生产过程智能工厂概念关键胜任力模型

IF 1.5 Q3 MANAGEMENT
Andrej Jerman, A. Bertoncelj, G. Dominici, M. Pejić Bach, Anita Trnavcevic
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引用次数: 15

摘要

摘要背景与目的:本研究的目的是为生产过程中的智能工厂开发一个概念性关键能力模型,重点关注汽车行业,因为该行业的创新和持续发展处于最前沿,是其长期成功的关键。方法:为了研究的目的,我们使用半结构化访谈作为数据收集的方法。参与者被分成三组,分别是行业专家、大学教授和中等教育教师以及政府专家。为了对定性数据进行分析,我们采用了内容分析的方法。结果:基于对结构化访谈收集的数据的分析,我们确定了汽车行业智能工厂工人所需的关键能力。关键能力是技术技能、信息通信技术技能、创新和创造力、学习的开放性、接受和适应变化的能力以及各种软技能。结论:我们的研究为在工业4.0转型的组织中工作的管理者提供了见解。例如,人力资源经理可以使用我们的结果来研究潜在候选人在工作中需要具备哪些能力,特别是在规划与生产流程相关的未来工作概况方面。此外,他们可以设计符合工业4.0趋势的能力模型。教育政策制定者应该设计培养上述能力的课程。在未来,这里提出的结果可以与应用其他实证方法得到的结果进行比较和对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conceptual Key Competency Model for Smart Factories in Production Processes
Abstract Background and Purpose: The aim of the study is to develop a conceptual key competency model for smart factories in production processes, focused on the automotive industry, as innovation and continuous development in this industry are at the forefront and represent the key to its long-term success. Methodology: For the purpose of the research, we used a semi-structured interview as a method of data collection. Participants were segmented into three homogeneous groups, which are industry experts, university professors and secondary education teachers, and government experts. In order to analyse the qualitative data, we used the method of content analysis. Results: Based on the analysis of the data collected by structured interviews, we identified the key competencies that workers in smart factories in the automotive industry will need. The key competencies are technical skills, ICT skills, innovation and creativity, openness to learning, ability to accept and adapt to change, and various soft skills. Conclusion: Our research provides insights for managers working in organisations that are transformed by Industry 4.0. For instance, human resource managers can use our results to study what competencies potential candidates need to perform well on the job, particularly in regards to planning future job profiles in regards related to production processes. Moreover, they can design competency models in a way that is coherent with the trends of Industry 4.0. Educational policy makers should design curricula that develop mentioned competencies. In the future, the results presented here can be compared and contrasted with findings obtained by applying other empirical methods.
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来源期刊
Organizacija
Organizacija MANAGEMENT-
CiteScore
3.50
自引率
15.80%
发文量
15
审稿时长
16 weeks
期刊介绍: Organizacija (Journal of Management, Information Systems and Human Resources) is an interdisciplinary peer reviewed journal that seeks both theoretical and practical papers devoted to managerial aspects of the subject matter indicated in the title. In particular the journal focuses on papers which cover state-of art developments in the subject area of the journal, its implementation and use in the organizational practice. Organizacija is covered by numerous Abstracting & Indexing services, including SCOPUS.
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