预测基础设施LCC、LCA和S-LCA中的不确定性:一个系统的、上下文感知的早期识别框架

IF 11.2 1区 社会学 Q1 ENVIRONMENTAL STUDIES
Andrea Vargas-Farias, João Santos, Irina Stipanovic, Andreas Hartmann
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引用次数: 0

摘要

不确定性破坏了基础设施资产管理(IAM)中生命周期成本(LCC)、生命周期评估(LCA)和社会生命周期评估(S-LCA)的可靠性。存在许多不确定性分析的方法,但是从业者通常缺乏系统的指导来预测不确定性将如何在具体评估中展开,从而如何管理它们。我们提出了一个先发制人的框架,将不确定性分析锚定在产品系统、过程和流的共享建模结构中,使其在三种方法之间可转移。该框架通过三个分析指标(实例数、强度水平和预期需求)以及11个基础设施特定维度将评估上下文与不确定性联系起来。将这些维度映射到IAM决策层面,说明了在嵌入个人研究的评估环境中不确定性是如何升级的。从业者的检查表将框架转换为早期的不确定性分析工具,指导分析人员在最重要的地方进行严格的建模和量化。讨论强调了各维度之间的关键相互依赖性,并确定了作为不确定性的主要驱动因素的潜在需求。最终,通过预先明确不确定性概要,框架促进了相称的、透明的和上下文响应的不确定性分析实践。论文最后强调,未来需要研究特定于方法学的不确定性建模和量化方法,特别是s - lca,以及如何正式和明确地将它们的使用与不同的不确定性概况联系起来,以支持设计从一开始就考虑个人不确定性需求的LCT研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Anticipating uncertainty in infrastructure LCC, LCA, and S-LCA: A systematic, context-aware early identification framework

Anticipating uncertainty in infrastructure LCC, LCA, and S-LCA: A systematic, context-aware early identification framework
Uncertainty undermines the reliability of Life Cycle Costing (LCC), Life Cycle Assessment (LCA), and Social Life Cycle Assessment (S-LCA) in Infrastructure Asset Management (IAM). Many methods for uncertainty analysis exist, but practitioners often lack systematic guidance to anticipate how uncertainties will unfold in specific assessments and thereby how to manage them. We propose a pre-emptive framework that anchors uncertainty analysis in the shared modelling structure of product systems, processes, and flows, making it transferable across the three methodologies. The framework links assessment context to uncertainty through three profiling indicators—instance count, intensity level, and prospective needs—and eleven infrastructure-specific dimensions that shape them. Mapping these dimensions across IAM decision-making levels illustrates how uncertainty escalates in the assessment contexts in which individual studies are embedded. A practitioner's checklist translates the framework into an early uncertainty profiling tool, guiding analysts to target rigorous modelling and quantification where it matters most. The discussion highlights the critical interdependencies between dimensions and identifies prospective needs as the dominant driver of uncertainty. Ultimately, by making uncertainty profiles explicit up front, the framework fosters proportionate, transparent, and context-responsive uncertainty analysis practices. The paper concludes by underscoring the need for future research into methodology-specific uncertainty modelling and quantification methods—especially for S-LCA—and how to formally and explicitly link their use to different uncertainty profiles to support designing LCT studies that account for individual uncertainty needs from the start.
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来源期刊
CiteScore
12.60
自引率
10.10%
发文量
200
审稿时长
33 days
期刊介绍: Environmental Impact Assessment Review is an interdisciplinary journal that serves a global audience of practitioners, policymakers, and academics involved in assessing the environmental impact of policies, projects, processes, and products. The journal focuses on innovative theory and practice in environmental impact assessment (EIA). Papers are expected to present innovative ideas, be topical, and coherent. The journal emphasizes concepts, methods, techniques, approaches, and systems related to EIA theory and practice.
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