Some New Developments of Experimental Designs and Their Applications

Some New Developments of Experimental Designs and Their Applications
Author: Yuxuan Lin
Publisher:
Total Pages: 0
Release: 2022
Genre: Experimental design
ISBN:

Experimental design is an important branch in statistics and has been widely applied to various fields of industry, system engineering, and others. There are diverse design and modeling methods for different purposes. Among them, the orthogonal design (OD), optimal regression design including the D-optimal design (DOD) and uniform design (UD) have been widely employed. However, there are various open problems involving these designs. My research during the doctor study period tries to solve several problems. Most of the new results have been published in several international journals (see the list of my publications). My dissertation is based on some of these publications. The orthogonal design is the most popular method having a long history. It based on some additive ANOVA models incorporating main effects, interaction effects and random error. A good orthogonal design is able to obtain an efficient estimation for requested effects with a small number of experimental runs. The effects that are less important according to the hierarchical ordering principle can be confounded for saving the number of runs. There are various criteria including the minimum aberration and the uniformity measure for evaluating the orthogonal designs in the literature. To evaluate and avoid the confounding situation of projected saturated symmetric orthogonal designs, we (Lin and Fang (2019)) proposed a criterion "the main effect confounding pattern" (MECP). The new criterion MECP is consistent with other criteria including discrepancies, and the generalized word-length pattern. In the meanwhile, MECP can provide more information about statistical performances in the classification for projection designs than the other criteria, providing an approach to finding the best main effect arrangement for the experimenter. I also participated in the projects "New non-isomorphic detection methods for orthogonal designs" and "Detecting non-isomorphic orthogonal designs" for developing more techniques of the identification and detection of non-isomorphic orthogonal designs. In conservative view, isomorphic orthogonal designs ought to have the same statistical performance. However, MECP indicates that the isomorphism does not imply the equivalence of orthogonal designs. A good design for experiments should consider both effectiveness and robustness. Each design method is based on a given model. The OD is based on ANOVA models, whereas the D-optimal regression design is based on regression models, and the uniform design is on the overall mean model. These models have many unknown parameters to be estimated. A design is effective if it provides a more accurate (or even the best) estimate for the unknown model parameters. If the underlying model is not completely known, the robustness requests the design to perform at the same level when the model changes. If the underlying regression model is known, the D-optimal design (DOD) is the most effective on parameter estimation, but DOD is not robust against the model change. The uniform design is robust against the model change, but they are less efficient if the underlying model is completely known and more accurate than the overall mean model. The orthogonal design has good performance in both of efficiency and robustness, but it has a large space for improvements. To incorporate both robustness and effectiveness, we (Fang, Lin and Peng (2022)) proposed a new type of composite designs. According to the performances on prediction mean square error in selected practical models, the recommendation of designs is addressed. Many case studies are investigated, and the application to the chemometrics is mentioned. With the development of science and technology, computer experiments have gained more and more attention in past decades. Engineers and scientists have implemented computer simulations on physical systems due to the complex relationships between the inputs and outputs. Many space-filling designs including the latin hypercube design and the uniform design have been proposed and widely used in real case studies. Fang, Li, and Sudjianto (2005) gave a comprehensive introduction to the design and modeling of computer experiments. Due to the computational complexity of constructing UDs, the current widely used the uniform designs (UD) are constructed over a discrete (lattice points) space. If the factors of interest are continuous and involved in a computer experiment, we wish the levels of factors are allowed to be continuous in the design since the corresponding experimental cost is not affected. In the literature, most of UDs are constructed by a stochastic heuristic, threshold accepting algorithm. However, this algorithm is not suitable on the continuous domain. Note that constructing UD is minimizing a given discrepancy and is an optimization problem. We (Lai, Fang, Peng, Lin (2021)) proposed an approach to searching UDs on a continuous domain by coordinate descent methods. Several case studies show that the UDs on the continuous domain can improve the experimental achievement compared to the UDs on the discrete domain.

Modern Experimental Design

Modern Experimental Design
Author: Thomas P. Ryan
Publisher: John Wiley & Sons
Total Pages: 624
Release: 2007-02-02
Genre: Mathematics
ISBN: 0471210773

A complete and well-balanced introduction to modern experimental design Using current research and discussion of the topic along with clear applications, Modern Experimental Design highlights the guiding role of statistical principles in experimental design construction. This text can serve as both an applied introduction as well as a concise review of the essential types of experimental designs and their applications. Topical coverage includes designs containing one or multiple factors, designs with at least one blocking factor, split-unit designs and their variations as well as supersaturated and Plackett-Burman designs. In addition, the text contains extensive treatment of: Conditional effects analysis as a proposed general method of analysis Multiresponse optimization Space-filling designs, including Latin hypercube and uniform designs Restricted regions of operability and debarred observations Analysis of Means (ANOM) used to analyze data from various types of designs The application of available software, including Design-Expert, JMP, and MINITAB This text provides thorough coverage of the topic while also introducing the reader to new approaches. Using a large number of references with detailed analyses of datasets, Modern Experimental Design works as a well-rounded learning tool for beginners as well as a valuable resource for practitioners.

Statistical Design and Analysis of Experiments

Statistical Design and Analysis of Experiments
Author: Robert L. Mason
Publisher: John Wiley & Sons
Total Pages: 752
Release: 2003-05-09
Genre: Mathematics
ISBN: 0471458511

Emphasizes the strategy of experimentation, data analysis, and the interpretation of experimental results. Features numerous examples using actual engineering and scientific studies. Presents statistics as an integral component of experimentation from the planning stage to the presentation of the conclusions. Deep and concentrated experimental design coverage, with equivalent but separate emphasis on the analysis of data from the various designs. Topics can be implemented by practitioners and do not require a high level of training in statistics. New edition includes new and updated material and computer output.

