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Computer Simulation Validation: Fundamental Concepts, Methodological Frameworks, and Philosophical Perspectives 2019 ed. [Kõva köide]

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  • Formaat: Hardback, 1074 pages, kõrgus x laius: 235x155 mm, kaal: 1771 g, 58 Illustrations, color; 47 Illustrations, black and white; XIII, 1074 p. 105 illus., 58 illus. in color., 1 Hardback
  • Sari: Simulation Foundations, Methods and Applications
  • Ilmumisaeg: 24-Apr-2019
  • Kirjastus: Springer International Publishing AG
  • ISBN-10: 3319707655
  • ISBN-13: 9783319707655
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  • Formaat: Hardback, 1074 pages, kõrgus x laius: 235x155 mm, kaal: 1771 g, 58 Illustrations, color; 47 Illustrations, black and white; XIII, 1074 p. 105 illus., 58 illus. in color., 1 Hardback
  • Sari: Simulation Foundations, Methods and Applications
  • Ilmumisaeg: 24-Apr-2019
  • Kirjastus: Springer International Publishing AG
  • ISBN-10: 3319707655
  • ISBN-13: 9783319707655

Computer simulation is a new method that has become a standard technique in many natural and social sciences. Validation comprises the efforts to show that computer simulations provide faithful representations of their target systems. Thus far, validation has much been neglected in the literature, and working scientists have expressed uncertainty about how they should build trust their simulation results. In practice, validation is often neglected completely or only done in a sloppy way. As a consequence, some purported results from computer simulations have later turned out to rest on numerical artefacts. In the absence of clear guidelines, the method of computer simulation, successful as it might seem, is not yet fully developed.

To validate the results of simulations is to make a case for them, to argue that they are realistic, or to enhance their plausibility. Put this way, validation seems fairly straightforward, but, as a matter of fact, it is not well-understood and even controversial from a theoretical point of view. Already the very term “validation” is a matter of debate, as the term is misleading because a simulation cannot be shown to be true or valid except in trivial cases. It is further discussed how validation is related to what people call verification, i.e. the attempt to show that a simulation reliably traces the predictions of a model. Another key question is how one can determine the overall confidence of simulation results if a number of tests have been carried out.

