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Streamlined life cycle assessment of carbon footprint of a tourist food menu using probabilistic underspecification methodology

机译:使用概率缺点方法流入旅游食品菜单的碳足迹的生命周期评估

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We proposed a methodology based on life cycle assessment streamlining techniques to estimate the carbon footprint (CF) of a meal. The methodology was applied to estimate the meal CF of twenty-four people on a 4-days Galapagos Island tour using over three hundred existing Life Cycle Analysis (LCA) results in the food industry. In spite of the abundance of food LCA studies, there were very little food CF studies on food produced in South America or Ecuador. By combining established and novel life cycle assessment streamlining techniques, we demonstrated how to (a) calculate the uncertainty associated with the use of surrogate CF data, (b) carry out a preliminary carbon footprint calculation using surrogate data to identify a subset of components that contributes the greatest CFs to the product, which we called the set of interest (SOI) and, (c) greatly reduce the uncertainty in the CF results using only exact CFs for the SOI in addition to the surrogate CFs of the other food items. In general, this methodology can systematically cut down the time and resources that are needed to collect all the emission data in the production of food in a meal, but to focus on only a small handful of food items that impact the total CF, provided that the surrogate CF database is large enough to include the true CF.
机译:我们提出了一种基于生命周期评估的方法,精简技术来估计膳食的碳足迹(CF)。该方法应用于估算二十四人的膳食在4天的加拉帕戈斯岛屿巡回赛中,使用了超过三百人的生命周期分析(LCA)导致食品行业。尽管有丰富的食物LCA研究,但南美洲或厄瓜多尔生产的食物有很少的食物CF研究。通过组合建立和新的生命周期评估精简技术,我们证明了如何(a)计算与使用代理CF数据相关联的不确定性,(b)使用代理数据执行初步碳足迹计算,以确定组件的子集为我们称之为感兴趣的产品(SOI)提供最大的CFS(SOI),而且一般而言,这种方法可以系统地减少了在膳食中生产食物中所有排放数据所需的时间和资源,而是专注于只有影响总CF的小型食品,就提供了这一点代理CF数据库足够大以包括真正的CF.

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