Limit search to available items
Book Cover
E-book
Author Tuckerman, Mark E. (Mark Edward), author.

Title Statistical mechanics : theory and molecular simulation / Mark E. Tuckerman
Edition Second edition
Published Oxford : Oxford University Press, 2023

Copies

Description 1 online resource (xii, 860 pages) : illustrations
Series Oxford graduate texts
Oxford graduate texts.
Summary "Complex problems that cross traditional disciplinary lines between physics, chemistry, biology, and materials science can be studied at an unprecedented level of detail using increasingly sophisticated theoretical methodology and high-speed computing platforms. The tools of statistical mechanics provide the bridge between the atomistic descriptions of these complex systems and the macroscopic observables accessible to experimental investigations and predictable in computer simulations. The aim of this book is to prepare burgeoning users and developers to become active researchers in the theoretical and computational molecular sciences by uniting, in one monograph, the theoretical underpinnings of equilibrium and time-dependent classical and quantum statistical mechanics with modern computational techniques used to put these concepts into practice to address real-world applications. The book contains detailed reviews of classical and quantum mechanics and in-depth discussions of the most commonly used statistical ensembles side by side with modern computational methods such as molecular dynamics, Monte Carlo, advanced configurational and trajectory sampling approaches, free-energy based rare-event sampling approaches, Feynman path integral techniques, linear response theory and time correlation functions, stochastic methods, critical phenomena, and an introduction to machine learning and its uses in statistical mechanics. Readers of this book will be provided, in a pedagogical manner, with a firm foundation in both the theory and practical implementation of statistical mechanical concepts, thus allowing them to approach application technology with an understanding of the underlying algorithms and to become, themselves, creators of new and powerful approaches for solving challenging research problems"-- Provided by publisher
Notes This edition also issued in print: 2023
Previous edition: 2010
Bibliography Includes bibliographical references and index
Audience Specialized
Notes Description based on online resource and publisher information; title from PDF title page (viewed on August 24, 2023)
Subject Statistical mechanics.
Statistical mechanics -- Computer simulation
Statistical mechanics
Statistical mechanics -- Computer simulation
Form Electronic book
ISBN 9780191864582
0191864587
9780192559616
0192559613