A Primer on Mathematical Modelling

A Primer on Mathematical Modelling
Author: Alfio Quarteroni,Paola Gervasio
Publsiher: Springer Nature
Total Pages: 238
Release: 2020-10-09
Genre: Mathematics
ISBN: 9783030445416

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In this book we describe the magic world of mathematical models: starting from real-life problems, we formulate them in terms of equations, transform equations into algorithms and algorithms into programs to be executed on computers. A broad variety of examples and exercises illustrate that properly designed models can, e.g.: predict the way the number of dolphins in the Aeolian Sea will change as food availability and fishing activity vary; describe the blood flow in a capillary network; calculate the PageRank of websites. This book also includes a chapter with an elementary introduction to Octave, an open-source programming language widely used in the scientific community. Octave functions and scripts for dealing with the problems presented in the text can be downloaded from https://paola-gervasio.unibs.it/quarteroni-gervasio This book is addressed to any student interested in learning how to construct and apply mathematical models.

A Primer in Mathematical Models in Biology

A Primer in Mathematical Models in Biology
Author: Lee A. Segel,Leah Edelstein-Keshet
Publsiher: SIAM
Total Pages: 435
Release: 2013-05-09
Genre: Science
ISBN: 9781611972498

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A textbook on mathematical modelling techniques with powerful applications to biology, combining theoretical exposition with exercises and examples.

Mathematical Modelling

Mathematical Modelling
Author: Murray S. Klamkin
Publsiher: SIAM
Total Pages: 346
Release: 1987-01-01
Genre: Technology & Engineering
ISBN: 9780898712049

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Mathematics of Computing -- Miscellaneous.

Principles of Mathematical Modelling

Principles of Mathematical Modelling
Author: Alexander A. Samarskii,Alexander P. Mikhailov
Publsiher: CRC Press
Total Pages: 360
Release: 2001-12-20
Genre: Mathematics
ISBN: 9781482288131

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Mathematical modeling is becoming increasingly versatile and multi-disciplinary. This text demonstrates the broadness of this field as the authors consider the principles of model construction and use common approaches to build models from a range of subject areas. The book reflects the interests and experiences of the authors, but it explores math

Mathematical Modeling

Mathematical Modeling
Author: J. N. Kapur
Publsiher: Mercury Learning and Information
Total Pages: 428
Release: 2023-02-28
Genre: Mathematics
ISBN: 9781683928720

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This book can be used in courses on mathematical modeling at the senior undergraduate or graduate level, or used as a reference for in-service scientists and engineers. The book aims to provide an overview of mathematical modeling through a panoramic view of applications of mathematics in science and technology. In each chapter, mathematical models are chosen from the physical, biological, social, economic, management, and engineering sciences. The models deal with different concepts, but have a common mathematical structure and bring out the unifying influence of mathematical modeling in different disciplines. FEATURES: Provides a balance between theory and applications Features models from the physical, biological, social, economic, management, and engineering sciences

A Primer for a Secret Shortcut to PDEs of Mathematical Physics

A Primer for a Secret Shortcut to PDEs of Mathematical Physics
Author: Des McGhee,Rainer Picard,Sascha Trostorff,Marcus Waurick
Publsiher: Springer Nature
Total Pages: 191
Release: 2020-08-24
Genre: Mathematics
ISBN: 9783030473334

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​This book presents a concise introduction to a unified Hilbert space approach to the mathematical modelling of physical phenomena which has been developed over recent years by Picard and his co-workers. The main focus is on time-dependent partial differential equations with a particular structure in the Hilbert space setting that ensures well-posedness and causality, two essential properties of any reasonable model in mathematical physics or engineering.However, the application of the theory to other types of equations is also demonstrated. By means of illustrative examples, from the straightforward to the more complex, the authors show that many of the classical models in mathematical physics as well as more recent models of novel materials and interactions are covered, or can be restructured to be covered, by this unified Hilbert space approach. The reader should require only a basic foundation in the theory of Hilbert spaces and operators therein. For convenience, however, some of the more technical background requirements are covered in detail in two appendices The theory is kept as elementary as possible, making the material suitable for a senior undergraduate or master’s level course. In addition, researchers in a variety of fields whose work involves partial differential equations and applied operator theory will also greatly benefit from this approach to structuring their mathematical models in order that the general theory can be applied to ensure the essential properties of well-posedness and causality.

Mathematical Modelling

Mathematical Modelling
Author: Seyed M. Moghadas,Majid Jaberi-Douraki
Publsiher: John Wiley & Sons
Total Pages: 192
Release: 2018-07-24
Genre: Mathematics
ISBN: 9781119484028

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An important resource that provides an overview of mathematical modelling Mathematical Modelling offers a comprehensive guide to both analytical and computational aspects of mathematical modelling that encompasses a wide range of subjects. The authors provide an overview of the basic concepts of mathematical modelling and review the relevant topics from differential equations and linear algebra. The text explores the various types of mathematical models, and includes a range of examples that help to describe a variety of techniques from dynamical systems theory. The book’s analytical techniques examine compartmental modelling, stability, bifurcation, discretization, and fixed-point analysis. The theoretical analyses involve systems of ordinary differential equations for deterministic models. The text also contains information on concepts of probability and random variables as the requirements of stochastic processes. In addition, the authors describe algorithms for computer simulation of both deterministic and stochastic models, and review a number of well-known models that illustrate their application in different fields of study. This important resource: Includes a broad spectrum of models that fall under deterministic and stochastic classes and discusses them in both continuous and discrete forms Demonstrates the wide spectrum of problems that can be addressed through mathematical modelling based on fundamental tools and techniques in applied mathematics and statistics Contains an appendix that reveals the overall approach that can be taken to solve exercises in different chapters Offers many exercises to help better understand the modelling process Written for graduate students in applied mathematics, instructors, and professionals using mathematical modelling for research and training purposes, Mathematical Modelling: A Graduate Textbook covers a broad range of analytical and computational aspects of mathematical modelling.

A Course in Mathematical Modeling

A Course in Mathematical Modeling
Author: Douglas D. Mooney,Randall J. Swift
Publsiher: American Mathematical Soc.
Total Pages: 453
Release: 1999-12-31
Genre: Mathematics
ISBN: 9780883857120

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The emphasis of this book lies in the teaching of mathematical modeling rather than simply presenting models. To this end the book starts with the simple discrete exponential growth model as a building block, and successively refines it. This involves adding variable growth rates, multiple variables, fitting growth rates to data, including random elements, testing exactness of fit, using computer simulations and moving to a continuous setting. No advanced knowledge is assumed of the reader, making this book suitable for elementary modeling courses. The book can also be used to supplement courses in linear algebra, differential equations, probability theory and statistics.