4.6 Article

Assessing Economic Complementarity in Wind-Solar Hybrid Power Plants Connected to the Brazilian Grid

Journal

SUSTAINABILITY
Volume 15, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/su15118862

Keywords

wind power; solar power; hybrid power plants; optimization; economic complementarity; Maranhao state; Brazil Interconnected System

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This study evaluates the benefits of hybridizing a power plant using an AI-based methodology to optimize the wind-solar ratio based on the Brazilian regulatory system. By collecting data and using wind profilers, sun trackers, and a Genetic Algorithm, the optimal wind-solar ratio was determined, leading to a monthly profit increase of over 39% with minimal energy curtailment.
The share of electricity generation from Variable Renewable Energy Sources (VRES) has increased over the last 20 years. Despite promoting the decarbonization of the energy mix, these sources bring negative characteristics to the energy mix, such as power ramps, load mismatch, unpredictability, and fluctuation. One of the ways to mitigate these characteristics is the hybridization of power plants. This paper evaluates the benefits of hybridizing a plant using an AI-based methodology for optimizing the wind-solar ratio based on the Brazilian regulatory system. For this study, the hybrid plant was modeled using data collected over a period of 10 months. The measurements were obtained using two wind profilers (LIDAR and SODAR) and a sun tracker (Solys 2) as part of the EOSOLAR R&D project conducted in the state of Maranhao, Brazil. After the power plant modeling, a Genetic Algorithm (GA) was used to determine the optimal wind-solar ratio, considering costs with transmission systems. The algorithm achieved a monthly profit increase of more than 39% with an energy curtailment inferior to 1%, which indicates economic complementarity. Later, the same methodology was also applied to verify the wind-solar ratio's sensitivity to solar energy pricing. The results show that a price increase of 15% would change the power plant's optimal configuration.

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