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Sensitivity of the LCA allocation procedure for BFS recycled into pavement structures

机译:LCA分配程序对回收到路面结构中的BFS的敏感性

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摘要

The purpose of this paper is twofold: to investigate the problems involved when performing an environmental assessment of various pavements structures and to establish the method applied to solutions proposed by official French guidelines. This assessment will be performed by employing the life cycle assessment (LCA) methodology specifically adapted to road pavements through a parametric environmental evaluation tool developed by LCPC: ERM (elementary road modulus). The paper will also detail the assessment methodology using this same ERM method. The issues of resources conservation and waste allocation will be examined for the case of blast furnace slag (BFS) recycling. Special focus will be placed on the sensitivity of environmental indicators as regards to the waste allocation procedure implemented in the ERM. Two distinct mass ratios (0% and 20%) of steel production have been assigned to BFS and tested on indicators results as hypotheses HI and H2, respectively. Classical indicators have been calculated using a simplified model to allocate output flows into several impact categories. Results show that the structure using BFS contributes to saving binder extracted from natural resources, yet also consumes a larger mass of natural aggregates. All indicators except for toxicity were found to be very sensitive to the choice of H1 or H2 hypotheses.
机译:本文的目的是双重的:研究对各种路面结构进行环境评估时涉及的问题,并建立适用于法国官方指南提出的解决方案的方法。通过由LCPC开发的参数化环境评估工具ERM(基本道路模量),采用专门针对道路路面的生命周期评估(LCA)方法进行评估。本文还将详细介绍使用相同ERM方法的评估方法。对于高炉矿渣(BFS)回收,将研究资源节约和废物分配问题。将特别关注环境指标对企业风险管理中实施的废物分配程序的敏感性。两种不同的钢铁生产质量比率(0%和20%)已分配给BFS,并分别根据假设HI和H2在指标结果上进行了测试。已使用简化模型计算经典指标,以将输出流量分配到几个影响类别中。结果表明,使用BFS的结构有助于节省从自然资源中提取的粘结剂,但同时也消耗了大量的天然骨料。发现除毒性以外的所有指标对H1或H2假设的选择非常敏感。

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