Literature DB >> 29601197

Estimating Missing Unit Process Data in Life Cycle Assessment Using a Similarity-Based Approach.

Ping Hou1,2, Jiarui Cai1, Shen Qu1, Ming Xu1,3.   

Abstract

In life cycle assessment (LCA), collecting unit process data from the empirical sources (i.e., meter readings, operation logs/journals) is often costly and time-consuming. We propose a new computational approach to estimate missing unit process data solely relying on limited known data based on a similarity-based link prediction method. The intuition is that similar processes in a unit process network tend to have similar material/energy inputs and waste/emission outputs. We use the ecoinvent 3.1 unit process data sets to test our method in four steps: (1) dividing the data sets into a training set and a test set; (2) randomly removing certain numbers of data in the test set indicated as missing; (3) using similarity-weighted means of various numbers of most similar processes in the training set to estimate the missing data in the test set; and (4) comparing estimated data with the original values to determine the performance of the estimation. The results show that missing data can be accurately estimated when less than 5% data are missing in one process. The estimation performance decreases as the percentage of missing data increases. This study provides a new approach to compile unit process data and demonstrates a promising potential of using computational approaches for LCA data compilation.

Year:  2018        PMID: 29601197     DOI: 10.1021/acs.est.7b05366

Source DB:  PubMed          Journal:  Environ Sci Technol        ISSN: 0013-936X            Impact factor:   9.028


  1 in total

1.  Methodological review and detailed guidance for the life cycle interpretation phase.

Authors:  Alexis Laurent; Bo P Weidema; Jane Bare; Xun Liao; Danielle Maia de Souza; Massimo Pizzol; Serenella Sala; Hanna Schreiber; Nils Thonemann; Francesca Verones
Journal:  J Ind Ecol       Date:  2020       Impact factor: 6.946

  1 in total

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