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Journal Dynamics of Complex Systems - XXI century №4 for 2023 г.
Article in number:
Risk Management in the Socio-Cyberphysical System based on monitoring the actual number of employees
Type of article: scientific article
DOI: 10.18127/j19997493-202304-08
UDC: 004.832.28
Authors:

Mudar Kivan1

1 Bauman Moscow State Technical University (National Research-Tel University) (Moscow, Russia)
1 moudarkiwan@gmail.com

Abstract:

Increasing complexity in high-tech systems leads to the emergence of new types of failures and requirements for ensuring their safety. The lack of skills in the staff is one of the most important reasons for the figures and the problems faced by these systems.

Purpose – improve the efficiency of recruitment management in the socio-cyberphysical system in order to control the actual number of employees and their skills to reduce production risks.

The method of comprehensive safety assessment is used in the work of a construction company, which served as an example of a socio-cyberphysical system. As a result, it was established that the company is in a situation of medium risk. Based on the analysis of the obtained data, recommendations were proposed to restore the company to a good level (low risk) by monitoring the actual number of employees in the company.

Obtaining optimal parameters of the company's policy on maintaining the target personnel reserve. As a result, an acute shortage of staff or the necessary skills of employees is avoided, which negatively affects the system.

Pages: 75-82
For citation

Kivan M. Risk Management in the Socio-Cyberphysical System based on monitoring the actual number of employees. Dynamics of complex systems. 2023. V. 17. № 4. P. 75−82. DOI: 10.18127/j19997493-202304-08 (in Russian)

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Date of receipt: 28.11.2023
Approved after review: 12.12.2023
Accepted for publication: 21.12.2023