Sustainable Materials -

Sustainable Materials

The Role of Artificial Intelligence and Machine Learning
Buch | Hardcover
208 Seiten
2024
CRC Press (Verlag)
978-1-032-56852-2 (ISBN)
155,85 inkl. MwSt
The book explores the use of AI and ML techniques for the design, characterization, and development of prediction analysis of sustainable polymer composites.
The superior multi-functional properties of polymer composites have made it suitable for biomedical, defense, automobile, agriculture, and domestic applications. The growing demand for these composites calls for an extensive investigation of their physical, chemical, and mechanical behaviour under different exposure conditions. Characterization techniques are vital, and considering the extensive investigations and given the number of parameters, also complex.

The self-learning ability of machine learning algorithms makes the investigations more accurate and accommodates all the complex requirements. Development in neural codes can accommodate the data in all the forms such as numerical values as well as images. The techniques also review the sustainability, life-span, the energy consumption in production polymer, etc. This book addresses the design, characterization, and development of prediction analysis of sustainable polymer composites using machine learning algorithms.

Akshansh Mishra is pursuing a Master's in Materials Engineering and Nanotechnology at Politecnico Di Milano, Milan, Italy. He works on the application of Artificial Intelligence-based algorithms in the Manufacturing and Materials sectors. His main research interests are Cognitive Computing, Advanced Manufacturing, Explainable Artificial Intelligence (XAI), Machine Learning, Natural Language Processing, Nature-based optimization algorithms, and Composite Materials. Mail id: akshansh.mishra@mail.polimi.it Vijaykumar S Jatti is an Associate Professor at Symbiosis Institute of Technology, Pune, India. His main research interests are Machine Learning, Mechanical Design, Material Science, Conventional & Non-Conventional Machining Processes, Additive Manufacturing, and Bio-Materials (Metals, Ceramics and Polymers). He has 23 publications in Web of Science and 61 publications in Scopus indexed journals. He has received 18 awards, appreciation and recognitions by different national & international organizations/institutions/agencies for contribution in Academics & Research work. Mail id: vijaykumar.jatti@sitpune.edu.in Shivangi Paliwal is pursuing a Ph.D. in Mechanical Engineering, at the University of Kentucky, USA. Before joining the University of Kentucky, she worked as a Junior Research Fellow at the Indian Institute of Technology, Mumbai, India. Her research work integrates experimental and numerical simulation techniques to leverage the potential of additive manufacturing. Her past research work has had direct impacts on sustainability through the use of non-traditional machining and surface engineering. Affiliation: University of Kentucky; Mail id: shivangi.paliwal@uky.edu

Preface. Artificial Intelligence in Material Science. Data Driven Artificial Intelligence Based Approach for the Determination of Structural Stress Distribution in ASTM D3039 Tensile Specimens of Carbon-Epoxy and Kevlar-Epoxy Based Composite Materials. Image Segmentation for Evaluating the Microstructure Features obtained from Magnesium Composites Processed through Squeeze Casting. Experimental Investigation of Bagasse Ash in Concrete Material. Computational Material Science for Cheminformatics Feature Descriptive Language (CFDL) with Categorical Data. Explicit Dynamic Crash Analysis of a Car using a Metal, Composite Material and an Alloy. Optimizing Friction Stir Spot Welded ABS Weld Strength using JAYA and Cohort Intelligence Algorithm. Supervised Machine Learning Based Classification of Dimensional Deviation of FDM 3D Printed Samples. Polymer Composite Flexural Strength Estimation using K-Nearest Neighbouring Classification Algorithm. Supervised Machine Learning Based Classification of Surface Roughness of Fused Deposition Modeling3D Printed Samples. Polymer Composite Impact Strength Estimation using K-Nearest Neighbouring Classification Algorithm. Index.

Erscheint lt. Verlag 25.10.2024
Zusatzinfo 23 Tables, black and white; 10 Illustrations, color; 104 Illustrations, black and white
Verlagsort London
Sprache englisch
Maße 156 x 234 mm
Themenwelt Naturwissenschaften Chemie Technische Chemie
Technik Umwelttechnik / Biotechnologie
ISBN-10 1-032-56852-6 / 1032568526
ISBN-13 978-1-032-56852-2 / 9781032568522
Zustand Neuware
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