Machine Learning Applied to Composite Materials

This book introduces the approach of Machine Learning (ML) based predictive models in the design of composite materials to achieve the required properties for certain applications. ML can learn from existing experimental data obtained from very limited number of experiments and subsequently can be t...

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Bibliographic Details
Other Authors: Kushvaha, Vinod (Editor), Sanjay, M. R. (Editor), Madhushri, Priyanka (Editor), Siengchin, Suchart (Editor)
Format: eBook
Language:English
Published: Singapore Springer Nature Singapore 2022, 2022
Edition:1st ed. 2022
Series:Composites Science and Technology
Subjects:
Online Access:
Collection: Springer eBooks 2005- - Collection details see MPG.ReNa
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245 0 0 |a Machine Learning Applied to Composite Materials  |h Elektronische Ressource  |c edited by Vinod Kushvaha, M. R. Sanjay, Priyanka Madhushri, Suchart Siengchin 
250 |a 1st ed. 2022 
260 |a Singapore  |b Springer Nature Singapore  |c 2022, 2022 
300 |a VI, 198 p. 71 illus., 61 illus. in color  |b online resource 
505 0 |a Importance of machine learning in material science -- Machine Learning: A methodology to explain and predict material behavior -- Effect of aspect ratio on dynamic fracture toughness of particulate polymer composite using artificial neural network -- Methodology of K-Nearest Neighbor for predicting the fracture toughness of polymer composites -- Forward machine learning technique to predict dynamic fracture behavior of particulate composite -- Predictive modelling of fracture behavior in silica-filled polymer composite subjected to impact with varying loading rates -- Machine learning approach to determine the elastic modulus of Carbon fiber-reinforced laminates -- Effect of weight ratio on mechanical behaviour of natural fiber based biocomposite using machine learning -- Effect of natural fiber’s mechanical properties and fiber matrix adhesion strength to design biocomposite -- Comparison of various machine learning algorithms to predict material behavior in GFRP. 
653 |a Machine learning 
653 |a Machine Learning 
653 |a Computational intelligence 
653 |a Materials science / Data processing 
653 |a Composite materials 
653 |a Computational Intelligence 
653 |a Computational Materials Science 
653 |a Composites 
700 1 |a Sanjay, M. R.  |e [editor] 
700 1 |a Madhushri, Priyanka  |e [editor] 
700 1 |a Siengchin, Suchart  |e [editor] 
041 0 7 |a eng  |2 ISO 639-2 
989 |b Springer  |a Springer eBooks 2005- 
490 0 |a Composites Science and Technology 
028 5 0 |a 10.1007/978-981-19-6278-3 
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520 |a This book introduces the approach of Machine Learning (ML) based predictive models in the design of composite materials to achieve the required properties for certain applications. ML can learn from existing experimental data obtained from very limited number of experiments and subsequently can be trained to find solutions of the complex non-linear, multi-dimensional functional relationships without any prior assumptions about their nature. In this case the ML models can learn from existing experimental data obtained from (1) composite design based on various properties of the matrix material and fillers/reinforcements (2) material processing during fabrication (3) property relationships. Modelling of these relationships using ML methods significantly reduce the experimental work involved in designing new composites, and therefore offer a new avenue for material design and properties. The book caters to students, academics and researchers who are interested in the field of materialcomposite modelling and design