Improvement of Firefly Algorithm using Particle Swarm Optimization and Gravitational Search Algorithm
Evolutionary algorithms are among the most powerful algorithms for optimization, Firefly algorithm (FA) is one of them that inspired by nature. It is an easily implementable, robust, simple and flexible technique. On the other hand, Integration of this algorithm with other algorithms, can be improved the performance of FA. Particle Swarm Optimization (PSO) and Gravitational Search Algorithm (GSA) are suitable and effective for integration with FA. Some method and operation in GSA and PSO can help to FA for fast and smart searching. In one version of the Gravitational Search Algorithm (GSA), selecting the K-best particles with bigger mass, and examining its effect on other masses has a great help for achieving the faster and more accurate in optimal answer. As well as, in Particle Swarm Optimization (PSO), the candidate answers for solving optimization problem, are guided by local best position and global best position to achieving optimal answer. These operators and their combination with the firefly algorithm (FA) can improve the performance of the search algorithm. This paper intends to provide models for improvement firefly algorithm using GSA and PSO operation. For this purpose, 5 scenarios are defined and then, their models are simulated using MATLAB software. Finally, by reviewing the results, It is shown that the performance of introduced models are better than the standard firefly algorithm.
-
Scheduling of Charging and Discharging Electric Vehicles and Selection of Parking Area with the aim of Maximizing the Profitability at the Lowest Network Losses with the presence of Important Loads
Dr *
Iranian Electric Industry Journal of Quality and Productivity, -
Scheduling Parking Lot Area and Charging and Discharging of Electric Vehicles in order to Improve the Reliability of Smart Grids
M. Tourani, M. R. Aghaebrahimi *, H. R. Najafi
Journal of Electrical Engineering,