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File Relatorio_Cristina.pdf
This report presents preliminary results of the application of EPSO to test problems and to the wind power prediction problem (training a fuzzy inference ...
Image bandUE
Image BantPt
Page Funding
This project has been funded by FCT under project POSC/EEA-ESE/60980/2004
Page EPSO in the reactive power planning
Image Equa 1
Image flow
Image network
Image fitness
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Image Ev weights
Image Communication
Image Importance
Page Importance of communication probability
Page EPSO in energy retail market simulation on an intelligent agent platform (JADE)
Image Comparison
Image Retail
Page Comparison with PSO
File PSCC 2005, Belgium
File IEEE Swarm Intelligence Symposium 2006, Indianapolis (IN), USA
File SBSE 2008, Belo Horizonte, Brazil
File OEP 2007, Paris, France
File Stochastic star
This paper reports the results of the adoption of a probabilistically defined communication structure in a special algorithm coined as EPSO – Evolutionary ...
File Energy markets
This paper presents an overview of a simulation platform for studying the behavior of energy retail markets where multiple energies enter in competition. This ...
File Maintenance optimization
This paper propose an approach to multi-objective maintenance policy definition for electrical networks. Maximum asset performance is one of the major goals ...
File EPSO vs. Monte Carlo
This paper reports the application of a population based method (EPSO – Evolutionary Particle Swarm Optimization) to calculate power system reliability. ...
File Reactive Power Planning
Evolutionary Particle Swarm Optimization (EPSO) is a robust optimization algorithm belonging to evolutionary methods. EPSO borrows the movement rules from ...
File Wind-Hydro coordination
This paper reports the application of neural networks denoted “autoencoders” in order to reduce the dimension of the search space in complex optimization ...
File IEEE book.pdf
File Springer book.pdf