4.6 Article

Performance prediction of high-pressure coolant assisted turning of Ti-6Al-4V

Journal

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00170-016-9468-5

Keywords

Artificial neural network; Support vector regression; High-pressure coolant; Surface roughness; Cutting temperature; Chip reduction coefficient

Funding

  1. Directorate of Advisory Extension and Research Services (DAERS), BUET, Bangladesh [DAERS/CASR/R-01/2015/DR-2181 (71)]

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The present study focuses on the development of predictive models of average surface roughness, chip-tool interface temperature, chip reduction coefficient, and average tool flank wear in turning of Ti-6Al-4V alloy. The cutting speed, feed rate, cutting conditions (dry and high-pressure coolant), and turning forces (cutting force and feed force) were the input variables in modeling the first three quality parameters, while in modeling tool wear, the machining time was the only variable. Notably, the machining environment influences the machining performance; yet, very few models exist wherein this variable was considered as input. Herein, soft computing-based modeling techniques such as artificial neural network (ANN) and support vector machines (SVM) were explored for roughness, temperature, and chip coefficient. The prediction capability of the formulated models was compared based on the lowest mean absolute percentage error. For surface roughness and cutting temperature, the ANN and, for chip reduction coefficient, the SVM revealed the lowest error, hence recommended. In addition, empirical models were constructed by using the experimental data of tool wear. The adequacy and good fit of tool wear models were justified by a coefficient of determination value greater than 0.99.

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