Description

Book Synopsis

This book provides the mathematical basis for investigating numerically equations from physics, life sciences or engineering. Tools for analysis and algorithms are confronted to a large set of relevant examples that show the difficulties and the limitations of the most naïve approaches. These examples not only provide the opportunity to put into practice mathematical statements, but modeling issues are also addressed in detail, through the mathematical perspective.



Table of Contents

Preface ix

Chapter 1. Ordinary Differential Equations 1

1.1. Introduction to the theory of ordinary differential equations 1

1.1.1. Existence–uniqueness of first-order ordinary differential equations 1

1.1.2. The concept of maximal solution 11

1.1.3. Linear systems with constant coefficients 16

1.1.4. Higher-order differential equations 20

1.1.5. Inverse function theorem and implicit function theorem 21

1.2. Numerical simulation of ordinary differential equations, Euler schemes, notions of convergence, consistence and stability 27

1.2.1. Introduction 27

1.2.2. Fundamental notions for the analysis of numerical ODE methods 29

1.2.3. Analysis of explicit and implicit Euler schemes 33

1.2.4. Higher-order schemes 50

1.2.5. Leslie’s equation (Perron–Frobenius theorem, power method) 51

1.2.6. Modeling red blood cell agglomeration 78

1.2.7. SEI model 87

1.2.8. A chemotaxis problem 93

1.3. Hamiltonian problems 102

1.3.1. The pendulum problem 106

1.3.2. Symplectic matrices; symplectic schemes 112

1.3.3. Kepler problem 125

1.3.4. Numerical results 129

Chapter 2. Numerical Simulation of Stationary Partial Differential Equations: Elliptic Problems 141

2.1. Introduction 141

2.1.1. The 1D model problem; elements of modeling and analysis 144

2.1.2. A radiative transfer problem 155

2.1.3. Analysis elements for multidimensional problems 163

2.2. Finite difference approximations to elliptic equations 166

2.2.1. Finite difference discretization principles 166

2.2.2. Analysis of the discrete problem 173

2.3. Finite volume approximation of elliptic equations 180

2.3.1. Discretization principles for finite volumes 180

2.3.2. Discontinuous coefficients 187

2.3.3. Multidimensional problems 189

2.4. Finite element approximations of elliptic equations 191

2.4.1. P1 approximation in one dimension 191

2.4.2. P2 approximations in one dimension 197

2.4.3. Finite element methods, extension to higher dimensions 200

2.5. Numerical comparison of FD, FV and FE methods 204

2.6. Spectral methods 205

2.7. Poisson–Boltzmann equation; minimization of a convex function, gradient descent algorithm 217

2.8. Neumann conditions: the optimization perspective 224

2.9. Charge distribution on a cord 228

2.10. Stokes problem 235

Chapter 3. Numerical Simulations of Partial Differential Equations: Time-dependent Problems 267

3.1. Diffusion equations 267

3.1.1. L2 stability (von Neumann analysis) and L∞ stability: convergence 269

3.1.2. Implicit schemes 276

3.1.3. Finite element discretization 281

3.1.4. Numerical illustrations 283

3.2. From transport equations towards conservation laws 291

3.2.1. Introduction 291

3.2.2. Transport equation: method of characteristics 295

3.2.3. Upwinding principles: upwind scheme 299

3.2.4. Linear transport at constant speed; analysis of FD and FV schemes 301

3.2.5. Two-dimensional simulations 326

3.2.6. The dynamics of prion proliferation 329

3.3. Wave equation 345

3.4. Nonlinear problems: conservation laws 354

3.4.1. Scalar conservation laws 354

3.4.2. Systems of conservation laws 387

3.4.3. Kinetic schemes 393

Appendices 407

Appendix 1 409

Appendix 2 417

Appendix 3 427

Appendix 4 433

Appendix 5 443

Bibliography 447

Index 455

Mathematics for Modeling and Scientific Computing

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      Publisher: ISTE Ltd and John Wiley & Sons Inc
      Publication Date: 11/11/2016
      ISBN13: 9781848219885, 978-1848219885
      ISBN10: 1848219881

      Description

      Book Synopsis

      This book provides the mathematical basis for investigating numerically equations from physics, life sciences or engineering. Tools for analysis and algorithms are confronted to a large set of relevant examples that show the difficulties and the limitations of the most naïve approaches. These examples not only provide the opportunity to put into practice mathematical statements, but modeling issues are also addressed in detail, through the mathematical perspective.



