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    MQL strategies applied in Ti-6Al-4V alloy milling-Comparative analysis between experimental design and artificial neural networks

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    MQL strategies applied in Ti-6Al-4V alloy milling-Comparative analysis between experimental design and artificial neural networks.pdf (25.80Mb)
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    Artigo de Periódico
    Date
    2020
    Author
    Paschoalinoto, Nelson Wilson
    Batalha, Gilmar Ferreira
    Bordinassi, Ed Claudio
    Ferrer, Jorge Antonio Giles
    Lima Filho, Aderval Ferreira de
    Ribeiro, Gleicy de L. X.
    Cardoso, Cristiano
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    Abstract
    This paper presents a study of the Ti-6Al-4V alloy milling under different lubrication conditions, using the minimum quantity lubrication approach. The chosen material is widely used in the industry due to its properties, although they present difficulties in terms of their machinability. A minimum quantity lubrication (MQL) prototype valve was built for this purpose, and machining followed a previously defined experimental design with three lubrication strategies. Speed, feed rate, and the depth of cut were considered as independent variables. As design-dependent variables, cutting forces, torque, and roughness were considered. The desirability optimization function was used in order to obtain the best input data indications, in order to minimize cutting and roughness efforts. Supervised artificial neural networks of the multilayer perceptron type were created and tested, and their responses were compared statistically to the results of the factorial design. It was noted that the variables that most influenced the machining-dependent variables were the feed rate and the depth of cut. A lower roughness value was achieved with MQL only with the use of cutting fluid with graphite. Statistical analysis demonstrated that artificial neural network and the experimental design predict similar results. © 2020 by the authors.
    1. Lubrication
    2. Machining
    3. Milling
    4. MQL
    5. Optimization
    6. Ti-6AL-4V
    7. Aluminum alloys
    8. Cutting fluids
    9. Milling (machining)
    10. Statistics
    11. Ternary alloys
    12. Titanium alloys
    13. Comparative analysis
    14. Dependent variables
    15. Factorial design
    16. Independent variables
    17. Lubrication condition
    18. Minimum quantity lubrication
    19. Optimization function
    20. Supervised artificial neural networks
    21. Multilayer neural networks
    URI
    https://www.scopus.com/inward/record.uri?eid=2-s2.0-85090932565&doi=10.3390%2fma13173828&partnerID=40&md5=582b3b8f93f62b0c8edb4c5f2cf5f05b
    https://repositorio.maua.br/handle/MAUA/1368
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