Wiley
Wiley.com
Print this page Share

Statistical Methods for Six Sigma: In R&D and Manufacturing

ISBN: 978-0-471-20342-1
Hardcover
344 pages
September 2003
US $150.00 Add to Cart

This price is valid for United States. Change location to view local pricing and availability.

Statistical Methods for Six Sigma: In R&D and Manufacturing (0471203424) cover image
This is a Print-on-Demand title. It will be printed specifically to fill your order. Please allow an additional 5-6 days delivery time. The book is not returnable.
Other Available Formats: E-book

A guide to achieving business successes through statistical methods

Statistical methods are a key ingredient in providing data-based guidance to research and development as well as to manufacturing. Understanding the concepts and specific steps involved in each statistical method is critical for achieving consistent and on-target performance.

Written by a recognized educator in the field, Statistical Methods for Six Sigma: In R&D and Manufacturing is specifically geared to engineers, scientists, technical managers, and other technical professionals in industry. Emphasizing practical learning, applications, and performance improvement, Dr. Joglekar s text shows today s industry professionals how to:

  • Summarize and interpret data to make decisions
  • Determine the amount of data to collect
  • Compare product and process designs
  • Build equations relating inputs and outputs
  • Establish specifications and validate processes
  • Reduce risk and cost-of-process control
  • Quantify and reduce economic loss due to variability
  • Estimate process capability and plan process improvements
  • Identify key causes and their contributions to variability
  • Analyze and improve measurement systems

This long-awaited guide for students and professionals in research, development, quality, and manufacturing does not presume any prior knowledge of statistics. It covers a large number of useful statistical methods compactly, in a language and depth necessary to make successful applications. Statistical methods in this book include: variance components analysis, variance transmission analysis, risk-based control charts, capability and performance indices, quality planning, regression analysis, comparative experiments, descriptive statistics, sample size determination, confidence intervals, tolerance intervals, and measurement systems analysis. The book also contains a wealth of case studies and examples, and features a unique test to evaluate the reader s understanding of the subject.