Implementation Of A Bayesian Linear Regression Framework For Nuclear Prognostics

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Published Jul 5, 2016
Omer Panni Graeme West Victoria Catterson Stephen McArthur Dongfeng Shi Ieuan Mogridge

Abstract

Steam turbines are an important asset of nuclear power plants (NPPs), and are required to operate reliably and efficiently. Unplanned outages have a significant impact on the ability of the plant to generate electricity. Therefore, predictive and proactive maintenance which can avoid unplanned outages has the potential to reduce operating costs while increasing the reliability and availability of the plant. A case study from the data of an operational steam turbine of a NPP in the UK was used for the implementation of a Bayesian Linear Regression (BLR) framework. An
appropriate model for the deterioration under study is selected. The BLR framework was applied as a prognostic technique in order to calculate the remaining useful life (RUL). Results show that the accuracy of the technique varies due to the nature of the data that is utilised to estimate the model parameters.

How to Cite

Panni, O., West, G., Catterson, V., McArthur, S., Shi, D., & Mogridge, I. (2016). Implementation Of A Bayesian Linear Regression Framework For Nuclear Prognostics. PHM Society European Conference, 3(1). https://doi.org/10.36001/phme.2016.v3i1.1617
Abstract 448 | PDF Downloads 131

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Keywords

Bayesian framework, Nuclear Power Plant Prognostics

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Section
Technical Papers

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