Framework for modelling data uncertainty in life cycle inventories |
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Authors: | Mark A. J. Huijbregts Gregory Norris Rolf Bretz Andreas Ciroth Benoit Maurice Bo von Bahr Bo Weidema Angeline S. H. de Beaufort |
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Affiliation: | 1. Institute for Biodiversity and Ecosystem Dynamics, University of Amsterdam, Nieuwe Achtergracht 166, NL-1018, WV Amsterdam, The Netherlands 2. Department of Environmental Sciences, Nijmegen University, Toernooiveld 1, NL-6500, GL Nijmegen, The Netherlands 3. 147 Bauneg Hill Rd., Suite 200, ME 03906, Sylvatica, North Berwick, USA 4. Ciba Specialty Chemicals Inc, K-1370.A.522, POB, CH-4002, Basel, Switzerland 5. Institut fuer Technischen Umweltschutz, Abfallvermeidung und Sekundaerrohstoff-wirtschaft, Technical University Berlin, Strasse des 17. Juni 135, D-10623, Berlin, Germany 6. Electricité De France, Research and Development Division, Energy Systems Branch, Site des Renardières, Ecuelles F-77 818, Moret sur Loing, France 7. CPM - Centre for Environmental Assessment of Product and Material Systems Chalmers University of Technology, S-412 96, G?teborg, Sweden 8. 2.-0 LCA consultants, Borgergade 6, Copenhagen, Denmark 9. FEFCO-G0-KI, Graeterweg 13, NL-6071 ND, Swalmen, The Netherlands
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Abstract: | Modelling data uncertainty is not common practice in life cycle inventories (LCI), although different techniques are available for estimating and expressing uncertainties, and for propagating the uncertainties to the final model results. To clarify and stimulate the use of data uncertainty assessments in common LCI practice, the SETAC working group ‘Data Availability and Quality’ presents a framework for data uncertainty assessment in LCI. Data uncertainty is divided in two categories: (1) lack of data, further specified as complete lack of data (data gaps) and a lack of representative data, and (2) data inaccuracy. Filling data gaps can be done by input-output modelling, using information for similar products or the main ingredients of a product, and applying the law of mass conservation. Lack of temporal, geographical and further technological correlation between the data used and needed may be accounted for by applying uncertainty factors to the non-representative data. Stochastic modelling, which can be performed by Monte Carlo simulation, is a promising technique to deal with data inaccuracy in LCIs. |
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Keywords: | Data gaps data inaccuracy data uncertainty unrepresentative data general framework life cycle inventory (LCI) Monte Carlo simulation sensitivity analysis SETAC LCA-WG Data Availability Data Quality uncertainty assessment uncertainty importance |
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