This article focuses on improving the information security of industrial enterprises through the automation of data transmission processes. As a solution, an autonomous unmanned aerial vehicle (UAV) equipped with three microcontrollers is proposed to handle ight control, data processing and transmission and information protection. The system utilises infrared data transmission channels, hardware encryption and a mechanism for the physical destruction of the storage medium, ensuring a high level of protection against cyberattacks and data breaches. The drone’s architecture is isolated from corporate networks and features mobility and autonomy, making it e ective in environments with limited infrastructure. The modular design of the device allows for adaptation to various application scenarios. The research results demonstrate that the proposed solution provides reliable and secure data transmission, enhancing the resilience of enterprises to modern cyber threats.
Идентификаторы и классификаторы
Modern production processes are increasingly dependent on automated control systems and data transmission (Borzov et al., 2024). Disruptions in this area, such as leaks of confidential information, cyber-attacks or system failures, can lead to serious consequences, including production downtime, financial losses, deterioration of the company’s reputation and even a threat to the physical safety of employees and equipment (Starchenkova, 2023). The InfoWatch Expert and Analytical Center reported that among all types of compromised information in the global industry, the share of trade secrets increased from 38.4% to 66.9% in 20231.
Список литературы
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The present paper develops an invariant ontology of strategic interaction in a sociotechnical system using game theory tools. In the course of the research, ontologies are considered tools for modelling sociotechnical systems, including tools for social and technical process integration. The demand for these tools derives from the need to integrate people into technical systems as equivalent and equal elements that exert both external and internal influence on the system. Such sociotechnical models have already been applied to describe enterprise information structures, but they lack a description of decision-making between the system elements within the strategic inter-action. As part of the solution to this problem, an ontology-based model of a sociotechnical system describing the interaction of both social and technical elements through game interaction is developed. Each of the participants in the interaction is described in terms of game theory, with the allocation of possible strategies and the corre-sponding winnings. Through the interactive entities within the game theory model, game interaction takes place between the participant and appropriate behaviour strategy selection. The model is a exible, scalable tool for building simulation models of sociotechnical systems. The results obtained will be tested when real sociotechnical systems are built, and the ontology will be re ned according to the results obtained.
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