Efficient use of the Generators for the Environmental Economic Dispatch from the energy system, including solar photovoltaic generation
Keywords:Economic Emission Load Dispatch, Power Plants, Photovoltaic, Ant Lion Algorithm
The classic Economic Dispatch (ED) problem considers only the cost of power generation by thermal generators, often disregarding the safety parameters of the electrical network, environmental costs and especially the importance of predictive maintenance of the generators, when considering environmental costs in the optimization of ED this becomes a multi-objective problem Environmental Economic Dispatch (EED). Considering the global pressure to reduce emissions of pollutants in the atmosphere and environmental sustainability, incorporating the generation of Renewable Energies (RE) or Green Energy in the electricity grid is indispensable. Solar energy is becoming an important part of the power generation portfolio in many regions due to the fast decline in its costs and political incentives that favor the generation of clean energy sources. This article uses the Ant Lion Optimizer (ALO) method to solve the problem and EED restricted to the grid in a hybrid system (thermoelectric and photovoltaic). The results of the optimization problem were simulated in MATLAB. This research included 01 thermoelectric with 06 generators and 13 solar plants.
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Copyright (c) 2021 Eliton Smith dos Santos, Marcus Vinícius Alves Nunes, Jorge de Almeida Brito Júnior, Manoel Henrique Reis Nascimento, Jandecy Cabral Leite, David Barbosa de Alencar, Carlos Alberto Oliveira de Freitas
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