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Measuring leanness of manufacturing systems and identifying leanness target by considering agility.

机译:测量制造系统的精益度并通过考虑敏捷性来确定精益度目标。

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摘要

The implementation of lean manufacturing concepts has shown significant impacts on various industries. Numerous tools and techniques have been developed to tackle specific problems in order to eliminate wastes and carry out lean concepts. With the focus on "how to make a system leaner," little effort has been made on determining "how lean the system is." Lean assessment surveys evaluate the current status of a system qualitatively against predefined lean indicators. Lean metrics are developed to quantify performance of improvement initiatives, but each metric only focuses on one specific area. Value Stream Maps demonstrate the current and future states graphically with the emphasis on time-based performance only. A truly quantitative and synthesized measure for overall leanness has not been established.;In some circumstances, being lean may not be the only goal for manufacturers. In order to compete in the rapidly changing marketplace, manufacturing systems should also be agile to respond quickly to uncertain demands. Nevertheless, being extremely agile may increase the cost of regular operations and reduce the leanness of the system. Similarly, being extremely lean may reduce flexibility and lower the agility level. Therefore, a manufacturing system should be agile enough to handle the uncertainty of demands and meanwhile be lean enough to deliver goods with competitive prices and lead time. In order to achieve the appropriate leanness level, a leanness measure is needed to address not only "how lean the system is" but also " how lean it should be.";In this research, a methodology is proposed to quantitatively measure leanness level of manufacturing systems using the Data Envelopment Analysis (DEA) technique. The production process of each work piece is defined as a Decision Making Unit (DMU) that transforms inputs of Cost and Time into output Value. Using a Slacks-Based Measure (SBM) model, the DEA-Leanness Measure is developed to quantify the leanness level of each DMU by comparing the DMU against the frontier of leanness. A Cost-Time-Value analysis is developed to create virtual DMUs to push the frontier towards ideal leanness so that an effective benchmark can be established. The DEA-Leanness Measure provides a unit-invariant leanness score valued between 0 and 1, which is an indication of "how lean the system is" and also "how much leaner the system can be." With the help of Cost-Time Profiling technique, directions of potential improvement can be identified by comparing the profiles of DMUs with different leanness scores. The leanness measure can also be weighted between Cost, Time and Value variables. The weighted DEA-Leanness Measure provides a way to evaluate the impacts of improvement initiatives with an emphasis on the company's strategic focus.;Performing the DEA-Leanness measurement requires detailed cost and time data. A Web-Based Kanban is developed to facilitate automated data collection and real-time performance analysis. In some circumstances where detailed data is not readily available but a Value Stream Maps (VSM) has been constructed, the applications of DEA-Leanness Measure based on existing VSM are explored.;Besides pursuing leanness, satisfying a customer's demand pattern requires certain level of agility. Based on the DEA-Leanness Measure, appropriate leanness targets can be identified for manufacturing systems considering sufficient agility level. The Online-Delay and Offline-Delay Targets are determined to represent the minimum acceptable delays considering inevitable waste within and beyond a manufacturing system. Combining the two targets, a Lean-Agile Performance Index can then be derived to evaluate if the system has achieved an appropriate level of leanness with sufficient agility for meeting the customers' demand.;Hypothetical cases mimicking real manufacturing systems are developed to verify the proposed methodologies. An Excel-based DEA-Leanness Solver and a Web-Kanban System have been developed to solve the mathematical models and to substantiate potential applications of the leanness measure in real world. Finally, future research directions are suggested to further enhance the results of this research.
机译:精益生产概念的实施已对各个行业产生了重大影响。已经开发出许多工具和技术来解决特定问题,以消除浪费并实施精益概念。以“如何使系统更精简”为重点,在确定“系统的精简程度”方面所做的工作很少。精益评估调查根据预定义的精益指标定性评估系统的当前状态。开发精益度量标准是为了量化改进计划的绩效,但是每种度量标准仅关注一个特定领域。值流图以图形方式显示当前和将来的状态,并仅强调基于时间的性能。尚未建立真正的定量和综合的整体精益度量。在某些情况下,精益可能不是制造商的唯一目标。为了在瞬息万变的市场中竞争,制造系统还应该灵活地对不确定的需求做出快速响应。但是,非常敏捷可能会增加常规操作的成本并降低系统的精简性。同样,极瘦可能会降低灵活性并降低敏捷性水平。因此,制造系统应足够敏捷以应对需求的不确定性,同时还应足够精简以具有竞争力的价格和交货期交付产品。为了达到适当的精益水平,不仅需要“系统有多精益”,而且还需要“系统应该有多精益”,就需要采用精益度量方法;在这项研究中,提出了一种定量测量系统的精益水平的方法。使用数据包络分析(DEA)技术的制造系统。每个工件的生产过程都定义为决策单元(DMU),该决策单元将成本和时间的输入转换为输出值。使用基于松弛的量度(SBM)模型,通过比较DMU与稀薄度边界,开发了DEA-Leanness Measure来量化每个DMU的稀薄度。进行了成本时间价值分析,以创建虚拟DMU,将前沿技术推向理想的稀薄度,从而可以建立有效的基准。 DEA瘦度度量提供的单位不变的瘦度得分介于0和1之间,表示“系统有多瘦”以及“系统有多瘦”。借助成本时间分析技术,可以通过比较具有不同倾斜度得分的DMU的轮廓来确定潜在改进的方向。倾斜度度量也可以在“成本”,“时间”和“价值”变量之间加权。加权DEA-Leanness度量提供了一种评估改进计划的影响的方法,重点是公司的战略重点。执行DEA-Leanness度量需要详细的成本和时间数据。开发了基于Web的看板,以促进自动化数据收集和实时性能分析。在一些尚无法获得详细数据但已经构建了价值流图(VSM)的情况下,探索了基于现有VSM的DEA精益度量的应用。;除了追求精益之外,满足客户的需求模式还需要一定程度的敏捷。基于DEA精益度量,可以在考虑足够敏捷度的情况下为制造系统确定合适的精益目标。考虑到制造系统内部和外部不可避免的浪费,确定在线延迟和离线延迟目标表示最小可接受延迟。结合这两个目标,可以得出精益敏捷性能指数,以评估系统是否已达到适当的瘦度水平和足够的敏捷性,以满足客户的需求。方法论。已经开发了基于Excel的DEA精简求解器和Web看板系统,以解决数学模型并证实实际中瘦度测量的潜在应用。最后,提出了今后的研究方向,以进一步提高研究结果。

著录项

  • 作者

    Wan, Hung-da.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 198 p.
  • 总页数 198
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:09

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