      Table of Contents

      Preface ix

      Chapter 1. Ordinary Differential Equations 1

      1.1. Introduction to the theory of ordinary differential equations 1

      1.1.1. Existence–uniqueness of first-order ordinary differential equations 1

      1.1.2. The concept of maximal solution 11

      1.1.3. Linear systems with constant coefficients 16

      1.1.4. Higher-order differential equations 20

      1.1.5. Inverse function theorem and implicit function theorem 21

      1.2. Numerical simulation of ordinary differential equations, Euler schemes, notions of convergence, consistence and stability 27

      1.2.1. Introduction 27

      1.2.2. Fundamental notions for the analysis of numerical ODE methods 29

      1.2.3. Analysis of explicit and implicit Euler schemes 33

      1.2.4. Higher-order schemes 50

      1.2.5. Leslie’s equation (Perron–Frobenius theorem, power method) 51

      1.2.6. Modeling red blood cell agglomeration 78

      1.2.7. SEI model 87

      1.2.8. A chemotaxis problem 93

      1.3. Hamiltonian problems 102

      1.3.1. The pendulum problem 106

      1.3.2. Symplectic matrices; symplectic schemes 112

      1.3.3. Kepler problem 125

      1.3.4. Numerical results 129

      Chapter 2. Numerical Simulation of Stationary Partial Differential Equations: Elliptic Problems 141

      2.1. Introduction 141

      2.1.1. The 1D model problem; elements of modeling and analysis 144

      2.1.2. A radiative transfer problem 155

      2.1.3. Analysis elements for multidimensional problems 163

      2.2. Finite difference approximations to elliptic equations 166

      2.2.1. Finite difference discretization principles 166

      2.2.2. Analysis of the discrete problem 173

      2.3. Finite volume approximation of elliptic equations 180

      2.3.1. Discretization principles for finite volumes 180

      2.3.2. Discontinuous coefficients 187

      2.3.3. Multidimensional problems 189

      2.4. Finite element approximations of elliptic equations 191

      2.4.1. P1 approximation in one dimension 191

      2.4.2. P2 approximations in one dimension 197

      2.4.3. Finite element methods, extension to higher dimensions 200

      2.5. Numerical comparison of FD, FV and FE methods 204

      2.6. Spectral methods 205

      2.7. Poisson–Boltzmann equation; minimization of a convex function, gradient descent algorithm 217

      2.8. Neumann conditions: the optimization perspective 224

      2.9. Charge distribution on a cord 228

      2.10. Stokes problem 235

      Chapter 3. Numerical Simulations of Partial Differential Equations: Time-dependent Problems 267

      3.1. Diffusion equations 267

      3.1.1. L2 stability (von Neumann analysis) and L∞ stability: convergence 269

      3.1.2. Implicit schemes 276

      3.1.3. Finite element discretization 281

      3.1.4. Numerical illustrations 283

      3.2. From transport equations towards conservation laws 291

      3.2.1. Introduction 291

      3.2.2. Transport equation: method of characteristics 295

      3.2.3. Upwinding principles: upwind scheme 299

      3.2.4. Linear transport at constant speed; analysis of FD and FV schemes 301

      3.2.5. Two-dimensional simulations 326

      3.2.6. The dynamics of prion proliferation 329

      3.3. Wave equation 345

      3.4. Nonlinear problems: conservation laws 354

      3.4.1. Scalar conservation laws 354

      3.4.2. Systems of conservation laws 387

      3.4.3. Kinetic schemes 393

      Appendices 407

      Appendix 1 409

      Appendix 2 417

      Appendix 3 427

      Appendix 4 433

      Appendix 5 443

      Bibliography 447

      Index 455

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