Comparison Between Multilayer Feedforward Neural Networks and a Radial Basis Function Network to Detect and Locate Leaks in Pipelines Transporting Gas

@inproceedings{Santos2013ComparisonBM,
  title={Comparison Between Multilayer Feedforward Neural Networks and a Radial Basis Function Network to Detect and Locate Leaks in Pipelines Transporting Gas},
  author={Rejane Barbosa Santos and Markus Ruppb and Santiago J. Bonzi and Ana Maria F. Filetia},
  year={2013}
}
Comparison Between Multilayer Feedforward Neural Networks and a Radial Basis Function Network to Detect and Locate Leaks in Pipelines Transporting Gas Rejane B. Santos a *, Markus Rupp, Santiago J. Bonzi , Ana Maria F. Fileti School of Chemical Engineering, Department of Chemical Systems Engineering, Univerty of Campinas (UNICAMP), 13083-970, Campinas/SP, Brazil. School VMechanical Engineering and Transport Systems, Technical University of Berlin, Straße des 17. Juni 135, 10623 Berlin, Germany… CONTINUE READING

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