Numerical Analysis and Optimization

Numerical Analysis and Optimization
Author: Mehiddin Al-Baali
Publisher: Springer
Total Pages: 351
Release: 2015-07-16
Genre: Mathematics
ISBN: 3319176897

Presenting the latest findings in the field of numerical analysis and optimization, this volume balances pure research with practical applications of the subject. Accompanied by detailed tables, figures, and examinations of useful software tools, this volume will equip the reader to perform detailed and layered analysis of complex datasets. Many real-world complex problems can be formulated as optimization tasks. Such problems can be characterized as large scale, unconstrained, constrained, non-convex, non-differentiable, and discontinuous, and therefore require adequate computational methods, algorithms, and software tools. These same tools are often employed by researchers working in current IT hot topics such as big data, optimization and other complex numerical algorithms on the cloud, devising special techniques for supercomputing systems. The list of topics covered include, but are not limited to: numerical analysis, numerical optimization, numerical linear algebra, numerical differential equations, optimal control, approximation theory, applied mathematics, algorithms and software developments, derivative free optimization methods and programming models. The volume also examines challenging applications to various types of computational optimization methods which usually occur in statistics, econometrics, finance, physics, medicine, biology, engineering and industrial sciences.

Variational Methods

Variational Methods
Author: Maïtine Bergounioux
Publisher: Walter de Gruyter GmbH & Co KG
Total Pages: 540
Release: 2017-01-11
Genre: Mathematics
ISBN: 3110430398

With a focus on the interplay between mathematics and applications of imaging, the first part covers topics from optimization, inverse problems and shape spaces to computer vision and computational anatomy. The second part is geared towards geometric control and related topics, including Riemannian geometry, celestial mechanics and quantum control. Contents: Part I Second-order decomposition model for image processing: numerical experimentation Optimizing spatial and tonal data for PDE-based inpainting Image registration using phase・amplitude separation Rotation invariance in exemplar-based image inpainting Convective regularization for optical flow A variational method for quantitative photoacoustic tomography with piecewise constant coefficients On optical flow models for variational motion estimation Bilevel approaches for learning of variational imaging models Part II Non-degenerate forms of the generalized Euler・Lagrange condition for state-constrained optimal control problems The Purcell three-link swimmer: some geometric and numerical aspects related to periodic optimal controls Controllability of Keplerian motion with low-thrust control systems Higher variational equation techniques for the integrability of homogeneous potentials Introduction to KAM theory with a view to celestial mechanics Invariants of contact sub-pseudo-Riemannian structures and Einstein・Weyl geometry Time-optimal control for a perturbed Brockett integrator Twist maps and Arnold diffusion for diffeomorphisms A Hamiltonian approach to sufficiency in optimal control with minimal regularity conditions: Part I Index

Bayesian Inverse Problems

Bayesian Inverse Problems
Author: Juan Chiachio-Ruano
Publisher: CRC Press
Total Pages: 248
Release: 2021-11-11
Genre: Mathematics
ISBN: 1351869663

This book is devoted to a special class of engineering problems called Bayesian inverse problems. These problems comprise not only the probabilistic Bayesian formulation of engineering problems, but also the associated stochastic simulation methods needed to solve them. Through this book, the reader will learn how this class of methods can be useful to rigorously address a range of engineering problems where empirical data and fundamental knowledge come into play. The book is written for a non-expert audience and it is contributed to by many of the most renowned academic experts in this field.

Bayesian Approach to Inverse Problems

Bayesian Approach to Inverse Problems
Author: Jérôme Idier
Publisher: John Wiley & Sons
Total Pages: 322
Release: 2013-03-01
Genre: Mathematics
ISBN: 111862369X

Many scientific, medical or engineering problems raise the issue of recovering some physical quantities from indirect measurements; for instance, detecting or quantifying flaws or cracks within a material from acoustic or electromagnetic measurements at its surface is an essential problem of non-destructive evaluation. The concept of inverse problems precisely originates from the idea of inverting the laws of physics to recover a quantity of interest from measurable data. Unfortunately, most inverse problems are ill-posed, which means that precise and stable solutions are not easy to devise. Regularization is the key concept to solve inverse problems. The goal of this book is to deal with inverse problems and regularized solutions using the Bayesian statistical tools, with a particular view to signal and image estimation. The first three chapters bring the theoretical notions that make it possible to cast inverse problems within a mathematical framework. The next three chapters address the fundamental inverse problem of deconvolution in a comprehensive manner. Chapters 7 and 8 deal with advanced statistical questions linked to image estimation. In the last five chapters, the main tools introduced in the previous chapters are put into a practical context in important applicative areas, such as astronomy or medical imaging.

