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Gaussian Processes for radiation dose prediction in nuclear power plant reactors

Sergio A. Balanya, Daniel Ramos, Pablo Ramirez-Hereza, Doroteo T. Toledano, Joaquín González-Rodríguez, Alicia Ariza-Velazquez, Josip Vidal Orlovac, Nuria Doncel Gutiérrez

2022Chemometrics and Intelligent Laboratory Systems15 citationsDOIOpen Access PDF

Abstract

In nuclear power plants, there are high-exposure jobs, like refuelling and maintenance, that require getting close to the reactor between operation cycles. Therefore, reducing radiation dose during these periods is of paramount importance regarding safety regulations. While there are some manipulable variables, like levels of certain corrosion products, that can influence the final level of radiation dose, there is no way to determine it in a principled way. In this work, we propose to use Machine Learning to predict the radiation dose in the reactor at the cycle end based on information available during the cycle operation. In particular, we use a Gaussian Process to model the relation between cobalt radioisotopes (a certain kind of corrosion product) and radiation dose levels. Gaussian Processes acknowledge the uncertainty on their predictions, a desirable property considering the high-risk nature of the present application. We report experiments on real data gathered from five different power plants in Spain. Results show that these models can be used to estimate the future values of radiation dose in a data-driven way. Moreover, there are tools based on these models currently in development for their application in power plants.

Topics & Concepts

RadiationNuclear powerComputer scienceKrigingGaussian processGaussianNuclear power plantNuclear engineeringProcess (computing)Work (physics)Environmental scienceReliability engineeringPhysicsMechanical engineeringEngineeringNuclear physicsMachine learningOperating systemQuantum mechanicsGaussian Processes and Bayesian InferenceFault Detection and Control SystemsNuclear reactor physics and engineering