Complex Matrix Model for Data and Knowledge Representation for Road-Climatic Zoning of the Territories and the Results of Its Approbation

نویسندگان

  • A. Yankovskaya
  • A. Sukhorukov
چکیده

Complex matrix model of data and knowledge representation is proposed for solution of a road-climatic zoning of the territories problem using an intelligent system. This model consists of: 1) an extended matrix model, which includes extended description and distinguishing matrices (the extension is realized by the way of including of additional columns into the description matrix) for the territories under investigation, 2) description and distinguishing matrices of highly qualified experts’ knowledge and 3) a partial matrix model, consisting of an extended description matrix of the territories under investigation (recognition). For the first time original approbation results of intelligent data and knowledge analysis on the base of intelligent instrumental software IMSLOG are given. The system is designed and developed in intelligent systems laboratory of the Tomsk State University of Architecture and Building to solve the problem of road-climatic zoning.

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تاریخ انتشار 2017