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Design and Modeling for Computer Experiments (Chapman & Hall CRC Computer Science & Data Analysis)

✍ Scribed by Kai-Tai Fang, Runze Li, Agus Sudjianto


Publisher
Chapman and Hall CRC
Year
2005
Tongue
English
Leaves
288
Category
Library

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✦ Synopsis


Computer simulations based on mathematical models have become ubiquitous across the engineering disciplines and throughout the physical sciences. Successful use of a simulation model, however, requires careful interrogation of the model through systematic computer experiments. While specific theoretical/mathematical examinations of computer experiment design are available, those interested in applying proposed methodologies need a practical presentation and straightforward guidance on analyzing and interpreting experiment results.Written by authors with strong academic reputations and real-world practical experience, Design and Modeling for Computer Experiments is exactly the kind of treatment you need. The authors blend a sound, modern statistical approach with extensive engineering applications and clearly delineate the steps required to successfully model a problem and provide an analysis that will help find the solution. Part I introduces the design and modeling of computer experiments and the basic concepts used throughout the book. Part II focuses on the design of computer experiments. The authors present the most popular space-filling designs - like Latin hypercube sampling and its modifications and uniform design - including their definitions, properties, construction and related generating algorithms. Part III discusses the modeling of data from computer experiments. Here the authors present various modeling techniques and discuss model interpretation, including sensitivity analysis. An appendix reviews the statistics and mathematics concepts needed, and numerous examples clarify the techniques and their implementation.The complexity of real physical systems means that there is usually no simple analytic formula that sufficiently describes the phenomena. Useful both as a textbook and professional reference, this book presents the techniques you need to design and model computer experiments for practical problem solving.

✦ Table of Contents


Design and Modeling for Computer Experiments......Page 3
Preface......Page 5
Contents......Page 8
c5467_fm......Page 1
C5467_CH01......Page 12
C5467_CH02......Page 54
C5467_CH03......Page 75
C5467_CH04......Page 113
C5467_CH05......Page 133
C5467_CH06......Page 194
C5467_CH07......Page 214
C5467_APP......Page 248
C5467_Acron......Page 268
C5467_Ref......Page 270

✦ Subjects


Машиностроение и материалообработка;Матметоды и моделирование в машиностроении;


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