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Datta S. Steel Informatics. Analysing Data of a Complex Materials 2024

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Datta S. Steel Informatics. Analysing Data of a Complex Materials 2024

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Category: Other
Total size: 17.46 MB
Added: 2025-03-10 23:39:01

Share ratio: 5 seeders, 2 leechers
Info Hash: 29DBF5D29F3CCE5964B7EACB0244440A0A455F57
Last updated: 14.8 hours ago

Description:

Textbook in PDF format Steel Informatics aims to review the application of data-driven computing techniques related to the design of steel, including phase transformation, composition-process-property correlation, and different processing techniques, particularly deformation and joining. This book initiates with fundamentals of informatics followed by a description of applications of statistical analyses in defining the different attributes of steel. The proceeding chapters of this book cover recent applications of statistical, machine learning, expert systems, and optimization algorithms in the domains of iron and steel making, casting, deformation, phase transformation and heat treatment, microstructure analysis, and design of steel. Features: Exclusive title focussing on informatics in steel design. Covers related statistics as well as artificial intelligence and machine learning aspects. Explains metallurgical aspects lucidly for the data scientists, steel researchers, and industries. Discusses all aspects of steel technology. Describes pertinent tools used for related computations. This book is useful for researchers, professionals, and graduate students in metallurgy, materials science, steel and welding, and computational materials science. Dedication About the Authors Preface Acknowledgments Introduction to Informatics and Data Analytics Materials Informatics and Steel Data Ironmaking and Steel making Prediction of Phase Transformation in Steel Steel Welding: Data-Driven Approaches Data-Driven Modeling of Mechanical Properties of Steel Microstructure and Machine Learning Optimization for Design Possibilities and Opportunities Index