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DEEPSO publications

Papers describing the applicarion of DEEPSO

PMAPS 2014, Durham, UK - DEEPSO and FACTS location Copyright IEEE

This paper presents a new stochastic programming model for PAR/PST definition and location in a network with a high penetration of wind power, with probabilistic representation, to maximize wind power penetration. It also presents a new optimization meta-heuristic, denoted DEEPSO, which is a variant of EPSO, the Evolutionary Particle Swarm Optimization method, borrowing the concept of rough gradient from Differential Evolution algorithms. A test case is solved in an IEEE test system. The performance of DEEPSO is shown to be superior to EPSO in this complex problem.

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BRICS-CCI, Porto de Galinhas (PE), Brazil, 8-11 September 2013 Copyright IEEE

This paper explores, with numerical case studies, the performance of an optimization algorithm that is a variant of EPSO, the Evolutionary Particle Swarm Optimization method. EPSO is already a hybrid approach that may be seen as a PSO with self-adaptive weights or an Evolutionary Programming approach with a self-adaptive recombination operator. The new hybrid DEEPSO retains the self-adaptive properties of EPSO but borrows the concept of rough gradient from Differential Evolution algorithms. The performance of DEEPSO is compared to a well-performing EPSO algorithm in the optimization of problems of the fixed cost type, showing consistently better results in the cases presented.

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IEEE Swarm Optimization Sysmposium, Indianapolis (Indiana), USA, May 2006

This paper presents some new ideas to improve the performance of EPSO (Evolutionary Particle Swarm Optimization). It discusses a Stochastic Star communication scheme and differential dEPSO. The paper presents results in a didactic Unit Commitment/Generator Scheduling Power System problem and results of a competition among algorithms in an intelligent agent platform for Energy Retail Market simulation where EPSO comes out as the winner algorithm. [this is not DEEPSO but a preliminary hybrid of DE with EPSO - interesting, though]

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