Engineering Methods For Robust Product Design
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Engineering Methods for Robust Product Design
Author | : William Y. Fowlkes |
Publisher | : Prentice Hall |
Total Pages | : 403 |
Release | : 1995 |
Genre | : Technology & Engineering |
ISBN | : 9780201633672 |
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Robust Design is the procedure used by design engineers to reduce the effects of order to produce the highest quality products possible. This book includes real life case studies focusing on mechanical, chemical and imaging design that illustrate potential problems and their solutions and offers WinRobust Lite software and practice problems.
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Language: en
Pages: 403
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Type: BOOK - Published: 1995 - Publisher: Prentice Hall
Robust Design is the procedure used by design engineers to reduce the effects of order to produce the highest quality products possible. This book includes real
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Type: BOOK - Published: 1995-01-01 - Publisher: Prentice Hall
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Explains how to prevent quality problems in the early stages of product development and design, how to use the dynamic signal-to- noise ratio as the performance
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Powerful and elegantly simple. Achieve higher quality...lower costs...faster time to market Companies worldwide have used the methods of quality expert Genichi
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This book is written primarily for engineers and researchers who use statistical robust design for quality engineering and Six Sigma, and for statisticians who