A Tier-Wise Method for Evaluating Uncertainty in Life Cycle Assessment
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Publication Details
Author list: Mahmood, Awais; Varabuntoonvit, Viganda; Mungkalasiri, Jitti; Silalertruksa, Thapat; Gheewala, Shabbir H.;
Publisher: MDPI
Publication year: 2022
Volume number: 14
Issue number: 20
ISSN: 2071-1050
eISSN: 2071-1050
Languages: English-Great Britain (EN-GB)
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Abstract
As a decision support tool, life cycle assessment (LCA) is prone to multiple uncertainties associated with the data, model structures, and options offered to practitioners. Therefore, to make the results reliable, consideration of these uncertainties is imperative. Among the various classifications, parameter, scenario, and model uncertainty are widely reported and well-acknowledged uncertainty types in LCA. There are several techniques available to deal with these uncertainties; however, each strategy has its own pros and cons. Furthermore, just a few of the methods have been included in LCA software, which restricts their potential for wider application in LCA research. This paper offers a comprehensive framework that concurrently considers parameter, scenario, and model uncertainty. Moreover, practitioners may select multiple alternatives depending on their needs and available resources. Based on the availability of time, resources, and technical expertise three levels—basic, intermediate, and advanced—are suggested for uncertainty treatment. A qualitative method, including local sensitivity analysis, is part of the basic approach. Monte Carlo sampling and local sensitivity analysis, both of which are accessible in LCA software, are suggested at the intermediate level. Advanced sampling methods (such as Latin hypercube or Quasi-Monte Carlo sampling) with global sensitivity analysis are proposed for the advanced level. © 2022 by the authors.
Keywords
framework development