Inteligência artificial aplicada à preparação e aplicação de insertos de metal duro
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Universidade Federal de São Carlos
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Grinding is an abrasive process often employed in finishing operations due to the possibility
of obtaining narrow dimensional and geometric tolerances, besides low surface roughness.
Besides hardened steels, that usually undergo finishing operations with grinding wheels, other
materials may also be ground, like cermets: composites with ceramic particles and metallic
matrix. Popularly known as hard metals, these materials mainly constituted by tungsten carbides
and cobalt have wide application as machining tools. In this case, grinding is one among several
abrasive processes that can be applied to the preparation of cutting edges; but it is verified a
lack of publications on this purpose when related to the artificial intelligence, although their
increasing number in the last few years. This work proposes to apply artificial intelligence (AI)
algorithms as an optimization tool for carbide inserts grinding considering cutting speed, feed
rate and radial depth of cut as input factors and geometric features of the products, such as
surface roughness (Ra e Rz), as response outputs. Besides, as a complementar study, the IA
application on the optimization of the straight turning was studied, using tools with two-chamfer
cutting edges produced by grinding, which were evaluated the feed rate, tool nose radius and
form factor (K), and their influences over the roughness Ra e Rz and residual stress generated
on the 4142 alloy steel. A preliminary model was developed using the Taguchi methodology in
addition to the analysis of variance (ANOVA) to complement the methodology; afterwards, it
was developed optimization models using artificial Neuro-Fuzzy inference system (ANFIS) and
artificial neural networks (ANN). The results demonstrated that the ANN model presented better
prediction capability compared to the ANFIS model, obtaining higher capacities of becoming an
optimization tool.
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SINZATO, Mateus Keniti Nakashima. Inteligência artificial aplicada à preparação e aplicação de insertos de metal duro. 2024. Dissertação (Mestrado em Engenharia Mecânica) – Universidade Federal de São Carlos, São Carlos, 2024. Disponível em: https://repositorio.ufscar.br/handle/20.500.14289/21207.
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