持续性
背景(考古学)
独创性
服装
业务
上游(联网)
最佳实践
系统回顾
营销
知识管理
工程类
社会学
定性研究
管理
计算机科学
经济
政治学
社会科学
地理
生态学
电信
考古
梅德林
法学
生物
作者
Md. Mazedul Islam,Patsy Perry,Simeon Gill
标识
DOI:10.1108/jfmm-07-2020-0130
摘要
Purpose This paper reviews the literature on environmentally sustainable practices in textile, apparel and fashion (TAF) industries to allow the mapping of practices across various manufacturing processes and the development of a conceptual framework to guide investigation of the extent of sustainable practices in TAF industries from an environmental perspective. Design/methodology/approach A systematic literature review was undertaken, consisting of bibliometric and content analysis of 91 articles published in peer-reviewed journals over a 10-year period. Findings The inclusion of sustainable practices from all manufacturing stages in this review illustrates the diversity and complexities of environmental practices in TAF contexts. However, there is less research in developing country contexts, where most TAF production takes place and a paucity of research in upstream stages of garment washing and dyeing, and the manufacture of trims, accessories and packaging. Research limitations/implications The focus is on environmental sustainability and upstream manufacturing processes. The review includes literature in the form of academic journal articles from selected databases during the period January 2010–June 2020. Practical implications This review provides academics with a unified depiction of environmentally sustainable practices to stimulate further scholarly research and provides guidance for managers to develop firm sustainability competency by summarising best practices at different manufacturing stages Originality/value This review comprehensively maps the academic literature on environmentally sustainable practices in TAF industries from an upstream manufacturing operations context. It highlights the contribution of scholarly study to the knowledge base on environmentally sustainable practices in TAF industries.
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