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This book presents recent advances in data-driven global optimization methods, combining theoretical foundations with real-world applications to address complex engineering optimization challenges.
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This book presents recent advances in data-driven global optimization methods, combining theoretical foundations with real-world applications to address complex engineering optimization challenges.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 320
- Erscheinungstermin: 23. Juli 2025
- Englisch
- Abmessung: 234mm x 156mm
- ISBN-13: 9781041065753
- ISBN-10: 1041065752
- Artikelnr.: 73143277
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 320
- Erscheinungstermin: 23. Juli 2025
- Englisch
- Abmessung: 234mm x 156mm
- ISBN-13: 9781041065753
- ISBN-10: 1041065752
- Artikelnr.: 73143277
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Huachao Dong is Associate Professor at the School of Marine Science and Technology at Northwestern Polytechnical University, China. His research includes underwater vehicle design, digital design, multidisciplinary optimization, digital twins for underwater vehicles and data-driven global optimization, with over 50 peer-reviewed papers and 1 book published. Peng Wang is Professor at the School of Marine Science and Technology at Northwestern Polytechnical University, China. His research focuses on surrogate-based design optimization, multidisciplinary design optimization, multicriteria decision-making and the design of underwater vehicles, with over 150 peer-reviewed papers and 6 books published. Jinglu Li is an assistant researcher at Harbin Engineering University, China. His research includes underwater vehicle design, multidisciplinary optimization, digital twins and data-driven global optimization and he has published over 20 peer-reviewed papers.
1. Introduction 2. Data
Driven Optimization Framework 3. Benchmark Functions for Data
Driven Optimization Methods 4. MSSR: Multi
Start Space Reduction Surrogate
Based Global Optimization Method 5. SOCE: Surrogate
Based Optimization with Clustering
Based Space Exploration for Expensive Multimodal Problems 6. HSOSR: Hybrid Surrogate
Based Optimization Using Space Reduction for Expensive Black
Box Functions 7. MGOSIC: Multi
Surrogate
Based Global Optimization Using a Score
Based Infill Criterion 8. SCGOSR: Surrogate
Based Constrained Global Optimization Using Space Reduction 9. KTLBO: Kriging
Assisted Teaching
Learning
Based Optimization to Solve Computationally Expensive Constrained Problems 10. KDGO: Kriging
Assisted Discrete Global Optimization for Black
Box Problems with Costly Objective and Constraints 11. SAGWO: Surrogate
Assisted Grey Wolf Optimization for High
Dimensional, Computationally Expensive Black
Box Problems
Driven Optimization Framework 3. Benchmark Functions for Data
Driven Optimization Methods 4. MSSR: Multi
Start Space Reduction Surrogate
Based Global Optimization Method 5. SOCE: Surrogate
Based Optimization with Clustering
Based Space Exploration for Expensive Multimodal Problems 6. HSOSR: Hybrid Surrogate
Based Optimization Using Space Reduction for Expensive Black
Box Functions 7. MGOSIC: Multi
Surrogate
Based Global Optimization Using a Score
Based Infill Criterion 8. SCGOSR: Surrogate
Based Constrained Global Optimization Using Space Reduction 9. KTLBO: Kriging
Assisted Teaching
Learning
Based Optimization to Solve Computationally Expensive Constrained Problems 10. KDGO: Kriging
Assisted Discrete Global Optimization for Black
Box Problems with Costly Objective and Constraints 11. SAGWO: Surrogate
Assisted Grey Wolf Optimization for High
Dimensional, Computationally Expensive Black
Box Problems
1. Introduction 2. Data
Driven Optimization Framework 3. Benchmark Functions for Data
Driven Optimization Methods 4. MSSR: Multi
Start Space Reduction Surrogate
Based Global Optimization Method 5. SOCE: Surrogate
Based Optimization with Clustering
Based Space Exploration for Expensive Multimodal Problems 6. HSOSR: Hybrid Surrogate
Based Optimization Using Space Reduction for Expensive Black
Box Functions 7. MGOSIC: Multi
Surrogate
Based Global Optimization Using a Score
Based Infill Criterion 8. SCGOSR: Surrogate
Based Constrained Global Optimization Using Space Reduction 9. KTLBO: Kriging
Assisted Teaching
Learning
Based Optimization to Solve Computationally Expensive Constrained Problems 10. KDGO: Kriging
Assisted Discrete Global Optimization for Black
Box Problems with Costly Objective and Constraints 11. SAGWO: Surrogate
Assisted Grey Wolf Optimization for High
Dimensional, Computationally Expensive Black
Box Problems
Driven Optimization Framework 3. Benchmark Functions for Data
Driven Optimization Methods 4. MSSR: Multi
Start Space Reduction Surrogate
Based Global Optimization Method 5. SOCE: Surrogate
Based Optimization with Clustering
Based Space Exploration for Expensive Multimodal Problems 6. HSOSR: Hybrid Surrogate
Based Optimization Using Space Reduction for Expensive Black
Box Functions 7. MGOSIC: Multi
Surrogate
Based Global Optimization Using a Score
Based Infill Criterion 8. SCGOSR: Surrogate
Based Constrained Global Optimization Using Space Reduction 9. KTLBO: Kriging
Assisted Teaching
Learning
Based Optimization to Solve Computationally Expensive Constrained Problems 10. KDGO: Kriging
Assisted Discrete Global Optimization for Black
Box Problems with Costly Objective and Constraints 11. SAGWO: Surrogate
Assisted Grey Wolf Optimization for High
Dimensional, Computationally Expensive Black
Box Problems