Optimal Design of Experiments

Optimal Design of Experiments
Author: Peter Goos
Publisher: John Wiley & Sons
Total Pages: 249
Release: 2011-06-28
Genre: Science
ISBN: 1119976162

"This is an engaging and informative book on the modern practice of experimental design. The authors' writing style is entertaining, the consulting dialogs are extremely enjoyable, and the technical material is presented brilliantly but not overwhelmingly. The book is a joy to read. Everyone who practices or teaches DOE should read this book." - Douglas C. Montgomery, Regents Professor, Department of Industrial Engineering, Arizona State University "It's been said: 'Design for the experiment, don't experiment for the design.' This book ably demonstrates this notion by showing how tailor-made, optimal designs can be effectively employed to meet a client's actual needs. It should be required reading for anyone interested in using the design of experiments in industrial settings." —Christopher J. Nachtsheim, Frank A Donaldson Chair in Operations Management, Carlson School of Management, University of Minnesota This book demonstrates the utility of the computer-aided optimal design approach using real industrial examples. These examples address questions such as the following: How can I do screening inexpensively if I have dozens of factors to investigate? What can I do if I have day-to-day variability and I can only perform 3 runs a day? How can I do RSM cost effectively if I have categorical factors? How can I design and analyze experiments when there is a factor that can only be changed a few times over the study? How can I include both ingredients in a mixture and processing factors in the same study? How can I design an experiment if there are many factor combinations that are impossible to run? How can I make sure that a time trend due to warming up of equipment does not affect the conclusions from a study? How can I take into account batch information in when designing experiments involving multiple batches? How can I add runs to a botched experiment to resolve ambiguities? While answering these questions the book also shows how to evaluate and compare designs. This allows researchers to make sensible trade-offs between the cost of experimentation and the amount of information they obtain.

Safety, Reliability, Risk and Life-Cycle Performance of Structures and Infrastructures

Safety, Reliability, Risk and Life-Cycle Performance of Structures and Infrastructures
Author: George Deodatis
Publisher: CRC Press
Total Pages: 1112
Release: 2014-02-10
Genre: Technology & Engineering
ISBN: 1315884887

Safety, Reliability, Risk and Life-Cycle Performance of Structures and Infrastructures contains the plenary lectures and papers presented at the 11th International Conference on STRUCTURAL SAFETY AND RELIABILITY (ICOSSAR2013, New York, NY, USA, 16-20 June 2013), and covers major aspects of safety, reliability, risk and life-cycle performance of str

Foundations of Optimum Experimental Design

Foundations of Optimum Experimental Design
Author: Andrej Pázman
Publisher: Springer
Total Pages: 256
Release: 1986-01-31
Genre: Computers
ISBN:

Introductory remarks about the experiment and its disign. The regression model and methods of estimation. The ordering of designs and the properties of variaces of estimates. Optimality critaria in the regression model. Iterative computation of optimum desings Design of experiments in particular cases. The functional model and measurements of physical fields.

Hydro-Environmental Analysis

Hydro-Environmental Analysis
Author: James L. Martin
Publisher: CRC Press
Total Pages: 5742
Release: 2013-12-04
Genre: Science
ISBN: 1138000868

Focusing on fundamental principles, Hydro-Environmental Analysis: Freshwater Environments presents in-depth information about freshwater environments and how they are influenced by regulation. It provides a holistic approach, exploring the factors that impact water quality and quantity, and the regulations, policy and management methods that are necessary to maintain this vital resource. It offers a historical viewpoint as well as an overview and foundation of the physical, chemical, and biological characteristics affecting the management of freshwater environments. The book concentrates on broad and general concepts, providing an interdisciplinary foundation. The author covers the methods of measurement and classification; chemical, physical, and biological characteristics; indicators of ecological health; and management and restoration. He also considers common indicators of environmental health; characteristics and operations of regulatory control structures; applicable laws and regulations; and restoration methods. The text delves into rivers and streams in the first half and lakes and reservoirs in the second half. Each section centers on the characteristics of those systems and methods of classification, and then moves on to discuss the physical, chemical, and biological characteristics of each. In the section on lakes and reservoirs, it examines the characteristics and operations of regulatory structures, and presents the methods commonly used to assess the environmental health or integrity of these water bodies. It also introduces considerations for restoration, and presents two unique aquatic environments: wetlands and reservoir tailwaters. Written from an engineering perspective, the book is an ideal introduction to the aquatic and limnological sciences for students of environmental science, as well as students of environmental engineering. It also serves as a reference for engineers and scientists involved in the management, regulation, or restoration of freshwater environments.

