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Causation-based quality control methodologies with applications.

机译:基于因果关系的质量控制方法及其应用。

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摘要

Distributed sensing networks (DSN), a system-wide deployment of different types of sensing devices in manufacturing systems, have resulted in a data-rich environment that is both temporally and spatially dense, which provides unprecedented opportunities as well as challenges for quality improvement. Existing quality control techniques fail to fully utilize the distributed sensing data, because most techniques were not purposely developed for analyzing these datasets which are massive, high-dimensional, heterogeneous, and contain substantial uncertainty. Therefore, it is urgent and essential to develop new methodologies to make effective use of the data for quality control.; This dissertation research aims to develop "causation-based quality control" methodologies in order to establish a new science base with a set of tools for "causation-based" process monitoring, diagnosis, and control, which provides a highly efficient and reliable means for manufacturing quality improvement in this data-rich environment.; This dissertation consists of four major chapters. Chapter 2 investigates causal modeling in a multistage rolling process by integrating manufacturing domain knowledge with statistical data analysis. This leads to an efficient and effective algorithm to identify causal relationships from production data and enables quality control of the process. Chapter 3 investigates causation-based monitoring and diagnosis by using the causal relationships to guide the decomposition procedure in a traditional diagnostic approach. This avoids excessive computational efforts and results in significant enhancement of diagnostic accuracy. Chapter 4 investigates the robustness of the causal modeling with respect to data uncertainty by analytically deriving an upper bound of the allowable uncertainty. This addresses the challenges of the causal modeling in the DSN environment and provides solutions to a problem not well studied in causal modeling literatures. Chapter 5 extends the causal modeling research to an epidemiologic application by identifying the factors that influence disease contraction. This provides an effective way to analyze heterogeneous public health databases for knowledge discovery and supporting the decision making in disease control and diagnosis.; This research is the first effort that introduces causal modeling and analysis into the quality engineering discipline. It provides enabling methodologies and algorithms to address the challenges arising in this data-rich era for quality control and improvement.
机译:分布式传感网络(DSN)是制造系统中不同类型的传感设备在系统范围内的部署,它导致了一个数据丰富的环境,该环境在时间和空间上都很密集,这为提高质量提供了前所未有的机遇和挑战。现有的质量控制技术无法充分利用分布式传感数据,因为大多数技术并不是专门为分析这些数据集而开发的,这些数据集是庞大的,高维的,异构的并且包含很大的不确定性。因此,迫切需要开发新的方法来有效利用数据进行质量控制。本论文的研究旨在开发“基于因果的质量控制”方法,以建立一套具有“基于因果”的过程监视,诊断和控制工具的新科学基础,从而为高效,可靠的方法提供依据。在这种数据丰富的环境中提高制造质量。本文共分四章。第2章通过将制造领域知识与统计数据分析相集成,研究了多阶段滚动过程中的因果模型。这导致了一种有效且有效的算法,可以从生产数据中识别因果关系,并实现过程的质量控制。第3章通过使用因果关系指导传统诊断方法中的分解过程,研究了基于因果的监视和诊断。这避免了过多的计算工作,并显着提高了诊断准确性。第4章通过分析得出允许不确定性的上限来研究因果模型对数据不确定性的鲁棒性。这解决了DSN环境中因果建模的挑战,并为因果建模文献中未充分研究的问题提供了解决方案。第5章通过确定影响疾病收缩的因素,将因果模型研究扩展到流行病学应用。这提供了一种分析异构公共卫生数据库以发现知识并支持疾病控制和诊断决策的有效方法。这项研究是将因果建模和分析引入质量工程学科的第一步。它提供了使能的方法和算法,以解决在这个数据丰富的时代对质量控制和改进提出的挑战。

著录项

  • 作者

    Li, Jing.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 110 p.
  • 总页数 110
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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