimization Algorithm for Identifying One-Diode, Two-Diode and Three-Diode Models of Photovoltaic Cell and Module

Author

Listed:
  • Nawal Rai

    (Advanced Electronic Systems Laboratory (AESL), Electrical Engineering Department, Faculty of Technology, Dr. Yahia Fares University, Medea 26000, Algeria)

  • Amel Abbadi

    (Electrical Engineering and Automatic Laboratory (EEAL), Electrical Engineering Department, Faculty of Technology, Dr. Yahia Fares University, Medea 26000, Algeria)

  • Fethia Hamidia

    (Electrical Engineering and Automatic Laboratory (EEAL), Electrical Engineering Department, Faculty of Technology, Dr. Yahia Fares University, Medea 26000, Algeria)

  • Nadia Douifi

    (Advanced Electronic Systems Laboratory (AESL), Electrical Engineering Department, Faculty of Technology, Dr. Yahia Fares University, Medea 26000, Algeria)

  • Bdereddin Abdul Samad

    (School of Engineering, Cardiff University, Cardiff CF24 3AA, UK)

  • Khalid Yahya

    (Departement of Electrical and Electronics Engineering, Nisantasi University, Istanbul 34467, Turkey)

Abstract

This article handles the challenging problem of identifying the unknown parameters of solar cell three models on one hand and of photovoltaic module three models on the other hand. This challenge serves as the basis for fault detection, control, and modelling of PV systems. An accurate model of PV is essential for the simulation research of PV systems, where it has a significant role in the dynamic study of these systems. The mathematical models of the PV cell and module have nonlinear I-V and P-V characteristics with many undefined parameters. In this paper, this identification problem is solved as an optimization problem based on metaheuristic optimization algorithms. These algorithms use root mean square error (RMSE) between the calculated and the measured current as an objective function. A new metaheuristic amalgamation algorithm, namely biogeography-based teaching learning-based optimization (BB-TLBO) is proposed. This algorithm is a hybridization of two algorithms, the first one is called BBO (biogeography-based optimization) and the second is TLBO (teaching learning-based optimization). The BB-TLBO is proposed to identify the unknown parameters of one, two and three-diode models of the RTC France silicon solar cell and of the commercial photovoltaic solar module monocrystalline STM6-40/36, taking into account the performance indices: high precision, more reliability, short execution time and high convergence speed. This identification is carried out using experimental data from the RTC France silicon solar cell and the STM6-40/36 photovoltaic module. The efficiency of BB-TLBO is checked by comparing its identification results with its own single algorithm BBO, TLBO and newly introduced hybrid algorithms such as DOLADE, LAPSO and others. The results reveal that the suggested approach surpasses all compared algorithms in terms of RMSE (RMSE min, RMSE mean and RMSE max), standard deviation of RMSE values (STD), CPU (execution time), and convergence speed.

Suggested Citation

  • Nawal Rai & Amel Abbadi & Fethia Hamidia & Nadia Douifi & Bdereddin Abdul Samad & Khalid Yahya, 2023. "Biogeography-Based Teaching Learning-Based Optimization Algorithm for Identifying One-Diode, Two-Diode and Three-Diode Models of Photovoltaic Cell and Module," Mathematics, MDPI, vol. 11(8), pages 1-30, April.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:8:p:1861-:d:1123251
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