ALENCAR, M. R. B.; http://lattes.cnpq.br/2967371515747309; ALENCAR, Mariana Ribeiro Barros de.
Resumo:
A method for optimal location and sizing of photovoltaic generators in radial distribution
systems, based on the 2m+1 point estimation method (PEM), where m represents the
number of input random variables, and in the Adaptive Discrete Cuckoo Search (ADCS)
is presented. The ultimate objective is to minimize the net present value cost, including
annual energy losses. For that, the randomness of the generation and load demand is
considered. To calculate the power flow, the backward-forward sweep method is used. For
simplicity, the load is considered a Gaussian random variable. An improvement in the
way of calculating energy losses by combining the PEM with Sobol sequence sampling
is proposed. Therefore, Monte Carlo simulation is used as a comparison between the
traditional point estimate method and the proposed method. The correlation found to
exist between solar irradiance and ambient temperature is considered in the power flow
calculations. Copula theory is used to incorporate the correlation during the performed
Monte Carlo simulations. The proposed optimization algorithm, ADCS, is compared with
the Cuckoo Search (CS), genetic algorithm (GA), and particle swarm optimization (PSO).
From the initial tests, in which only one generator was inserted in the system, it was found
that considering the correlation between irradiance and ambient temperature is irrelevant
in the Monte Carlo simulations, however, it is important in the simulations using PEM. For
validation, the proposed method is applied to the IEEE 69-bus test system. The feasibility
of installing generators was verified, both by reducing total costs and the Levelized cost
of energy.