Journal of
Engineering and Technology Research

  • Abbreviation: J. Eng. Technol. Res.
  • Language: English
  • ISSN: 2006-9790
  • DOI: 10.5897/JETR
  • Start Year: 2009
  • Published Articles: 184

Full Length Research Paper

PSO-ANN’s based suspended sediment concentration in Ksob basin, Algeria

Baazi Houria*, Kalla Mahdi and Tebbi Fatima Zohra
Natural Hazards and Territory Planning Laboratory (LRNAT), Hadj Lakhdar University, Batna (UHLB), Algeria.
Email: [email protected]

  •  Received: 19 October 2014
  •  Accepted: 24 November 2014
  •  Published: 28 December 2014

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