• Title of article

    Artificial Intelligence Based Approach for Identification of Current Transformer Saturation from Faults in Power Transformers

  • Author/Authors

    Moradi, A. R Department of Electrical and Computer Engineering - Semnan University, Semnan , Alinejad Beromi, Y Department of Electrical and Computer Engineering - Semnan University, Semnan , Kiani, K Department of Electrical and Computer Engineering - Semnan University, Semnan , Moravej, Z Department of Electrical and Computer Engineering - Semnan University, Semnan

  • Pages
    10
  • From page
    37
  • To page
    46
  • Abstract
    Protection systems have vital role in network reliability in short circuit mode and proper operating for relays. Current transformer often in transient and saturation under short circuit mode causes mal-operation of relays which will have undesirable effects. Therefore, proper and quick identification of Current transformer saturation is so important. In this paper, an Artificial Neural Network (ANN) which is trained by two different swarm based algorithms; Gravitational Search Algorithm (GSA) and Particle Swarm Optimization (PSO) have been used to discriminate between Current transformer saturation and fault currents in power transformers. In fact, GSA operates based on gravity law and in opposite of other swarm based algorithms, particles have identity and PSO is based on behaviors of bird flocking. Proposed approach has two general stages. In first step, obtained data from simulation have been processed and applied to an ANN, and then in second step, using training data considered ANN has been trained by GSA & PSO. Finally, a proposed technique has been compared with one of the common training approach which is called Genetic algorithm (GA).
  • Keywords
    Artificial neural network , Current transformer saturation , Genetic Algorithm , Gravitational Search Algorithm , Internal Faults , Particle Swarm Optimization , Power transformers
  • Journal title
    Astroparticle Physics
  • Serial Year
    2014
  • Record number

    2483191