STOCHASTIC PROGRAMMABLE PARADIGM OF QUALITY CONTROL MANAGEMENT IN MULTI-AGENT SYSTEMS
Year 2022,
Volume: 6 Issue: 2, 157 - 161, 30.12.2022
Karlygash Alibekkyzy
Abstract
The article aims to develop a methodology for quantitative assessment and forecasting of the quality of decision-making in organizational and technical systems under the conditions of uncertainty of control agents. A stochastic model for predicting the reliability of control results and decision-making risks under the uncertainty of model agents was developed. The paper proposes a method for aggregating system structural uncertainties of the control and measurement process on the example of robust multi-aspect. The proposed mathematical application implements a multi-agent approach to solving the general problem of evaluating the robustness of control according to the criteria of «producer risk» and «consumer risk». For the purposes of modeling, such branches of mathematics and methods as probability theory and mathematical statistics, regression and correlation analysis, expert evaluation methods, simulation and structural-functional modeling, and agent-based approach are used.
A probabilistic model has been developed to assess and predict the reliability of control and decision-making risks under the uncertainty of system agents. The novelty of the proposed model consists in taking into account the statistical nature of normative values. The proposed mathematical application implements a dual method for solving the general problem of assessing the quality of the control process by the magnitude of risks in the decision-making system. In the first case, the problem of quantitative risk assessment is solved for given statistical characteristics of control agents, and in the second case, the necessary measurement accuracy is determined for given uncertainties and risk levels in the control system.
Supporting Institution
D. Serikbayev East Kazakhstan Technical University
Thanks
The article was performed within the framework of the project of grant funding for fundamental and applied scientific research of young doctoral scientists under the project "Young Scientist" of the Ministry of Education and Science of the Republic of Kazakhstan for 2022-2024. IRN: AP14972524 - "Development of VLC technologies in driving unmanned vehicles".
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