Application of neural networks in steels' chemical composition design



Título del documento: Application of neural networks in steels' chemical composition design
Revista: Journal of the Brazilian Society of Mechanical Sciences and Engineering
Base de datos: PERIÓDICA
Número de sistema: 000312209
ISSN: 1678-5878
Autores: 1
Instituciones: 1Silesian University of Technology, Institute of Engineering Materials and Biomaterials, Gliwice. Polonia
Año:
Periodo: Abr-Jun
Volumen: 25
Número: 2
Paginación: 185-188
País: Brasil
Idioma: Inglés
Tipo de documento: Artículo
Enfoque: Aplicado
Resumen en inglés Designing of the chemical composition of the steel heats having the demanded properties, e.g. the defined shape of the hardenability curve, is the crucial task from the manufacturing point of view. Rapid development of computer science and technology as well as of modern computer tools, artificial intelligence among them, prompts their increasingly common use in different domains of science and technology. There is a great interest in these methods, which seems justified, since they can be applied both to solving novel problems and to dealing with the ones considered classical. For a couple of years, such trends have been present also in the domain of materials engineering. Contemporary software tools, especially methods of artificial intelligence, make it possible to develop the method, presented in the paper, of designing of the chemical composition of constructional alloy steels, which still are one of the basic groups of metallic engineering materials. It lets the designer abandon the classical approach to the material selection according to which one of the catalogued materials has to be selected. The paper presents the method of designing of the chemical composition basing on the known and the required shape of the hardenability curve with the use of the dedicated neural networks models
Disciplinas: Ingeniería,
Matemáticas
Palabras clave: Ingeniería de materiales,
Ingeniería metalúrgica,
Matemáticas aplicadas,
Redes neuronales,
Composición química,
Acero,
Aleaciones,
Templabilidad,
Modelado
Keyword: Engineering,
Mathematics,
Materials engineering,
Metallurgical engineering,
Applied mathematics,
Neural networks,
Chemical composition,
Steel,
Alloys,
Hardenability,
Modeling
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