Process quality control : troubleshooting and interpretation of data
Author(s)
Bibliographic Information
Process quality control : troubleshooting and interpretation of data
McGraw-Hill, c1990
2nd ed
Available at 4 libraries
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Note
Includes bibliographical references and index
Description and Table of Contents
Description
In this revised edition of a highly successful guide to statistical quality control, over 80% of the contents have been updated or rewritten. The reader will find new information on the many advances that have taken place in numerical methods, automated process control, improved experiment design, and a new, easier way to handle analysis of means for interactions. Unique and practical in presentation, the book is a straightforward and comprehensive working guide to troubleshooting in manufacturing processes.
Table of Contents
Part I: Basics of Interpretation of Data.Variables Data: An Introduction.Ideas from Time Sequences of Observations.Ideas from Outliers-Variables Data.Variability--Estimating and Comparing.Attributes or Go No-Go Data.Part II: Statistical Process Control.On Sampling to Provide Feedback of Information.Narrow Limit Gauging in Process Control.On Implementing Statistical Process Control.Part III: Troubleshooting and Process Improvement.Some Basic Ideas and Methods of Troubleshooting.Some Concepts of Statistical Design of Experiments.Troubleshooting with Attributes Data.Special Strategies in Troubleshooting.Comparing Two Process Averages.Troubleshooting with Variables Data.More Than Two Levels of an Independent Variable.
by "Nielsen BookData"