Threat Modelling and Assessment Using Evidential Networks

نویسندگان

  • Alessio Benavoli
  • Branko Ristic
  • Alfonso Farina
  • Martin Oxenham
  • Luigi Chisci
چکیده

The paper develops an information fusion system that aims at supporting a commander’s decision making by providing an assessment of threat, that is an estimate of the extent to which an enemy platform poses a threat based on evidence about its intent and capability. Threat is modelled in the framework of the valuation-based system (VBS), by a network of entities and relationships between them. The uncertainties in the relationships are represented by belief functions as defined in the theory of evidence. Hence the resulting network for reasoning is referred to as an evidential network. Local computations in the evidential network are carried out by inward propagation on the underlying joint binary tree. This allows the dynamic nature of the external evidence, which drives the evidential network, to be taken into account by recomputing only the affected paths in the joint binary tree.

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تاریخ انتشار 2007