2022
DOI: 10.48550/arxiv.2207.09288
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Expert Elicitation and Data Noise Learning for Material Flow Analysis using Bayesian Inference

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 c… Show more

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“…Bayesian modeling has already been adopted in the literature to predict demand under uncertainty for other systems such as electricity (Wang et al, 2017) and water (Zhang et al, 2019). Bayesian approaches have also been used to reduce uncertainty in material flow analyses when little data are available (Dong et al, 2022;Lupton & Allwood, 2018). In these instances, Bayesian techniques allowed a more informed decision-making by reducing uncertainty while accounting for spatial variation.…”
Section: Introductionmentioning
confidence: 99%
“…Bayesian modeling has already been adopted in the literature to predict demand under uncertainty for other systems such as electricity (Wang et al, 2017) and water (Zhang et al, 2019). Bayesian approaches have also been used to reduce uncertainty in material flow analyses when little data are available (Dong et al, 2022;Lupton & Allwood, 2018). In these instances, Bayesian techniques allowed a more informed decision-making by reducing uncertainty while accounting for spatial variation.…”
Section: Introductionmentioning
confidence: 99%