Data-driven approaches to integrated closed-loop sustainable supply chain design under multi-uncertainties

Zihao Jiao, Lun Ran*, Yanzi Zhang, Ziqi Li, Wensi Zhang

*此作品的通讯作者

    科研成果: 期刊稿件文章同行评审

    64 引用 (Scopus)

    摘要

    In this paper, the problem of sustainable closed-loop supply chain (CLSC) design under multi-uncertainties is studied. To identify an efficient way to enhance environmental and operational benefits of CLSC, we use “Big Data" and propose data-driven approaches to generating robust CLSC designs that mitigate uncertainty and greenhouse gas (GHG) emissions burdens. More specifically, in addressing multi-uncertainties (i.e., buyers’ expectations, demands, and recovery uncertainties), a distributed robust optimization model (DRO) and an adaptive robust model (ARO) are developed for designing carryings and waste disposal facility locations of CLSC. Both models use historical data based on uncertain parameters for previous periods to make decisions on future stages in a robust way. Moreover, we incorporate K-L divergence into an ambiguous set of uncertain parameters to measure the value of data. The results of numerical analysis show the need to account for K-L divergence in an ambiguous set of DRO models, as GHG emission costs increase even when little K-L divergence disturbance is in place. Furthermore, from the data-driven framework, we find that government subsidies and an accurate estimation method (i.e., less K-L divergence) enhance environmental and operational benefits. Regarding model robustness levels, solutions generated from our ARO models outperform deterministic solutions not only in terms of their average objective value but also in terms of differences from ideal solutions.

    源语言英语
    页(从-至)105-127
    页数23
    期刊Journal of Cleaner Production
    185
    DOI
    出版状态已出版 - 1 6月 2018

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