Remote Sensing for Environmental Monitoring. Complex Modeling

  • Victor F. MochalovEmail author
  • Andrei V. Markov
  • Olga V. Grigorieva
  • Denis V. Zhukov
  • Olga V. Brovkina
  • Ilya Y. Pimanov
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 466)


In this paper the concept of integrated modeling and simulation of the processes of the Complex Technical–Organizational System (CTOS) is presented. Practical directions of the remote sensing for environmental monitoring of the protected area are proposed by the authors. Methodical basis of the integrated modeling and simulation, the process of CTOS operation, and the technology of the remote sensing for environmental monitoring are considered. Results of CTOS remote sensing are shown to adapt models to a changing environment.


Complex technical organizational system Structure dynamic control Parametric and structural adaptation of models Remote sensing for environmental monitoring Decision support systems 


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Authors and Affiliations

  • Victor F. Mochalov
    • 1
    Email author
  • Andrei V. Markov
    • 1
  • Olga V. Grigorieva
    • 1
  • Denis V. Zhukov
    • 1
  • Olga V. Brovkina
    • 2
  • Ilya Y. Pimanov
    • 3
  1. 1.Mozhaisky Aerospace AcademySaint PetersburgRussia
  2. 2.Global Change Research Centre Academy of Science of the Czech RepublicPragueCzech Republic
  3. 3.Saint Petersburg Institute of Informatics and Automation (SPIIRAS)Russian Academy of ScienceSaint PetersburgRussia

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