Abstract
The accident at the Chornobyl Nuclear Power Plant (ChNPP) in Ukraine in 1986 became one of the largest technological disasters in human history. During the accident cleanup, a special protective structure called the Shelter Object was built to isolate the destroyed reactor from the environment. However, the planned operational lifespan of the Shelter Object was only 30 years. Therefore, with the assistance of the international community, a new protective structure called the New Safe Confinement (NSC) was constructed and put into operation in 2019. The NSC is a large and complex system that relies on a significant number of various tools and subsystems to function. Due to temperature fluctuations and the influence of wind, hydraulic processes occur within the NSC, which can lead to the release of radioactive aerosols into the environment. The personnel of the NSC prevents these leaks, including through ventilation management. Considering the long planned operational term of the NSC, the development and improvement of information technologies for its process automation is a relevant task. The purpose of this paper is to develop a method for managing the ventilation system of the NSC based on neuro-fuzzy networks. An investigation of the current state of ventilation control in the NSC has been conducted, and automation tools for the process have been proposed. Using an adaptive neuro-fuzzy inference system (ANFIS) and statistical data on the NSC's operation, neuro-fuzzy models have been formed, which allows to calculate the expenses of the ventilation system using the Takagi-Sugeno method. The verification of the proposed approaches on a test data sample demonstrated sufficiently high accuracy of the calculations, confirming the potential practical utility in decision-making regarding NSC’s ventilation management. The results of this paper can be useful in the development of digital twins of the NSC for process management and personnel training.
Subject
Electrical and Electronic Engineering,Control and Systems Engineering
Reference14 articles.
1. Batiy V. G. et al.: Dynamics of radioactive aerosol concentration during the removal of fuel-containing materials from the Shelter object. Nuclear and Radiation Safet 4, 2015, 41-44.
2. Grieves M.: Virtually Intelligent Product Systems: Digital and Physical Twins. Complex Systems Engineering: Theory and Practice, 2019, 175-200.
3. Jang J. S. R.: ANFIS: Adaptive-Network-Based Fuzzy Inference System. IEEE Transactions on Systems, Man, and Cybernetics 23(3), 1993, 665-685.
4. Krasnov V. O. et al.: Shelter Object: 30 years after the accident. Institute for Problems of Nuclear Power Plants Safety, Chornobyl 2016.
5. Kratz B., Wieduwilt F., Saveliev M.: Pillars for Establishing a Durable and Future-Proof IT Architecture Maturing Along with the NSC: Approaches from Continuous Integration to Service Mesh. Mathematical Modeling and Simulation of Systems 344, 2022, 43-57.