The paper studies the problem of complex safety in personal area network and local area network in the Internet of Things project's boundaries. The electromagnetic safety analysis of various wired, wireless and fiber-optics technologies have realized by statistical simulation with applying the spatial analogue of the Huygens- Kirchhoff principle. The model of equivalent radiator for estimation of Internet of Things objects safety is offered. The simulation results of the statistical model in the form of histograms of the field strengths levels of the electric E-field and magnetic H-field, their phase and polarization characteristics must be interpreted and adapted in relation to the problems of specific engineering. Recommendations for the selection of personal area network and local area network elements are given.
The paper presents results of statistical simulation (SS) of a distributed random antenna (DRA) using the triad-cluster method (TCM) with a basic element in the form of a triad elementary radiator (TER) and the spatial analogue of the Huygens-Kirchhoff principle. Ways of solving internal and external problems, including the formulation of the initial conditions and the principles of studying characteristics of the electric and magnetic field strength vectors for TCMmodels of DRA are considered. The presented results of DRA study demonstrate the statistical characteristics (histograms of levels) of the E-field and the H-field strengths, which make the decision maker (DM) possible to understand and reproduce the physical processes that accompany formation of the EMF-channel of confidential information leakage via DRA.
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