Learning-to-learn sand cone model integrated lean learning framework for construction industry

IF 3.5 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY Smart and Sustainable Built Environment Pub Date : 2023-01-23 DOI:10.1108/sasbe-10-2022-0234
A. Parameswaran, K. Ranadewa
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引用次数: 1

Abstract

PurposeThe lack of knowledge has hindered the successful implementation of lean in the construction industry. This has alarmed the need for lean learning practices. Out of numerous models, the learning-to-learn sand cone model received a wider acknowledgment for learning practices. Thus, this study aims to propose a learning-to-learn sand cone model integrated lean learning framework for the construction industry.Design/methodology/approachThe research adopted an interpretivism stance. A qualitative research approach was adopted for the study. Consequently, fifteen (15) semi-structured interviews and document reviews were carried out to collect data in three (3) cases selected through purposive sampling. Code-based content analysis was used to analyse the data.FindingsFifty-two (52) sub-activities pertaining to nine lean learners at each stage of the lean learning procedure were identified. The most significant practices in the lean learning procedure to continuously improve lean learning in the organisation were maintaining records, providing a performance update to senior management and preparing and distributing several hierarchical manuals for all levels of staff to aid in the implementation of lean approaches.Originality/valueThe findings of the research can be aided to successfully implement lean by following the identified sub-activities via various parties within the organisation. The proposed lean learning framework opens several research areas on lean learning in the construction industry. This is the first research to uncover a lean learning framework in the construction industry rather than at the educational institute level.
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建筑行业学习学习沙锥模型集成精益学习框架
目的:知识的缺乏阻碍了精益在建筑行业的成功实施。这警示了精益学习实践的必要性。在众多模型中,学习到学习的沙锥模型在学习实践中得到了更广泛的认可。因此,本研究旨在为建筑行业提出一个“学习到学习”的沙锥模型整合精益学习框架。这项研究采取了解释主义的立场。本研究采用定性研究方法。因此,通过有目的的抽样选择了三(3)个案例,进行了十五(15)次半结构化访谈和文件审查,以收集数据。采用基于代码的内容分析对数据进行分析。在精益学习过程的每个阶段,确定了与9个精益学习者相关的52个子活动。在精益学习过程中,为了持续改进组织中的精益学习,最重要的实践是保持记录,向高级管理层提供绩效更新,并为各级员工准备和分发几本分层手册,以帮助实施精益方法。原创性/价值研究结果可以通过组织内的各方遵循确定的子活动来帮助成功实施精益。提出的精益学习框架为建筑业的精益学习开辟了几个研究领域。这是第一个在建筑行业而不是教育机构层面发现精益学习框架的研究。
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来源期刊
Smart and Sustainable Built Environment
Smart and Sustainable Built Environment GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
9.20
自引率
8.30%
发文量
53
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