Addressing this dissatisfying understanding of validation, this book presents a methodological and philosophical discussion about the validation of computer simulation and of its techniques. The work covers the basic notions and ideas underlying validation (e.g. the notions of validation, verification and error, are clarified), conceptualizes the concept of validation in frameworks from the philosophy of science (e.g. in Bayesian epistemology), and presents practical guidelines and important techniques for validation (e.g. introducing the quantification of uncertainties). The volume also reviews the challenges of validation (e.g. considering the sparseness of data) and offers examples of best practice. This is achieved through an interdisciplinary collection of authors that includes computer scientists (who discuss the most important approaches to validation), mathematicians and statisticians (who present mathematical techniques for validation), and working scientists from various fields (who present best practice examples of validation and reflect about related challenges).
1 Introduction: Computer Simulation Validation 1(34)
Claus Beisbart
Nicole J. Saam
Part I Foundations-Basic Conceptions in Simulation Model Validation
2 What is Validation of Computer Simulations? Toward a Clarification of the Concept of Validation and of Related Notions
35(34)
Claus Beisbart
3 Simulation Accuracy, Uncertainty, and Predictive Capability: A Physical Sciences Perspective
69(30)
William L. Oberkampf
4 Verification and Validation Principles from a Systems Perspective
99(20)
David J. Murray-Smith
5 Errors and Uncertainties: Their Sources and Treatment
119(26)
Christopher J. Roy
Part II Foundations-Validation as a Scientific Method: Philosophical Frameworks for Thinking about Validation
6 Invalidation of Models and Fitness-for-Purpose: A Rejectionist Approach
145(28)
Keith Beven
Stuart Lane
7 Simulation Validation from a Bayesian Perspective
173(30)
Claus Beisbart
8 Validation of Computer Simulations from a Kuhnian Perspective
203(22)
Eckhart Arnold
9 Understanding Simulation Validation-The Hermeneutic Perspective
225(24)
Nicole J. Saam
Part III Methodology-Preparatory Steps
10 Assessing the Credibility of Conceptual Models
249(22)
Axel Gelfert
11 The Foundations of Verification in Modeling and Simulation
271(24)
William J. Rider
12 The Method of Manufactured Solutions for Code Verification
295(24)
Patrick J. Roache
13 Validation Metrics: A Case for Pattern-Based Methods
319(20)
Robert E. Marks
14 Analysing Output from Stochastic Computer Simulations: An Overview
339(18)
Christine S.M. Currie
Part IV Methodology-Points of Reference and Related Techniques
15 The Use of Experimental Data in Simulation Model Validation
357(26)
David J. Murray-Smith
16 How to Use and Derive Stylized Facts for Validating Simulation Models
383(22)
Matthias Meyer
17 The Users' Judgements-The Stakeholder Approach to Simulation Validation
405(28)
Nicole J. Saam
18 Validation Benchmarks and Related Metrics
433(32)
Nicole J. Saam
Part V Methodology-Mathematical Frameworks and Related Techniques
19 Testing Simulation Models Using Frequentist Statistics
465(32)
Andrew P. Robinson
20 Validation Using Bayesian Methods
497(28)
Xiaomo Jiang
Xueyu Cheng
Yong Yuan
21 Imprecise Probabilities
525(16)
Seamus Bradley
22 Objective Uncertainty Quantification
541(22)
Edward R. Dougherty
Lori A. Dalton
Roozbeh Dehghannasiri
Part VI Methodology-The Organization and Management of Simulation Validation
23 Standards for Evaluation of Atmospheric Models in Environmental Meteorology
563(24)
K. Heinke Schlunzen
24 The Management of Simulation Validation
587(20)
Fei Liu
Ming Yang
25 Valid and Reproducible Simulation Studies-Making It Explicit
607(24)
Oliver Reinhardt
Tom Warnke
Andreas Ruscheinski
Adelinde M. Uhrmacher
Part VII Validation at Work-Best Practice-Examples
26 Validation of Particle Physics Simulation
631(30)
Peter Mattig
27 Validation in Fluid Dynamics and Related Fields
661(24)
Patrick J. Roache
28 Astrophysical Validation
685(26)
Alan C. Calder
Dean M. Townsley
29 Validation in Weather Forecasting
711(26)
Susanne Theis
Michael Baldauf
30 Validation of Climate Models: An Essential Practice
737(26)
Richard B. Rood
31 Validation of Agent-Based Models in Economics and Finance
763(28)
Giorgio Fagiolo
Mattia Guerini
Francesco Lamperti
Alessio Moneta
Andrea Roventini
Part VIII Challenges in Simulation Model Validation
32 Validation and Equifinality
791(20)
Keith Beven
33 Validation and Over-Parameterization-Experiences from Hydrological Modeling
811(24)
Jan Seibert
Maria Staudinger
H.J. van Meerveld
34 Uncertainty Quantification Using Multiple Models-Prospects and Challenges
835(22)
Reto Knutti
Christoph Baumberger
Gertrude Hirsch Hadorn
35 Challenges to Simulation Validation in the Social Sciences. A Critical Rationalist Perspective
857(24)
Michael Mas
36 Validation and the Uniqueness of Historical Events
881(20)
Josef Kostlbauer
Part IX Reflecting on Simulation Validation: Philosophical Perspectives and Discussion Points
37 What is a Computer Simulation and What does this Mean for Simulation Validation?
901(24)
Claus Beisbart
38 How Do the Validations of Simulations and Experiments Compare?
925(18)
Anouk Barberousse
Julie Jebeile
39 How Does Holism Challenge the Validation of Computer Simulation?
943(18)
Johannes Lenhard
40 What Types of Values Enter Simulation Validation and What Are Their Roles?
961(20)
Gertrude Hirsch Hadorn
Christoph Baumberger
41 Calibration, Validation, and Confirmation
981(24)
Mathias Frisch
42 Should Validation and Verification be Separated Strictly?
1005(24)
Claus Beisbart
43 The Multidimensional Epistemology of Computer Simulations: Novel Issues and the Need to Avoid the Drunkard's Search Fallacy
1029(28)
Cyrille Imbert
Index 1057
Prof. Dr. Dr. Claus Beisbart is Professor for Philosophy of Science (Extraordinarius) in the Institute for Philosophy at the University of Bern, Switzerland.

Prof. Dr. Nicole J. Saam is Professor for Sociology (Chair) in the Institute of Sociology at Friedrich-Alexander University Erlangen-Nürnberg, Germany.