Supervised machine learning with regression for the IRT-T reactor cooling system

Bibliographic Details
Parent link:ITM Web of Conferences.— .— Les Ulis: EDP Sciences
Vol. 59 : II International Workshop “Hybrid Methods of Modeling and Optimization in Complex Systems” (HMMOCS-II 2023).— 2024.— Article number 03007, 10 p.
Main Author: Kublinsky M. K. Maksym Konstantinovich
Corporate Author: National Research Tomsk Polytechnic University
Other Authors: Smolnikov N. V. Nikita Viktorovich, Naymushin A. G. Artem Georgievich
Summary:Title screen
The purpose of this study is to create a machine learning model for the IRT-T reactor cooling system, which can estimate and predict the temperature difference in the secondary circuit. To do this, data was downloaded from the SCADA system, then an application was developed for converting and preprocessing this data. Then regression and classification models were constructed that evaluated the efficiency of the cooling system and its ability to predict changes in the temperature drop on heat exchangers. The main technical characteristics of the IRT-T reactor include a thermal power of 6 MW, the use of UO2 nuclear fuel in an aluminum matrix with an enrichment of 90.1%, a coolant in the form of desalinated water, tubular square-section fuel rods with external cooling, the fuel element shell material is SAV-1 alloy, and the use of five 5 IRT-1000 type heat exchangers with a total area of heat exchange of 1000 m2
Текстовый файл
Published: 2024
Series:Data Mining, Machine Learning and Patern Recognition
Subjects:
Online Access:https://doi.org/10.1051/itmconf/20245903007
Format: Electronic Book Chapter
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=672529