Assessing the uptake of Industry 4.0 technologies: barriers to their adoption and impact on quality management aspects

被引:11
作者
Laskurain-Iturbe, Iker [1 ]
Arana-Landin, German [1 ]
Landeta-Manzano, Benat [2 ]
Jimenez-Redal, Ruben [2 ]
机构
[1] Univ Basque Country Gipuzkoa Campus, Dept Business Management, Donostia San Sebastian, Spain
[2] Univ Basque Country Bizkaia Campus, Dept Business Management, Leioa, Spain
关键词
Industry; 4; 0; Quality management practices; Product and service performance; Satisfaction performance; BIG DATA; RESEARCH AGENDA; INTERNET; THINGS; FUTURE; CHALLENGES; IOT; REQUIREMENTS; MODELS; OPPORTUNITIES;
D O I
10.1108/IJQRM-10-2022-0292
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
PurposeIndustry 4.0 technologies have the potential to improve the quality management performance of industrial companies. The paper analyses the influence of Industry 4.0 technologies on quality management aspects, but also the barriers that slow down the deployment of each Industry 4.0 technology and limit each impact.Design/methodology/approachThe impact of Industry 4.0 technologies on quality management aspects (QMAs) is a heterogeneous and multidimensional phenomenon dependent on the current context, a holistic multiple case study has been applied. Twenty-six case studies were carried out on eight Industry 4.0 technologies, with a minimum of two cases per technology. These cases were selected from the 168 projects presented in the four editions of the BIND 4.0 program, winner of the 14th edition of the European Enterprise Promotion Awards. The cases were selected based on a preliminary survey of 124 project managers. Subsequently, individual case and cross-case analyses for each technology were carried out. Finally, these results were confirmed by interviews with a minimum of two customers per Industry 4.0.FindingsResults show that the adoption of Industry 4.0 technologies positively affects QMAs. Specifically, the influences received by "process control" and "customer satisfaction" from all the Industry 4.0 technologies studied are medium to high. In addition, barriers from the "economic and legal" and "workers" categories exert greater influence than the barriers pertaining to "organization", "lack of training and information" and "technology".Research limitations/implicationsThe main limitation is the generalizability of the findings of qualitative studies (ergo the case study). In this sense, statistical generalizability, characteristic of a random sample, is not intended in this paper. Therefore, the use of multiple case studies has been chosen to reinforce analytical generalizations with corroborated evidence (literal replication).Practical implicationsManagers interested in adopting Industry 4.0 technologies Ts should plan the implementation process to minimize the impact of these barriers and optimize the results for each stakeholder. In this sense, the barriers that concern the workers should be managed. It is the responsibility of managers to inform and explain how data will be handled, and how privacy concerns will be addressed.Social implicationsIt is essential to explain and convince workers about the need for a renewal of tasks. New types of jobs (i.e. the use of robots) will involve training for workers to enable their integration alongside the new technologies.Originality/valueThis paper addresses two under-researched areas that are essential when defining strategies in the industrial business context. Firstly, the paper analyses the influence of each I40 T on each QMA. Secondly, it analyses the barriers to adopt that slow down the rollout of each I40 T and limits each impact.
引用
收藏
页码:2420 / 2442
页数:23
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