Advanced mathematical modeling with technology
著者
書誌事項
Advanced mathematical modeling with technology
(Advances in applied mathematics / series editor, Daniel Zwillinger)
CRC Press [manufacture], 2021
- : hbk
大学図書館所蔵 全1件
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注記
Includes bibliographical references and index
内容説明・目次
内容説明
Mathematical modeling is both a skill and an art and must be practiced in order to maintain and enhance the ability to use those skills. Though the topics covered in this book are the typical topics of most mathematical modeling courses, this book is best used for individuals or groups who have already taken an introductory mathematical modeling course. This book will be of interest to instructors and students offering courses focused on discrete modeling or modeling for decision making.
目次
1. Perfect Partners: Mathematical Modeling and Technology. 1.1. Overview of Some Real Big Problems and The Process of Mathematical Modeling. 1.2. The Modeling Process. 1.3. Illustrative Examples. 1.4. Technology. 1.5. Exercises. 1.6 Projects. 1.7. References and Suggested Future Readings. 2. Review of Modeling with Discrete Dynamical Systems and Modeling Systems of DDS. 2.1. Introduction and Review of Modeling with Discrete Dynamical Systems. 2.2. Equilibrium and Stability Values and Long-Term Behavior. 2.3. Introduction to Systems of Discrete Dynamical Systems. 2.4. Iteration and Graphical Solution. 2.5. Modeling of Predator - Prey Model, Sir Model, and Military Models. 2.6. Technology Examples for Discrete Dynamical Systems. 2.7. Exercises. 2.8. Projects. 2.9. References and Suggested Future Readings. 3. Modeling with Differential Equations. 3.1. Applied First Order Models. 3.2. Slope Fields and Qualitative Assessments of Autonomous First Order ODE. 3.3 Analytical Solution to 1st Order ODEs. 3.4 Numerical Methods for Solutions to 1st Order Odes with Technology. 3.5. Technology Examples for Ordinary Differential Equations. 3.6. Exercises. 3.7. Projects. 3.8. References and Suggested Future Readings. 4. Modeling System of Ordinary Differential Equations. 4.1. Introduction. 4.2. Applied Systems of Differential Equations. 4.3. Qualitative Assessment of Autonomous Systems of First Order Differential Equations. 4.4. Solving Homogeneous and Non-Homogeneous Systems. 4.5. Technology Examples for Systems of Ordinary Differential Equations. 4.6. Exercises. 4.7. Projects. 4.8. References and Suggested Future Readings. 5. Regression and Advanced Regression Methods and Models. 5.1. Introduction. 5.2. Nonlinear Regression. 5.3. Technology Examples for Regression. 5.4. Logistics Regression Models. 5.5. Technology Examples for Poisson Regression. 5.6. Exercises. 5.7. Projects. 5.8. References and Suggested Future Readings. 6. Linear Integer and Mixed Integer Programming. 6.1. Introduction. 6.2. formulating Linear Programming Problems. 6.3. Graphical Linear Programming. 6.4. Technology Examples for Linear Programming. 6.5. Linear Programming Case Study. 6.6. Sensitivity Analysis with Technology. 6.7. Exercises. 6.8. Projects. 6.9. References and Suggested Further Reading. 7. Nonlinear Optimization Methods. 7.1. Introduction. 7.2. Unconstrained Single Variable Optimization and Basic Theory. 7.3. Models with Basic Applications of Max-Min Theory. 7.4. Technology Examples for Nonlinear Optimization. 7.5. Single Variable Numerical Search Techniques with Technology. 7.6. Exercises. 7.7. Projects. 7.8. References and Suggested Further Readings. 8. Multivariable Optimization. 8.1. Introduction. 8.2. Unconstrained Optimization. 8.3. Multivariable Numerical Search Methods for Unconstrained Optimization. 8.4. Constrained Optimization. 8.5. inequality Constraints-Kuhn-Tucker (KTC) Necessary/Sufficient Conditions. 8.6. Technology Examples for Computational KTC. 8.7. Exercises. 8.8. Projects. 8.9. References and Suggested Reading. 9. Simulation Models. 9.1. Introduction. 9.2. Random Number and Monte Carlo Simulation. 9.3. Probability and Monte Carlo Simulation Using Deterministic Behavior. 9.4. Deterministic Simulations in R and Maple. 9.5. Probability and Monte Carlo Simulation Using Probabilistic Behavior. 9.6. Applied Simulations and Queuing Models. 9.7. Exercises. 9.8. Projects. 9.9. References and Suggested Readings. 10. Modeling Decision Making with Multi-Attribute Decision Modeling with Technology. 10.1. Introduction. 10.2. Weighting Methods. 10.3. Pairwise Comparison by Saaty (AHP). 10.4. Entropy Method. 10.5. Simple Additive Weights (Saw) Method. 10.6. Technique of Order Preference by Similarly to the Ideal Solution (TOPSIS). 10.7. Modeling of Ranking Units Using Data Envelopment Analysis (DEA) with Linear Programming. 10.8. Technology for Multi-Attribute Decision Making. 10.9. Exercises. 10.10. Projects. 10.11. References and Suggested Readings. 11. Modeling with Game Theory. 11.1. Introduction to total Conflict (Zero-Sum) Games. 11.2. Finding Alternate Optimal Solutions in A Two Person Zero-Sum Game. 11.3. The Partial Conflict Game Analysis without Communication. 11.4. Methods to Obtain the Equalizing Strategies. 11.5. Nash Arbitration Method. 11.6. Illustrative Modeling Examples of Zero-Sum Games. 11.7. Partial Conflict Games Illustrative Examples. 11.8. Exercises. 11.9. Projects. 11.10. References and Suggested Readings. 12. Appendix Using R. Index
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