Uncertainty Quantification of Stochastic Defects in Materials
Uncertainty Quantification of Stochastic Defects in Materials investigates uncertainty quantification methods for stochastic defects in material microstructure. It provides effective supplementary approaches for conventional experimental observation with the consideration of stochastic factor and uncertainty propagation. Les mer
Uncertainty Quantification of Stochastic Defects in Materials investigates uncertainty quantification methods for stochastic defects in material microstructure. It provides effective supplementary approaches for conventional experimental observation with the consideration of stochastic factor and uncertainty propagation. Pursuing a comprehensive numerical analytical system, this book establishes a fundamental framework for this topic, while emphasizing the importance of stochastic and uncertainty quantification analysis and the significant influence of microstructure defects in the material macro properties.
Consists of two parts: one exploring methods and theories and the other detailing related examples
Defines stochastic defects in materials and presents the uncertainty quantification for defect location, size, geometrical configuration, and instability
Introduces general Monte Carlo methods, polynomial chaos expansion, stochastic finite element methods, and machine learning methods
Provides a variety of examples to support the introduced methods and theories
Features MATLAB and ANSYS computer code
This book is intended for advanced students interested in material defect quantification methods and material reliability assessment, researchers investigating artificial material microstructure optimization, and engineers working on defect influence analysis and non-destructive defect testing.
Consists of two parts: one exploring methods and theories and the other detailing related examples
Defines stochastic defects in materials and presents the uncertainty quantification for defect location, size, geometrical configuration, and instability
Introduces general Monte Carlo methods, polynomial chaos expansion, stochastic finite element methods, and machine learning methods
Provides a variety of examples to support the introduced methods and theories
Features MATLAB and ANSYS computer code
This book is intended for advanced students interested in material defect quantification methods and material reliability assessment, researchers investigating artificial material microstructure optimization, and engineers working on defect influence analysis and non-destructive defect testing.
Detaljer
- Forlag
- CRC Press
- Innbinding
- Innbundet
- Språk
- Engelsk
- Sider
- 196
- ISBN
- 9781032128733
- Utgivelsesår
- 2021
- Format
- 23 x 16 cm
Om forfatteren
Dr. Liu Chu received her B.E. degree in Materials Science and Engineering, and M.E. degree in Mechanics from Dalian Maritime University, China, and the Ph.D. in Mechanics from the Institut national des sciences appliquées de Rouen (INSA Rouen), France. Dr. Chu focuses on research in computational material mechanics and structural reliability. Her recent research interests include low-dimensional nanomaterial vacancy defects quantification, artificial material microstructure optimization, and mechanical structure reliability analysis. Since 2018, Dr. Chu has published 18 peer-reviewed science and technical papers in international journals and conferences. She is a member of IEEE and has served as a reviewer of several international journals.
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