Big data analytics and lean practices: impact on sustainability performance

IF 6.1 3区 管理学 Q1 ENGINEERING, INDUSTRIAL
Lígia Lobo Mesquita, Fabiane Letícia Lizarelli, Susana Duarte
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Abstract

AbstractAcademics and practitioners have identified the potential of Big Data Analytics capability (BDAC) and Lean Social-Technical system to improve sustainability performance. Nonetheless, there is still a limited understanding of how companies’ BDAC efforts can contribute to Lean Practices and transform this relationship into sustainability-related benefits, impacting economic, social, and environmental performance. A comprehensive conceptual model to assess the mediating effect of Lean Social Practices (LSP) and Lean Technical Practices (LTP) on the relationship between BDAC and economic, social, and environmental performance was developed and tested with a sample of 108 respondents, from Brazilian industrial companies. The results obtained using Partial Least Squares Structural Equation Modeling (PLS-SEM), showed that the relationship between BDAC and economic performance is completely mediated by LTP. However, LSP does not mediate the relationships between BDAC and sustainability performance. The findings provide guidance to companies regarding resource allocations for BDAC and Lean to foster sustainability.Keywords: Big data analytics capabilitylean technicallean socialsustainability performancestructural equation modeling AcknowledgmentsThe third author acknowledge Fundação para a Ciência e a Tecnologia (FCT – MCTES) for its financial support via the project UIDB/00667/2020 and UIDP/00667/2020 (UNIDEMI).Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThis work was financially supported by Fundação para a Ciência e a Tecnologia (FCT – MCTES) via the project UIDB/00667/2020 and UIDP/00667/2020 (UNIDEMI).Notes on contributorsLígia Lobo MesquitaLígia Lobo Mesquita is a Ph.D. in Industrial Engineering from the Federal University of São Carlos – UFSCar, São Carlos, Brazil, in 2022. She is an Associate Professor at the Department of Industrial Engineering at the Federal University of Alagoas – UFAL, where she teaches quality control, quality management systems, production planning and control, and factory design and layout. Her research interests focus on the relationships between Industry 4.0 Technologies, Lean Manufacturing Practices and sustainability performance. Mainly on improving economic, environmental and social performance through the relationship between Industry 4.0 and Lean.Fabiane Letícia LizarelliFabiane Letícia Lizarelli is an Associate Professor at the Production Engineering Department on Universidade Federal de São Carlos, Brazil. She holds B.Sc., M.Sc., and Ph.D. degrees from the Federal University of São Carlos, São Carlos, Brazil, in 2005, 2008, and 2013, respectively. Her research interests are in continuous improvement programs such as Six Sigma, Lean and Lean Six Sigma and she has been studying the relationship of these programs with Industry 4.0 technologies, mainly Big Data Analytics. She has studied and published in renowned and refereed journals and conferences on these topics for the past ten years.Susana DuarteSusana Duarte holds a Ph.D. in Industrial Engineering. Presently she is an Assistant Professor of Industrial Engineering at School of Science and Technology of the Universidade NOVA de Lisboa, Portugal. She lectures several courses on topics related to industrial engineering including, production management, industrial management and strategy, industrial engineering, logistics, lean and six sigma, among others. She is a research member of UNIDEMI Research Centre where develops their investigation in lean manufacturing, green management, lean-green supply chain, and performance measurement systems. She has published scientific papers in several international refereed journals and international conferences proceedings. She was awarded the Outstanding Paper Award (Awards for Excellence) from Emerald Group Publishing, a Teaching Excellence Award from IEOM society and three paper awards from International Conferences. She is a member of the board of the Portuguese Institute of Industrial Engineering.
大数据分析和精益实践:对可持续发展绩效的影响
摘要学术界和实践者已经认识到大数据分析能力(BDAC)和精益社会技术系统在提高可持续发展绩效方面的潜力。尽管如此,对于企业的BDAC努力如何促进精益实践,并将这种关系转化为与可持续发展相关的利益,影响经济、社会和环境绩效,人们的理解仍然有限。本文建立了一个全面的概念模型,以评估精益社会实践(LSP)和精益技术实践(LTP)对BDAC与经济、社会和环境绩效之间关系的中介作用,并对来自巴西工业公司的108名受访者进行了样本测试。利用偏最小二乘结构方程模型(PLS-SEM)的分析结果表明,经济绩效与BDAC之间的关系完全由LTP介导。然而,LSP并不能作为BDAC与可持续绩效之间关系的中介。研究结果为企业在BDAC和精益资源配置方面提供了指导,以促进可持续性。关键字:大数据分析能力精益技术社会可持续发展绩效结构方程建模致谢第三作者感谢funda o para a Ciência ea tecologia (FCT - MCTES)通过项目UIDB/00667/2020和UIDP/00667/2020 (UNIDEMI)提供的资金支持。披露声明作者未报告潜在的利益冲突。本工作由 para - Ciência e - technology基金会(FCT - MCTES)通过项目UIDB/00667/2020和UIDP/00667/2020 (UNIDEMI)提供资金支持。关于contributorsLígia Lobo MesquitaLígia Lobo Mesquita,于2022年毕业于巴西奥卡洛斯联邦大学工业工程博士学位。她是阿拉戈斯联邦大学工业工程系的副教授,教授质量控制、质量管理体系、生产计划和控制以及工厂设计和布局。她的研究兴趣集中在工业4.0技术、精益生产实践和可持续发展绩效之间的关系。主要是通过工业4.0和精益之间的关系来提高经济、环境和社会绩效。Fabiane Letícia LizarelliFabiane Letícia,巴西联邦大学奥卡洛斯分校生产工程系副教授。她分别于2005年、2008年和2013年在巴西奥卡洛斯联邦大学获得学士学位、硕士学位和博士学位。她的研究兴趣是持续改进项目,如六西格玛、精益和精益六西格玛,她一直在研究这些项目与工业4.0技术的关系,主要是大数据分析。在过去的十年里,她在知名期刊和会议上就这些主题进行了研究和发表。Susana Duarte拥有工业工程博士学位。目前,她是葡萄牙里斯本新大学科技学院工业工程助理教授。她讲授与工业工程相关的课程,包括生产管理、工业管理与战略、工业工程、物流、精益和六西格玛等。她是UNIDEMI研究中心的研究成员,在精益制造、绿色管理、精益绿色供应链和绩效评估系统方面开展研究。她在多个国际期刊和国际会议论文集上发表了科学论文。她曾获得Emerald Group Publishing颁发的杰出论文奖(Awards for Excellence)、IEOM society颁发的教学优秀奖和三项国际会议论文奖。她是葡萄牙工业工程学院的董事会成员。
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来源期刊
Production Planning & Control
Production Planning & Control 管理科学-工程:工业
CiteScore
19.30
自引率
9.60%
发文量
72
审稿时长
6-12 weeks
期刊介绍: Production Planning & Control is an international journal that focuses on research papers concerning operations management across industries. It emphasizes research originating from industrial needs that can provide guidance to managers and future researchers. Papers accepted by "Production Planning & Control" should address emerging industrial needs, clearly outlining the nature of the industrial problem. Any suitable research methods may be employed, and each paper should justify the method used. Case studies illustrating international significance are encouraged. Authors are encouraged to relate their work to existing knowledge in the field, particularly regarding its implications for management practice and future research agendas.
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