Bayesian material flow analysis for systems with multiple levels of disaggregation and high dimensional data.

IF 4.9 3区 环境科学与生态学 Q2 ENGINEERING, ENVIRONMENTAL
Journal of Industrial Ecology Pub Date : 2024-12-01 Epub Date: 2024-09-30 DOI:10.1111/jiec.13550
Junyang Wang, Kolyan Ray, Pablo Brito-Parada, Yves Plancherel, Tom Bide, Joseph Mankelow, John Morley, Julia A Stegemann, Rupert Myers
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引用次数: 0

Abstract

Material flow analysis (MFA) is used to quantify and understand the life cycles of materials from production to end of use, which enables environmental, social, and economic impacts and interventions. MFA is challenging as available data are often limited and uncertain, leading to an under-determined system with an infinite number of possible stocks and flows values. Bayesian statistics is an effective way to address these challenges by principally incorporating domain knowledge, quantifying uncertainty in the data, and providing probabilities associated with model solutions. This paper presents a novel MFA methodology under the Bayesian framework. By relaxing the mass balance constraints, we improve the computational scalability and reliability of the posterior samples compared to existing Bayesian MFA methods. We propose a mass-based, child and parent process framework to model systems with disaggregated processes and flows. We show posterior predictive checks can be used to identify inconsistencies in the data and aid noise and hyperparameter selection. The proposed approach is demonstrated in case studies, including a global aluminum cycle with significant disaggregation, under weakly informative priors and significant data gaps to investigate the feasibility of Bayesian MFA. We illustrate that just a weakly informative prior can greatly improve the performance of Bayesian methods, for both estimation accuracy and uncertainty quantification.

具有多层次分解和高维数据的系统的贝叶斯物料流分析。
物料流分析(MFA)用于量化和理解物料从生产到使用结束的生命周期,从而实现对环境、社会和经济的影响和干预。MFA具有挑战性,因为可用的数据通常是有限和不确定的,导致系统不确定,可能的库存和流量值是无限的。贝叶斯统计是解决这些挑战的有效方法,它主要结合领域知识,量化数据中的不确定性,并提供与模型解决方案相关的概率。本文在贝叶斯框架下提出了一种新的MFA方法。通过放宽质量平衡约束,与现有的贝叶斯MFA方法相比,我们提高了后验样本的计算可扩展性和可靠性。我们提出了一个基于质量的、子流程和父流程框架来对具有分解流程和流的系统建模。我们表明后验预测检查可用于识别数据中的不一致性,并帮助噪声和超参数选择。在弱信息先验和显著数据缺口的情况下,通过案例研究(包括具有显著分解的全球铝循环)验证了该方法的可行性。我们证明了弱信息先验可以极大地提高贝叶斯方法的估计精度和不确定性量化的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Industrial Ecology
Journal of Industrial Ecology 环境科学-环境科学
CiteScore
11.60
自引率
8.50%
发文量
117
审稿时长
12-24 weeks
期刊介绍: The Journal of Industrial Ecology addresses a series of related topics: material and energy flows studies (''industrial metabolism'') technological change dematerialization and decarbonization life cycle planning, design and assessment design for the environment extended producer responsibility (''product stewardship'') eco-industrial parks (''industrial symbiosis'') product-oriented environmental policy eco-efficiency Journal of Industrial Ecology is open to and encourages submissions that are interdisciplinary in approach. In addition to more formal academic papers, the journal seeks to provide a forum for continuing exchange of information and opinions through contributions from scholars, environmental managers, policymakers, advocates and others involved in environmental science, management and policy.
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