Adaptive Stochastic Methods: In Computational Mathematics and Mechanics / Edition 1 available in Hardcover, eBook

Adaptive Stochastic Methods: In Computational Mathematics and Mechanics / Edition 1
- ISBN-10:
- 3110553643
- ISBN-13:
- 9783110553642
- Pub. Date:
- 01/09/2018
- Publisher:
- De Gruyter
- ISBN-10:
- 3110553643
- ISBN-13:
- 9783110553642
- Pub. Date:
- 01/09/2018
- Publisher:
- De Gruyter

Adaptive Stochastic Methods: In Computational Mathematics and Mechanics / Edition 1
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Overview
Contents
Part I: Evaluation of Integrals
Fundamentals of the Monte Carlo Method to Evaluate Definite Integrals
Sequential Monte Carlo Method and Adaptive Integration
Methods of Adaptive Integration Based on Piecewise Approximation
Methods of Adaptive Integration Based on Global Approximation
Numerical Experiments
Adaptive Importance Sampling Method Based on Piecewise Constant Approximation
Part II: Solution of Integral Equations
Semi-Statistical Method of Solving Integral Equations Numerically
Problem of Vibration Conductivity
Problem on Ideal-Fluid Flow Around an Airfoil
First Basic Problem of Elasticity Theory
Second Basic Problem of Elasticity Theory
Projectional and Statistical Method of Solving Integral Equations Numerically
Product Details
ISBN-13: | 9783110553642 |
---|---|
Publisher: | De Gruyter |
Publication date: | 01/09/2018 |
Pages: | 290 |
Product dimensions: | 6.69(w) x 9.45(h) x (d) |
Age Range: | 18 Years |
About the Author
Table of Contents
Preface V
Introduction: Statistical Computing Algorithms as a Subject of Adaptive Control 1
Part I Evaluation of Integrals
1 Fundamentals of the Monte Carlo Method to Evaluate Definite Integrals 9
1.1 Problem setup 9
1.2 Essence of the Monte Carlo method 10
1.3 Sampling of a scalar random variable 11
1.3.1 The inverse function method 11
1.3.2 The superposition method 14
1.3.3 The rejection method 15
1.4 Sampling of a vector random variable 16
1.5 Elementary Monte Carlo method and its properties 18
1.6 Methods of variance reduction 20
1.6.1 Importance sampling 20
1.6.2 Control variate sampling 21
1.6.3 Advantages and relations between the methods of importance sampling and control variate sampling 21
1.6.4 Symmetrisation of the integrand 22
1.6.5 Group sampling 23
1.6.6 Estimating with a faster rate of convergence 24
1.7 Conclusion 25
2 Sequential Monte Carlo Method and Adaptive Integration 27
2.1 Sequential Monte Carlo method 27
2.1.1 Basic relations 27
2.1.2 Mean square convergence 29
2.1.3 Almost sure convergence 36
2.1.4 Error estimation 39
2.2 Adaptive methods of integration 41
2.2.1 Elementary adaptive method of one-dimensional integration 42
2.2.2 Adaptive method of importance sampling 44
2.2.3 Adaptive method of control variate sampling 46
2.2.4 Generalised adaptive methods of importance sampling and control variate sampling 47
2.2.5 On time and memory consumption 47
2.2.6 Regression-based adaptive methods 49
2.2.7 Note on notation 56
2.3 Conclusion 57
3 Methods of Adaptive Integration Based on Piecewise Approximation 59
3.1 Piecewise approximations over subdomains 59
3.1.1 Piecewise approximations and their orders 59
3.1.2 Approximations for particular classes of functions 60
3.1.3 Partition moments and estimates for the variances Dk 62
3.1.4 Generalised adaptive methods 63
3.2 Elementary one-dimensional method 65
3.2.1 Control variate sampling 66
3.2.2 Importance sampling 67
3.2.3 Conclusions and remarks 69
3.3 Sequential bisection 70
3.3.1 Description of the bisection technique 70
3.3.2 Control variate sampling 72
3.3.3 Importance sampling 76
3.3.4 Time consumption of the bisection method 78
3.4 Sequential method of stratified sampling 79
3.5 Deterministic construction of partitions 80
3.6 Conclusion 82
4 Methods of Adaptive Integration Based on Global Approximation 83
4.1 Global approximations 83
4.1.1 Approximations by orthonormalised functions: Basic relations 84
4.1.2 Conditions for algorithm convergence 86
4.2 Adaptive integration over the class Sp 92
4.2.1 Haar system of functions and univariate classes of functions Sp 92
4.2.2 Adaptive integration over the class Sp: One-dimensional case 93
4.2.3 Expansion into parts of differing dimensionalities: Multidimensional classes Sp 95
4.2.4 Adaptive integration over the class Sp: Multidimensional case 97
4.3 Adaptive integration over the class Eαs 103
4.3.1 The classes of functions Eαs 104
4.3.2 Adaptive integration with the use of trigonometric approximations 104
4.4 Conclusion 108
5 Numerical Experiments 111
5.1 Test problems setup 111
5.1.1 The first problem 111
5.1.2 The second problem 112
5.2 Results of experiments 113
5.2.1 The first test problem 113
5.2.2 The second test problem 121