Quality by Experimental Design

Quality by Experimental Design
Author: Thomas B. Barker
Publisher: CRC Press
Total Pages: 740
Release: 2016-01-27
Genre: Business & Economics
ISBN: 1482249677

Achieve Technological Advancements in Applied Science and Engineering Using Efficient Experiments That Consume the Least Amount of ResourcesWritten by longtime experimental design guru Thomas B. Barker and experimental development/Six Sigma expert Andrew Milivojevich, Quality by Experimental Design, Fourth Edition shows how to design and analyze ex

Design and Analysis of Experiments, Volume 2

Design and Analysis of Experiments, Volume 2
Author: Klaus Hinkelmann
Publisher: John Wiley & Sons
Total Pages: 812
Release: 2005-05-13
Genre: Mathematics
ISBN: 047170993X

The development and introduction of new experimental designs in the last fifty years has been quite staggering, brought about largely by an ever-widening field of applications. Design and Analysis of Experiments, Volume 2: Advanced Experimental Design is the second of a two-volume body of work that builds upon the philosophical foundations of experimental design set forth by Oscar Kempthorne half a century ago and updates it with the latest developments in the field. Designed for advanced-level graduate students and industry professionals, this text includes coverage of incomplete block and row-column designs; symmetrical, asymmetrical, and fractional factorial designs; main effect plans and their construction; supersaturated designs; robust design, or Taguchi experiments; lattice designs; and cross-over designs.

Optimal Experimental Design

Optimal Experimental Design
Author: Jesús López-Fidalgo
Publisher: Springer Nature
Total Pages: 228
Release: 2023-10-14
Genre: Mathematics
ISBN: 3031359186

This textbook provides a concise introduction to optimal experimental design and efficiently prepares the reader for research in the area. It presents the common concepts and techniques for linear and nonlinear models as well as Bayesian optimal designs. The last two chapters are devoted to particular themes of interest, including recent developments and hot topics in optimal experimental design, and real-world applications. Numerous examples and exercises are included, some of them with solutions or hints, as well as references to the existing software for computing designs. The book is primarily intended for graduate students and young researchers in statistics and applied mathematics who are new to the field of optimal experimental design. Given the applications and the way concepts and results are introduced, parts of the text will also appeal to engineers and other applied researchers.

The Design and Analysis of Computer Experiments

The Design and Analysis of Computer Experiments
Author: Thomas J. Santner
Publisher: Springer
Total Pages: 436
Release: 2019-01-08
Genre: Mathematics
ISBN: 1493988476

This book describes methods for designing and analyzing experiments that are conducted using a computer code, a computer experiment, and, when possible, a physical experiment. Computer experiments continue to increase in popularity as surrogates for and adjuncts to physical experiments. Since the publication of the first edition, there have been many methodological advances and software developments to implement these new methodologies. The computer experiments literature has emphasized the construction of algorithms for various data analysis tasks (design construction, prediction, sensitivity analysis, calibration among others), and the development of web-based repositories of designs for immediate application. While it is written at a level that is accessible to readers with Masters-level training in Statistics, the book is written in sufficient detail to be useful for practitioners and researchers. New to this revised and expanded edition: • An expanded presentation of basic material on computer experiments and Gaussian processes with additional simulations and examples • A new comparison of plug-in prediction methodologies for real-valued simulator output • An enlarged discussion of space-filling designs including Latin Hypercube designs (LHDs), near-orthogonal designs, and nonrectangular regions • A chapter length description of process-based designs for optimization, to improve good overall fit, quantile estimation, and Pareto optimization • A new chapter describing graphical and numerical sensitivity analysis tools • Substantial new material on calibration-based prediction and inference for calibration parameters • Lists of software that can be used to fit models discussed in the book to aid practitioners

Design and Analysis of Experiments, Volume 3

Design and Analysis of Experiments, Volume 3
Author: Klaus Hinkelmann
Publisher: John Wiley & Sons
Total Pages: 598
Release: 2012-02-14
Genre: Mathematics
ISBN: 0470530685

Provides timely applications, modifications, and extensions of experimental designs for a variety of disciplines Design and Analysis of Experiments, Volume 3: Special Designs and Applications continues building upon the philosophical foundations of experimental design by providing important, modern applications of experimental design to the many fields that utilize them. The book also presents optimal and efficient designs for practice and covers key topics in current statistical research. Featuring contributions from leading researchers and academics, the book demonstrates how the presented concepts are used across various fields from genetics and medicinal and pharmaceutical research to manufacturing, engineering, and national security. Each chapter includes an introduction followed by the historical background as well as in-depth procedures that aid in the construction and analysis of the discussed designs. Topical coverage includes: Genetic cross experiments, microarray experiments, and variety trials Clinical trials, group-sequential designs, and adaptive designs Fractional factorial and search, choice, and optimal designs for generalized linear models Computer experiments with applications to homeland security Robust parameter designs and split-plot type response surface designs Analysis of directional data experiments Throughout the book, illustrative and numerical examples utilize SAS®, JMP®, and R software programs to demonstrate the discussed techniques. Related data sets and software applications are available on the book's related FTP site. Design and Analysis of Experiments, Volume 3 is an ideal textbook for graduate courses in experimental design and also serves as a practical, hands-on reference for statisticians and researchers across a wide array of subject areas, including biological sciences, engineering, medicine, and business.