Production Enhancement through Integration of Lean, Life Cycle Assessment & Industry 4.0

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY Jurnal Kejuruteraan Pub Date : 2023-05-30 DOI:10.17576/jkukm-2023-35(3)-23
Tehrim Ijaz, Muhammad Ismail, Syed Mustafa Haider, Muhammad Zeeshan Rafique, Syeda Hadika Jamshaid
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Abstract

Advancement in the manufacturing sector has attained a dominate interest from the researchers as well as the industrialists, for attaining the more products efficiencies. The concept of Lean Manufacturing set the cornerstone for excellence in manufacturing sector by improving the production times and reducing the non-value-added processes. In 2011, the concept of Industry 4.0 pivoted the concept of automation in factories to complement the production improvement processes. The under developing countries such as Pakistan, the manufacturing sector is run with the conventional manufacturing practices, which yields the products of lower quality and much time is being wasted resulting in overall poor efficiency. Moreover, those industries which want to improve their processes are not very much certain, about the methodologies they shall implement. In this research study, the authors have used the mathematical modelling approach of Analytical Hierarchy Processes (AHP) to recognise the pertinent Industry 4.0 technologies and lean perceptions – this technique empowers opportunity of organizing and analysing the intricate decisions for a strong understanding. By using Value Stream Mapping and Automation in a simulation-based case study, improvements of 44.70% in lead time, 17% in value added time and 45.25% in non-value-added time were witnessed. This research explores the avenue of Multi-Criteria Decision-Making (MCDM), based decision making in Industry 4.0 related environments. It will provide clarity to academicians regarding the integration of lean and Industry 4.0 through optimized and logical selection of relevant approaches, in addition to aiding practitioners in intelligent decision making.
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整合精益与生命周期评估提高生产效率4.0行业
制造业的进步已经获得了研究人员和实业家的主要兴趣,以实现更高的产品效率。精益生产的概念通过提高生产时间和减少非增值过程,为制造业的卓越奠定了基础。2011年,工业4.0的概念以工厂自动化的概念为中心,以补充生产改进过程。在巴基斯坦等欠发展中国家,制造业采用传统的制造方法,生产的产品质量较低,浪费了大量时间,导致整体效率低下。此外,那些想要改进其流程的行业对他们应该实施的方法并不是很确定。在本研究中,作者使用了分析层次过程(AHP)的数学建模方法来识别相关的工业4.0技术和精益感知——该技术为组织和分析复杂的决策提供了机会,以获得强有力的理解。通过在一个基于模拟的案例研究中使用价值流映射和自动化,我们发现交货时间改善了44.70%,增值时间改善了17%,非增值时间改善了45.25%。本研究探讨了多标准决策(MCDM)的途径,基于工业4.0相关环境中的决策。它将通过优化和逻辑选择相关方法,为学术界提供关于精益和工业4.0整合的清晰度,并帮助从业者进行智能决策。
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来源期刊
Jurnal Kejuruteraan
Jurnal Kejuruteraan ENGINEERING, MULTIDISCIPLINARY-
自引率
16.70%
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0
审稿时长
24 weeks
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