Basic Concepts of Probability Theory .- Uncertainty Modeling .- Reliability Analysis Methods for Time-Independent Problems .- Surrogate Modeling for Reliability Analysis.- Model verification and validation (V&V).- Time-variant reliability analysis methods.- Reliability-based design optimization (RBDO).- Robust design optimization (RDO).- Other methods of design optimization under uncertainty.- Engineering applications.
Weifei Hu received the B.S. degree in 2008 from Zhejiang University, Hangzhou, China, the M.S. degree in 2010 from Hanyang University, Seoul, South Korea, and the Ph.D. degree in 2015 from the University of Iowa, Iowa city, Iowa, USA, all in mechanical engineering. From February 2016 to September 2018, Dr. Hu was a postdoctoral fellow at Cornell University, Ithaca, New York, USA. He is currently holding a ZJU100 Young Professor position at the School of Mechanical Engineering, Zhejiang University. His research interests include Design Optimization Under Uncertainty, Digital Twin, Artificial Intelligence, and Wind Energy. His work has been published in over 100 peer-reviewed journals and conference proceedings, e.g., Journal of Mechanical Design, Mechanical Systems and Signal Processing, Structural and Multidisciplinary Optimization, Journal of Intelligent Manufacturing, Journal of Manufacturing Systems, Renewable and Sustainable Energy Reviews, Applied Energy, Renewable Energy, Wind Energy, and many ASME and AIAA proceedings. He is now serving as an associate editor for the journal Wind Energy Science and an editorial board member for the journals Wind Energy and Journal of Intelligent Manufacturing and Special Equipment.
This book introduces the fundamental concepts of probability and reliability, the classical methods of uncertainty modelling, time-dependent and time-independent reliability analysis methods, model verification and validation, two main categories of design optimization under uncertainty (DOUU) methods (e.g., reliability-based design optimization and robust design optimization), the state-of-the-art approaches of physics informed methods for DOUU, and a comprehensive survey of engineering applications of DOUU. Each chapter begins with the fundamental theories and methods in a lucid, is easy-to-follow treatment, then elaborates on the corresponding advanced approaches using detailed methodologies, mathematical models, numerical examples, tables, and graphs. References and exercises are presented at the end of chapters. The book is ideal for both educational and research needs for readers from undergraduate students, graduate students, and faculty to engineering designers.
Offers both the fundamental and the state-of-the-art theories and methods of design optimization under uncertainty;
Explains the in-depth theories of design optimization under uncertainty in a lucid with step-by-step derivation;
Introduces the exercise problems using graphics, tables, and results that are all originally developed.