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Radioactive waste sampling for characterisation - A Bayesian upgrade

  • Pyke, Caroline K. (National Nuclear Laboratory) ;
  • Hiller, Peter J. (National Nuclear Laboratory) ;
  • Koma, Yoshikazu (Japan Atomic Energy Agency) ;
  • Ohki, Keiichi (Japan Atomic Energy Agency)
  • Received : 2021.01.09
  • Accepted : 2021.07.27
  • Published : 2022.01.25

Abstract

Presented in this paper is a methodology for combining a Bayesian statistical approach with Data Quality Objectives (a structured decision-making method) to provide increased levels of confidence in analytical data when approaching a waste boundary. Development of sampling and analysis plans for the characterisation of radioactive waste often use a simple, one pass statistical approach as underpinning for the sampling schedule. Using a Bayesian statistical approach introduces the concept of Prior information giving an adaptive sample strategy based on previous knowledge. This aligns more closely with the iterative approach demanded of the most commonly used structured decision-making tool in this area (Data Quality Objectives) and the potential to provide a more fully underpinned justification than the more traditional statistical approach. The approach described has been developed in a UK regulatory context but is translated to a waste stream from the Fukushima Daiichi Nuclear Power Station to demonstrate how the methodology can be applied in this context to support decision making regarding the ultimate disposal option for radioactive waste in a more global context.

Keywords

Acknowledgement

The authors wish to thank Amanda Lindsay (NNL) who complied the data, kindly provided by JAEA, into the data set used to develop this approach. This paper includes a part of the results obtained in the work of "research and development for processing and disposal of solids waste" based on the budget of countermeasures for decommissioning and contaminated water treatment, which was entrusted to International Research Institute for Nuclear Decommissioning (IRID) from Ministry of Economy, Trade and Industry (METI), Japan.

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