This textbook introduces engineers and engineering students to the applications of artificial intelligence (AI), machine learning (ML), and machine intelligence (MI) in relation to civil and environmental engineering projects and problems, presenting state-of-the-art methodologies and techniques to develop and implement algorithms in the engineering domain.
Through real-world projects like analysis and design of structural members, optimizing concrete mixtures for site applications, examining concrete cracking via computer vision, evaluating the response of bridges to hazards, and predicating water quality and energy expenditure in buildings, this textbook offers readers in-depth case studies with solved problems that are commonly faced by civil and environmental engineers.
The approaches presented range from simplified to advanced methods, incorporating coding-based and coding-free techniques. Professional engineers and engineering students will find value in the step-by-step examples that are accompanied by sample databases and codes for readers to practice with.
Written by a highly qualified professional with significant experience in the field, Machine Learning includes valuable information on: - The current state of machine learning and causality in civil and environmental engineering as viewed through a scientometrics analysis, plus a historical perspective - Supervised vs. unsupervised learning for regression, classification, and clustering problems - Explainable and causal methods for practical engineering problems - Database development, outlining how an engineer can effectively collect and verify appropriate data to be used in machine intelligence analysis - A framework for machine learning adoption and application, covering key questions commonly faced by practitioners
This textbook is a must-have reference for undergraduate/graduate students to learn concepts on the use of machine learning, for scientists/researchers to learn how to integrate machine learning into civil and environmental engineering, and for design/engineering professionals as a reference guide for undertaking MI design, simulation, and optimization for infrastructure.
Table of Contents
Preface xiii
About the Companion Website xix
1 Teaching Methods for This Textbook 1 Synopsis 1
1.1 Education in Civil and Environmental Engineering 1
1.2 Machine Learning as an Educational Material 2
1.3 Possible Pathways for Course/Material Delivery 3
1.4 Typical Outline for Possible Means of Delivery 7
Chapter Blueprint 8
Questions and Problems 8
References 8
2 Introduction to Machine Learning 11
Synopsis 11
2.1 A Brief History of Machine Learning 11
2.2 Types of Learning 12
2.3 A Look into ML from the Lens of Civil and Environmental Engineering 15
2.4 Let Us Talk a Bit More about ML 17
2.5 ML Pipeline 18
2.6 Conclusions 27
Definitions 27
Chapter Blueprint 29
Questions and Problems 29
References 30
3 Data and Statistics 33
Synopsis 33
3.1 Data and Data Science 33
3.2 Types of Data 34
3.3 Dataset Development 37
3.4 Diagnosing and Handling Data 37
3.5 Visualizing Data 38
3.6 Exploring Data 59
3.7 Manipulating Data 66
3.8 Manipulation for Computer Vision 68
3.9 A Brief Review of Statistics 68
3.10 Conclusions 76
4 Machine Learning Algorithms 81
Synopsis 81
4.1 An Overview of Algorithms 81
4.2 Conclusions 127
5 Performance Fitness Indicators and Error Metrics 133
Synopsis 133
5.1 Introduction 133
5.2 The Need for Metrics and Indicators 134
5.3 Regression Metrics and Indicators 135
5.4 Classification Metrics and Indicators 142
5.5 Clustering Metrics and Indicators 142
5.6 Functional Metrics and Indicators* 151
5.7 Other Techniques (Beyond Metrics and Indicators) 154
5.8 Conclusions 159
6 Coding-free and Coding-based Approaches to Machine Learning 169
Synopsis 169
6.1 Coding-free Approach to ML 169
6.2 Coding-based Approach to ML 280
6.3 Conclusions 322
7 Explainability and Interpretability 327
7 Synopsis 327
7.1 The Need for Explainability 327
7.2 Explainability from a Philosophical Engineering Perspective* 329
7.3 Methods for Explainability and Interpretability 331
7.4 Examples 335
7.5 Conclusions 428
8 Causal Discovery and Causal Inference 433
Synopsis 433
8.1 Big Ideas Behind This Chapter 433
8.2 Re-visiting Experiments 434
8.3 Re-visiting Statistics and ML 435
8.4 Causality 436
8.5 Examples 451
8.6 A Note on Causality and ML 475
8.7 Conclusions 475
9 Advanced Topics (Synthetic and Augmented Data, Green ML, Symbolic Regression, Mapping Functions, Ensembles, and AutoML) 481
Synopsis 481
9.1 Synthetic and Augmented Data 481
9.2 Green ML 488
9.3 Symbolic Regression 498
9.4 Mapping Functions 529
9.5 Ensembles 539
9.6 AutoML 548
9.7 Conclusions 552
10 Recommendations, Suggestions, and Best Practices 559
Synopsis 559
10.1 Recommendations 559
10.2 Suggestions 564
10.3 Best Practices 566
11 Final Thoughts and Future Directions 573
Synopsis 573
11.1 Now 573
11.2 Tomorrow 573
11.3 Possible Ideas to Tackle 575
11.4 Conclusions 576
References 576
Index 577