Expert Elicitation and Data Noise Learning for Material Flow Analysis using Bayesian Inference
Jiayuan Dong, Jiankan Liao, Xun Huan, Daniel Cooper

TL;DR
This paper introduces Bayesian methods with expert elicitation to better quantify and update uncertainties in material flow analysis, demonstrated through a case study on U.S. steel flows.
Contribution
It develops an expert elicitation procedure for MFA priors and a method to learn data noise simultaneously, enhancing uncertainty quantification in MFA.
Findings
Reduced parametric uncertainty with data integration
Modest reduction in data noise uncertainty
Multi-year data improves inference robustness
Abstract
Bayesian inference allows the transparent communication of uncertainty in material flow analyses (MFAs), and a systematic update of uncertainty as new data become available. However, the method is undermined by the difficultly of defining proper priors for the MFA parameters and quantifying the noise in the collected data. We start to address these issues by first deriving and implementing an expert elicitation procedure suitable for generating MFA parameter priors. Second, we propose to learn the data noise concurrent with the parametric uncertainty. These methods are demonstrated using a case study on the 2012 U.S. steel flow. Eight experts are interviewed to elicit distributions on steel flow uncertainty from raw materials to intermediate goods. The experts' distributions are combined and weighted according to the expertise demonstrated in response to seeding questions. These…
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Taxonomy
TopicsMetallurgical Processes and Thermodynamics · Mineral Processing and Grinding
