• Title of article

    A new model for threat assessment in data fusion based on fuzzy evidence theory

  • Author/Authors

    Azimirad , Ehsan Eqbal Lahoori Institute of Higher Education - Mashhad , Iran , Haddadnia, Javad Electrical and Computer Engine ering Department - Hakim Sabzevari University - Sabzevar, Iran

  • Pages
    11
  • From page
    54
  • To page
    64
  • Abstract
    In this paper a new method for threat assessment is proposed based on Fuzzy Evidence Theory. The most widely classical and intelligent methods used for threat assessment systems will be Evidence or Dempster Shafer and Fuzzy Sets Theories. The disadvantage of both methods is failing to calculate of uncertainty in the data from the sensors and the poor reliability of system. To fix this flaw in the system of dynamic targets threat assessment is proposed fuzzy evidence theory as a combination of both Dempster- Shafer and Fuzzy Sets Theories. In this model, the uncertainty in input data from the sensors and the whole system is measured using the best measure of the uncertainty. Also, a comprehensive comparison is done between the uncertainty of fuzzy model and fuzzy- evidence model (proposed method). This method applied to a real time scenario for air threat assessment. The simulation results show that this method is reasonable, effective, accuracy and reliability.
  • Keywords
    Imperfect Information , Uncertainty Measures , Dempster- Shaffer Theory , Fuzzy Evidence Theory , Threat Assessment
  • Journal title
    International Journal of Advances in Intelligent Informatics
  • Serial Year
    2016
  • Record number

    2601907