Artículos de revistas
An improved bald eagle search algorithm for parameter estimation of different photovoltaic models
Fecha
2021Registro en:
Processes 2021, 9, 1127.
10.3390/pr9071127
Autor
Ramadan, Abdelhady
Kamel, Salah
Hassan, Mohamed H.
Khurshaid, Tahir
Rahmann Zúñiga, Claudia Andrea
Institución
Resumen
Clean energy resources have become a worldwide concern, especially photovoltaic (PV)
energy. Solar cell modeling is considered one of the most important issues in this field. In this article,
an improvement for the search steps of the bald eagle search algorithm is proposed. The improved
bald eagle search (IBES) was applied to estimate more accurate PV model parameters. The IBES
algorithm was applied for conventional single, double, and triple PV models, in addition to modified
single, double, and triple PV models. The IBES was evaluated by comparing its results with the
original BES through 15 benchmark functions. For a more comprehensive analysis, two evaluation
tasks were performed. In the first task, the IBES results were compared with the original BES for
parameter estimation of original and modified tribe diode models. In the second task, the IBES results
were compared with different recent algorithms for parameter estimation of original and modified
single and double diode models. All tasks were performed using the real data for a commercial
silicon solar cell (R.T.C. France). From the results, it can be concluded that the results of the modified
models were more accurate than the conventional PV models, and the IBES behavior was better than
the original BES and other compared algorithms.