SILVA FILHO, M. Q.; http://lattes.cnpq.br/3868284567779525; SILVA FILHO, Maurílio Quirino da.
Resumo:
This work presents a methodology to determine the optimal capacity of a photovoltaic plant
(UFV) to be integrated with a wind plant (EOL), maximizing the complementarity between the
sources and minimizing losses due to curtailment or generation reduction. The proposed
methodology uses real capacity factor data from operational solar and wind plants, provided by
the National Electric System Operator (ONS), enabling an evaluation based on hourly data over
an entire year. To develop the data processing, the Python environment was used. Initially, the
preprocessing of the hourly data provided by the ONS included cleaning, standardization, and
filtering of the records to ensure the consistency and quality of the information. Next, through
the proposed methodology, the Modified Brent Method was employed, an optimization method
that, without relying on derivatives, efficiently determines the value of the installed
photovoltaic capacity that minimizes generation curtailment. Statistical metrics such as the
Pearson coefficient, MSE (Mean Squared Error), RMSE RMSE (Root Mean-Square Error), and
R² were applied to assess the accuracy and reliability of the data used in the methodology. This
methodological framework enabled a detailed analysis grounded in the operational reality of
the hybrid plants studied, ensuring greater precision in defining the optimal integration
conditions between solar and wind sources. Ten pairs of hybrid plants were analyzed,
considering statistical metrics to quantify the complementarity between the sources and define
the optimal sizing of the UFV. The results demonstrated that hybridization can significantly
increase the capacity factor of the plants, reducing generation intermittency and optimizing the
use of existing infrastructure. For certain configurations, it was possible to double the installed
capacity of the EOL without generation curtailment exceeding 10%, making hybridization
energetically viable. Furthermore, the results showed that pairs of plants with a higher negative
correlation between the sources exhibited better performance, reinforcing the importance of
strategic selection of hybrid plants. The proposed methodology can be applied in the planning
of electric sector expansion, optimizing resource allocation and the use of transmission
infrastructure, as well as serving for future research on economic viability, integration of energy
storage, and regulatory impacts of hybrid generation.