Engineering Design via Surrogate Modelling : A Practical Guide
by Alexander Forrester (University Of Southampton); Andras Sobester (University of Southampton, UK); Andy Keane (University Of Southampton)-
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Summary
Table of Contents
| Preface. | |
| About the Authors. | |
| Foreword. | |
| Prologue. | |
| Fundamentals. | |
| Sampling Plans. | |
| The æCurse of DimensionalityÆ and How to Avoid It | |
| Physical versus Computational Experiments | |
| Designing Preliminary Experiments (Screening). | |
| Estimating the Distribution of Elementary Effects. | |
| Designing a Sampling Plan | |
| Stratification. | |
| Latin Squares and Random Latin Hypercubes. | |
| Space-filling Latin Hypercubes. | |
| Space-filling Subsets. | |
| A Note on Harmonic Responses | |
| Some Pointers for Further Reading | |
| References | |
| Constructing a Surrogate. | |
| The Modelling Process | |
| Stage One: Preparing the Data and Choosing a Modelling Approach. | |
| Stage Two: Parameter Estimation and Training. | |
| Stage Three: Model Testing. | |
| Polynomial Models | |
| Example One: Aerofoil Drag. | |
| Example Two: a Multimodal Testcase. | |
| What About the k-variable Case? | |
| Radial Basis Function Models | |
| Fitting Noise-Free Data. | |
| Radial Basis Function Models of Noisy Data. | |
| Kriging | |
| Building the Kriging Model. | |
| Kriging Prediction. | |
| Support Vector Regression | |
| The Support Vector Predictor. | |
| The Kernel Trick. | |
| Finding the Support Vectors. | |
| Finding µ | |
| Choosing C and ? | |
| Computing ?: v-SVR 71 | |
| The Big(ger) Picture | |
| References | |
| Exploring and Exploiting a Surrogate. | |
| Searching the Surrogate | |
| Infill Criteria | |
| Prediction Based Exploitation. | |
| Error Based Exploration. | |
| Balanced Exploitation and Exploration. | |
| Conditional Likelihood Approaches. | |
| Other Methods. | |
| Managing a Surrogate Based Optimization Process | |
| Which Surrogate for What Use? | |
| How Many Sample Plan and Infill Points? | |
| Convergence Criteria. | |
| Search of the Vibration Isolator Geometry Feasibility Using Kriging Goal Seeking. | |
| References | |
| Advanced Concepts. | |
| Visualization. | |
| Matrices of Contour Plots | |
| Nested Dimensions | |
| Reference | |
| Constraints. | |
| Satisfaction of Constraints by Construction | |
| Penalty Functions | |
| Example Constrained Problem | |
| Using a Kriging Model of the Constraint Function. | |
| Using a Kriging Model of the Objective Function. | |
| Expected Improvement Based Approaches | |
| Expected Improvement With Simple Penalty Function. | |
| Constrained Expected Improvement. | |
| Missing Data | |
| Imputing Data for Infeasible Designs. | |
| Design of a Helical Compression Spring Using Constrained Expected Improvement | |
| Summary | |
| References | |
| Infill Criteria With Noisy Data. | |
| Regressing Kriging | |
| Searching the Regression Model | |
| Re-Interpolation. | |
| Re-Interpolation With Conditional Likelihood Approaches. | |
| A Note on Matrix Ill-Conditioning | |
| Summary | |
| References | |
| Exploiting Gradient Information. | |
| Obtaining Gradients | |
| Finite Differencing. | |
| Complex Step Approximation. | |
| Adjoint Methods and Algorithmic Differentiation. | |
| Gradient-enhanced Modelling | |
| Hessian-enhanced Modelling | |
| Summary | |
| References | |
| Multi-fidelity Analysis. | |
| Co-Kriging | |
| One-variable Demonstration | |
| Choosing Xc and Xe | |
| Summary | |
| References | |
| Multiple Design Objectives. | |
| Pareto Optimization | |
| Multi-objective Expected Improvement | |
| Design of the Nowacki Cantilever Beam Using Multi-objective, Constrained Expected Improvement | |
| Design of a Helical Compression Spring Using Multi-objective, Constrained Expected Improvement | |
| Summary | |
| References | |
| Example Problems. | |
| One-Variable Test Function | |
| Branin Test Function | |
| Aerofoil Design | |
| The Nowacki Beam | |
| Multi-objective, Constrained Optimal Design of a Helical Compression Spring | |
| Novel Passive Vibration Isolator Feasibility | |
| References | |
| Index. | |
| Table of Contents provided by Publisher. All Rights Reserved. |
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