RESEARCH INTO THE PROBLEMS OF FUNCTIONING OF INTELLIGENT NETWORKS USING THE INTERNET OF THINGS

DOI: 10.31673/2786-8362.2025.019950

Authors

  • Н. В. Галаган, (Halahan N.V.) State University of Information and Communication Technologies, Kyiv
  • М. В. Гладка, (Gladka M.V.) Taras Shevchenko National University of Kyiv, Kyiv, Ukraine.
  • І. І. Борисенко, (Borysenko I.I.) State University of Information and Communication Technologies, Kyiv
  • Н. В. Блаженний, (Blazhennyi N.V.) State University of Information and Communication Technologies, Kyiv

DOI:

https://doi.org/10.31673/2786-8362.2025.019950

Abstract

The article is devoted to the
consideration of the Internet of Things technology, where it is necessary to first of all evaluate the basic
principles, key tasks, as well as the most modern approaches and solutions.
The article proves that the Internet of Things is associated with a physical action or event. It forms a
response to a real-world factor. At the same time, a single sensor can generate a huge amount of data, for
example, an acoustic sensor for preventive equipment inspection. In other cases, a single bit of data is
enough to convey important information about the state of the system. Sensor systems have evolved and,
in accordance with Moore's law, have shrunk to sub-nanometer sizes and become significantly cheaper.
This is what predicts that many devices will be connected to the Internet of Things, and this is why these
predictions will come true.
Therefore, when considering the Internet of Things, it is necessary to consider microelectromechanical
systems, sensors and other types of low-cost edge devices and their electrophysical properties. This also
applies to the power systems needed to power the edge devices.
Keywords: sensors, differentiated privacy, Internet of Things, information system, privacy protection

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Published

2025-06-21

Issue

Section

Articles