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An Analytical Approach to Lean Six Sigma Deployment Strategies: Project Identification and Prioritization.

机译:精益六西格玛部署策略的分析方法:项目识别和优先级。

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摘要

The ever-changing economic landscape has forced many companies to re-examine their supply chains. Global resourcing and outsourcing of processes has been a strategy many organizations have adopted to reduce cost and to increase their global footprint. This has, however, resulted in increased process complexity and reduced customer satisfaction. In order to meet and exceed customer expectations, many companies are forced to improve quality and on-time delivery, and have looked towards Lean Six Sigma as an approach to enable process improvement. The Lean Six Sigma literature is rich in deployment strategies; however, there is a general lack of a mathematical approach to deploy Lean Six Sigma in a global enterprise. This includes both project identification and prioritization. The research presented here is two-fold. Firstly, a process characterization framework is presented to evaluate processes based on eight characteristics. An unsupervised learning technique, using clustering algorithms, is then utilized to group processes that are Lean Six Sigma conducive. The approach helps Lean Six Sigma deployment champions to identify key areas within the business to focus a Lean Six Sigma deployment. A case study is presented and 33% of the processes were found to be Lean Six Sigma conducive.;Secondly, having identified parts of the business that are lean Six Sigma conducive, the next steps are to formulate and prioritize a portfolio of projects. Very often the deployment champion is faced with the decision of selecting a portfolio of Lean Six Sigma projects that meet multiple objectives which could include: maximizing productivity, customer satisfaction or return on investment, while meeting certain budgetary constraints. A multi-period 0-1 knapsack problem is presented that maximizes the expected net savings of the Lean Six Sigma portfolio over the life cycle of the deployment. Finally, a case study is presented that demonstrates the application of the model in a large multinational company.;Traditionally, Lean Six Sigma found its roots in manufacturing. The research presented in this dissertation also emphasizes the applicability of the methodology to the non-manufacturing space. Additionally, a comparison is conducted between manufacturing and non-manufacturing processes to highlight the challenges in deploying the methodology in both spaces.
机译:不断变化的经济格局迫使许多公司重新审查其供应链。流程的全球外包和外包一直是许多组织采用的降低成本和增加全球足迹的策略。但是,这导致了过程复杂性的增加和客户满意度的降低。为了达到并超过客户的期望,许多公司被迫提高质量和准时交付,并且已经将精益六西格码(Lin Six Sigma)视为实现流程改进的一种方法。精益六西格玛文献中有丰富的部署策略。但是,普遍缺乏在全球企业中部署精益六西格码的数学方法。这包括项目识别和优先级。这里介绍的研究有两个方面。首先,提出了一种过程表征框架,以基于八个特征来评估过程。然后,利用聚类算法将无监督学习技术用于对精益六西格码有益的过程进行分组。该方法可帮助精益六西格码部署的负责人确定业务中的关键领域,以专注于精益六西格码部署。提出了一个案例研究,发现33%的流程有利于精益六西格玛。其次,在确定了有助于精益六西格玛的业务部分之后,下一步是制定项目计划并确定优先次序。部署负责人经常面临选择符合多个目标的精益六西格玛项目组合的决定,这些目标可能包括:在满足某些预算约束的同时,最大化生产力,客户满意度或投资回报率。提出了一个多周期的0-1背包问题,该问题在部署的整个生命周期内使精益6西格玛产品组合的预期净节省最大化。最后,提供了一个案例研究,以证明该模型在一家大型跨国公司中的应用。传统上,精益六西格玛(Lean Six Sigma)起源于制造业。本文的研究也强调了该方法在非制造领域的适用性。此外,在制造和非制造过程之间进行了比较,以突出在两个领域中部署方法论所面临的挑战。

著录项

  • 作者

    Duarte, Brett.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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