On the Advancement of Optimal Experimental Design with Applications to Infectious Diseases

On the Advancement of Optimal Experimental Design with Applications to Infectious Diseases
Author: David Price
Publisher:
Total Pages: 208
Release: 2015
Genre: Bayesian statistical decision theory
ISBN:

In this thesis, we investigate the optimal experimental design of some common biological experiments. The theory of optimal experimental design is a statistical tool that allows us to determine the optimal experimental protocol to gain the most information about a particular process, given constraints on resources. We focus on determining the optimal design for experiments where the underlying model is a Markov chain - a particularly useful stochastic model. Markov chains are commonly used to represent a range of biological systems, for example: the evolution and spread of populations and disease, competition between species, and evolutionary genetics. There has been little research into the optimal experimental design of systems where the underlying process is modelled as a Markov chain, which is surprising given their suitability for representing the random behaviour of many natural processes. While the first paper to consider the optimal experimental design of a system where the underlying process was modelled as a Markov chain was published in the mid 1980's, this research area has only recently started to receive significant attention. Current methods of evaluating the optimal experimental design within a Bayesian framework can be computationally inefficient, or infeasible. This is due to the need for many evaluations of the posterior distribution, and thus, the model likelihood - which is computationally intensive for most non-linear stochastic processes. We implement an existing method for determining the optimal Bayesian experimental design to a common epidemic model, which has not been considered in a Bayesian framework previously. This method avoids computationally costly likelihood evaluations by implementing a likelihood-free approach to obtain the posterior distribution, known as Approximate Bayesian Computation (ABC). ABC is a class of methods which uses model simulations to estimate the posterior distribution. While this approach to optimal Bayesian experimental design has some advantages, we also note some disadvantages in its implementation. Having noted some drawbacks associated with the current approach to optimal Bayesian experimental design, we propose a new method - called ABCdE - which is more efficient, and easier to implement. ABCdE uses ABC methods to calculate the utility of all designs in a specified region of the design space. For problems with a low-dimensional design space, it evaluates the optimal design in significantly less computation time than the existing methods. We apply ABCdE to some common epidemic models, and compare the optimal Bayesian experimental designs to those published in the literature using existing methods. We present a comparison of how well the designs - obtained from each of the different methods - performs when used for statistical inference. In each case, the optimal designs obtained via ABCdE are similar to those obtained via existing methods, and the statistical performance is indistinguishable. The main applications we consider are concerned with group dose-response challenge experiments. A group dose-response challenge experiment is an experiment in which we expose subjects to a range of doses of an infectious agent or bacteria (or drug), and measure the number that are infected (or, the response) at each dose. These experiments are routinely used to quantify the infectivity or harmful (or safe) levels of an infectious agent or bacteria (e.g., minimum dose required to infect 50% of the population), or the efficacy of a drug. We focus particularly on the introduction of the bacteria Campylobacter jejuni to chickens. C. jejuni can be spread from animals to humans, and is the species most commonly associated with enteric (intestinal) disease in humans. By quantifying the dose-response relationship of the bacteria in chickens - via group dose-response challenge experiments - we can determine the safe levels of bacteria in chickens with the aim to minimise, or eradicate, the risk of transmission amongst the flock, and thus, to humans. Thus, accurate estimates of the dose-response relationship are crucial - and can be obtained efficiently by considering the optimal experimental design. However, the statistical analysis of most dose-response experiments assume that the subjects are independent. Chickens engage in copraphagic activity (oral ingestion of faecal matter), and are social animals meaning they must be housed in groups. Thus, oral-faecal transmission of the bacteria may be present in these experiments, violating the independence assumption and altering the measured dose-response relationship. We use a Markov chain model to represent the dynamics of these experiments, accounting for the latency period of the bacteria, and the transmission between chickens. We determine the optimal experimental design for a range of models, and describe the relationship between different model aspects and the resulting designs.