Design And Analysis Of Experiments

Design And Analysis Of Experiments

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Product Specifications

Publisher PHI Learning All Engineering Mathematics books by PHI Learning
ISBN 9788120344990
Author: R. PANNEERSELVAM
Number of Pages 576
Available
Available in all digital devices
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Design And Analysis Of Experiments - Page 1 Design And Analysis Of Experiments - Page 2 Design And Analysis Of Experiments - Page 3 Design And Analysis Of Experiments - Page 4 Design And Analysis Of Experiments - Page 5

About The Book Design And Analysis Of Experiments

Book Summary:

Designed primarily as a text for the undergraduate and postgraduate students of industrial engineering, chemical engineering, production engineering, mechanical engineering, and quality engineering and management, it covers fundamentals as well as advanced concepts of Design of Experiments. The text is written in a way that helps students to independently design industrial experiments and to analyze for the inferences.

Written in an easy-to-read style, it discusses different experimental design techniques such as completely randomized design, randomized complete block design and Latin square design. Besides this, the book also covers 22, 23, and 3n factorial experiments; two-stage, three-stage and mixed design with nested factors and factorial factors; different methods of orthogonal array design; and multivariate analysis of variance (MANOVA) for one-way MANOVA and factorial MANOVA.

KEY FEATURES :

Case Studies to illustrate the concepts and techniques

Chapter end questions on prototype reality problems

Yates algorithm for 2n factorial experiments

Answers to Selected Questions


Table of Contents:
Preface
1. INTRODUCTION
2. MOTIVATION FOR USING ANALYSIS OF VARIANCE
3. SIMPLE DESIGNS OF ANOVA
4. COMPLETE FACTORIAL EXPERIMENT
5. EXPERIMENTAL DESIGNS WITH AT LEAST ONE RANDOM FACTOR
6. NESTED DESIGN
7. CONFOUNDED DESIGN
8. FRACTIONAL FACTORIAL DESIGN
9. SPLIT PLOT DESIGN
10. REGRESSION APPROACH
11. RESPONSE SURFACE METHODOLOGY
12. ORTHOGONAL ARRAYS
13. ROBUST PARAMETER DESIGN
14. GREY RELATIONAL ANALYSIS
15. MULTIVARIATE ANALYSIS OF VARIANCE (MANOVA)
Appendices
References
Answers to Selected Questions
Index