应用模糊失效模式和效应分析法调查缝纫工段的精益浪费现象

Temesgen Agazhie, Shalemu Sharew Hailemariam
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引用次数: 0

摘要

本研究旨在量化精益浪费的主要原因并确定其优先次序,通过采用更好的浪费原因识别方法来应用减少浪费的方法。我们采用了与理想解决方案相似性排序偏好模糊技术(FTOPSIS)、模糊分析层次过程(FAHP)和故障模式影响分析(FMEA)来确定缺陷原因。为确定当前的缺陷原因识别程序,采用了时间研究、检查表和流程图。研究重点是埃塞俄比亚亚的斯亚贝巴一家服装企业的缝纫部门。研究结果这些技术优于传统技术,为具有挑战性的决策情况提供了更好的解决方案。研究考察了每种精益浪费的 FMEA 标准,如严重性、发生率和可检测性。成对比较显示,缺陷的影响大于其他精益浪费。缺陷主要是由操作员培训不足造成的。研究的局限性/意义该研究侧重于一家案例公司,其结果不能推广到整个行业。实践意义该研究使用定量方法对服装行业精益浪费的原因进行量化和优先排序,为行业人士关注浪费原因以提高质量绩效提供了启示。原创性/价值将 FMEA 与 FAHP 和 FTOPSIS 相结合的方法是一项新贡献,通过考虑浪费原因的严重性、发生率和可检测性,为决策变量提供了更好的解决方案。数据收集方法基于专家焦点小组讨论,以评定缺陷的主要原因,从而为缺陷原因优先级排序提供最佳值。
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Application of fuzzy failure mode and effect analysis to investigate lean wastes in the sewing section
PurposeThis study aims to quantify and prioritize the main causes of lean wastes and to apply reduction methods by employing better waste cause identification methodologies.Design/methodology/approachWe employed fuzzy techniques for order preference by similarity to the ideal solution (FTOPSIS), fuzzy analytical hierarchy process (FAHP), and failure mode effect analysis (FMEA) to determine the causes of defects. To determine the current defect cause identification procedures, time studies, checklists, and process flow charts were employed. The study focuses on the sewing department of a clothing industry in Addis Ababa, Ethiopia.FindingsThese techniques outperform conventional techniques and offer a better solution for challenging decision-making situations. Each lean waste’s FMEA criteria, such as severity, occurrence, and detectability, were examined. A pairwise comparison revealed that defect has a larger effect than other lean wastes. Defects were mostly caused by inadequate operator training. To minimize lean waste, prioritizing their causes is crucial.Research limitations/implicationsThe research focuses on a case company and the result could not be generalized for the whole industry.Practical implicationsThe study used quantitative approaches to quantify and prioritize the causes of lean waste in the garment industry and provides insight for industrialists to focus on the waste causes to improve their quality performance.Originality/valueThe methodology of integrating FMEA with FAHP and FTOPSIS was the new contribution to have a better solution to decision variables by considering the severity, occurrence, and detectability of the causes of wastes. The data collection approach was based on experts’ focus group discussion to rate the main causes of defects which could provide optimal values of defect cause prioritization.
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