Artificial Intelligence Aided Materials Design


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Artificial Intelligence-Aided Materials Design


Artificial Intelligence-Aided Materials Design

Author: Rajesh Jha

language: en

Publisher: CRC Press

Release Date: 2022-03-15


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This book describes the application of artificial intelligence (AI)/machine learning (ML) concepts to develop predictive models that can be used to design alloy materials, including hard and soft magnetic alloys, nickel-base superalloys, titanium-base alloys, and aluminum-base alloys. Readers new to AI/ML algorithms can use this book as a starting point and use the MATLAB® and Python implementation of AI/ML algorithms through included case studies. Experienced AI/ML researchers who want to try new algorithms can use this book and study the case studies for reference. Offers advantages and limitations of several AI concepts and their proper implementation in various data types generated through experiments and computer simulations and from industries in different file formats Helps readers to develop predictive models through AI/ML algorithms by writing their own computer code or using resources where they do not have to write code Covers downloadable resources such as MATLAB GUI/APP and Python implementation that can be used on common mobile devices Discusses the CALPHAD approach and ways to use data generated from it Features a chapter on metallurgical/materials concepts to help readers understand the case studies and thus proper implementation of AI/ML algorithms under the framework of data-driven materials science Uses case studies to examine the importance of using unsupervised machine learning algorithms in determining patterns in datasets This book is written for materials scientists and metallurgists interested in the application of AI, ML, and data science in the development of new materials.

Additive Manufacturing for Biocomposites and Synthetic Composites


Additive Manufacturing for Biocomposites and Synthetic Composites

Author: M. T. Mastura

language: en

Publisher: CRC Press

Release Date: 2023-12-27


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Additive Manufacturing for Biocomposites and Synthetic Composites focuses on processes, engineering, and product design applications of bio-composites and synthetic composites in additive manufacturing (AM). It discusses the preparation and material characterization and selection, as well as future opportunities and challenges. Reviews the latest research on the development of composites for AM and the preparation of composite feedstocks Offers an analytical and statistical approach for the selection of composites for AM, including characterization of material properties Emphasizes the use of environmentally friendly composites Analyzes the lifecycle including costs Considers potential new fibers, their selection, and future applications This book provides a comprehensive overview of the application of advanced composite materials in AM and is aimed at researchers, engineers, and advanced students in materials and manufacturing engineering and related disciplines.

Data-Based Methods for Materials Design and Discovery


Data-Based Methods for Materials Design and Discovery

Author: Ghanshyam Pilania

language: en

Publisher: Springer Nature

Release Date: 2022-05-31


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Machine learning methods are changing the way we design and discover new materials. This book provides an overview of approaches successfully used in addressing materials problems (alloys, ferroelectrics, dielectrics) with a focus on probabilistic methods, such as Gaussian processes, to accurately estimate density functions. The authors, who have extensive experience in this interdisciplinary field, discuss generalizations where more than one competing material property is involved or data with differing degrees of precision/costs or fidelity/expense needs to be considered.