6 Adaptive Importance Sampling Method Based on Piecewise Constant Approximation 123
6.1 Introduction 123
6.2 Investigation of efficiency of the adaptive importance sampling method 123
6.2.1 Adaptive and sequential importance sampling schemes 123
6.2.2 Comparison of adaptive and sequential schemes 126
6.2.3 Numerical experiments 128
6.2.4 Conclusion 131
6.3 Adaptive importance sampling method in the case where the number of bisection steps is limited 132
6.3.1 The adaptive scheme for one-dimensional improper integrals 132
6.3.2 The adaptive scheme for the case where the number of bisection steps is limited 134
6.3.3 Peculiarities and capabilities of the adaptive importance sampling scheme in the case where the number of bisection steps is fixed 135
6.3.4 Numerical experiments 136
6.3.5 Conclusion 140
6.4 Solution of a problem of navigation by distances to pin-point targets with the use of the adaptive importance sampling method 141
6.4.1 Problem setup 141
6.4.2 Application of the adaptive importance sampling method to calculating the optimal estimator of the object position 143
6.4.3 A numerical experiment 145
6.4.4 Conclusion 148
Part II Solution of Integral Equations
7 Semi-Statistical Method of Solving Integral Equations Numerically 151
7.1 Introduction 151
7.2 Basic relations 152
7.3 Recurrent inversion formulas 154
7.4 Non-degeneracy of the matrix of the semi-statistical method 155
7.5 Convergence of the method 161
7.6 Adaptive capabilities of the algorithm 163
7.7 Qualitative considerations on the relation between the semi-statistical method and the variational ones 165
7.8 Application of the method to integral equations with a singularity 165
7.8.1 Description of the method and peculiarities of its application 165
7.8.2 Recurrent inversion formulas 168
7.8.3 Error analysis 168
7.8.4 Adaptive capabilities of the algorithm 171
8 Problem of Vibration Conductivity 173
8.1 Boundary value problem of vibration conductivity 173
8.2 Integral equations of vibration conductivity 174
8.3 Regutarisation of the equations 180
8.4 An integral equation with enhanced asymptotic properties at small β 184
8.5 Numerical solution of vibration conductivity problems 187
8.5.1 Solution of the test problem 187
8.5.2 Analysis of the influence of the sphere distortion and the external stress character on the results of the numerical solution 190
9 Problem on Ideal-Fluid Flow Around an Airfoil 193
9.1 Introduction 193
9.2 Setup of the problem on flow around an airfoil 193
9.3 Analytic description of the airfoil contour 195
9.4 Computational algorithm and optimisation 198
9.5 Results of numerical computation 199
9.5.1 Computation of the velocity around an airfoil 199
9.5.2 Analysis of the density adaptation efficiency 201
9.5.3 Computations on test cascades 205
9.6 Conclusions 207
9.7 A modified semi-statistical method 208
9.7.1 Computational scheme 209
9.7.2 Ways to estimate the variance in the computing process 210
9.7.3 Recommendations and remarks to the scheme of the modified semi-statistical method 211
9.7.4 Numerical experiment for a prolate airfoil 211
10 First Basic Problem of Elasticity Theory 215
10.1 Potentials and integral equations of the first basic problem of elasticity theory 215
10.1.1 The force and pseudo-force tensors 215
10.1.2 Integral equations of the first basic problem 217
10.2 Solution of some spatial problems of elasticity theory using the method of potentials 218
10.2.1 Solution of the first basic problem for a series of centrally symmetric spatial regions 219
10.2.2 Solution of the first basic problem for a sphere 220
10.2.3 Solution of the first basic problem for an unbounded medium with a spherical cavity 220
10.2.4 Solution of the first basic problem for a hollow sphere 221
10.3 Solution of integral equations of elasticity theory using the semi-statistical method 223
10.4 Formulas for the optimal density 225
10.5 Results of numerical experiments 227
11 Second Basic Problem of Elasticity Theory 231
11.1 Fundamental solutions of the first and second kind 231
11.2 Boussinesq potentials 234
11.3 Weyl tensor 235
11.4 Weyl force tensors 237
11.5 Arbitrary Lyapunov surface 238
12 Projectional and Statistical Method of Solving Integral Equations Numerically 241
12.1 Basic relations 241
12.2 Recurrent inversion formulas 244
12.3 Non-degeneracy of the matrix of the method 246
12.4 Convergence of the method 250
12.5 Advantages of the method and its adaptive capabilities 253
12.6 Peculiarities of the numerical implementation 255
12.7 Another computing technique: Averaging of approximate solutions 257
12.8 Numerical experiments 259
12.8.1 The test problem 259
12.8.2 The problem on steady-state forced small transverse vibration of a pinned string caused by a harmonic force 264
Afterword 271
Bibliography 273
Index 277