2010
DOI: 10.1590/s1678-58782010000500010
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A DOE based approach for the design of RBF artificial neural networks applied to prediction of surface roughness in AISI 52100 hardened steel turning

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Cited by 9 publications
(12 citation statements)
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“…Myers (1999) presented a thorough discussion of the RSM and a historical review of the state-of-the-art of RSM, as well as some suggestions for future research. Pontes et al (2010), in their concern with surface roughness in hard turning, proved that DOE is an efficient predictive statistical tool when designing Artificial Neural Networks of Radial Basis Function architectures. Santhanakumar, Adalarasan, Siddharth, and Velayudham (2016) employed a grey-based RSM and Taguchi's L27 orthogonal design on the study of the influence of cutting speed (Vc), feed rate (f) and depth of cut (ap) on tool's flank wear and on roughness in rough machining of high-strength materials; at the same time they reduced their multi-response optimization case to a single-response one, they found that, even though the surface finish's quality was improved by the increase of the cutting speed, as feed rate and depth of cut increase to elevated values the roughness also increased.…”
Section: Methodsmentioning
confidence: 99%
“…Myers (1999) presented a thorough discussion of the RSM and a historical review of the state-of-the-art of RSM, as well as some suggestions for future research. Pontes et al (2010), in their concern with surface roughness in hard turning, proved that DOE is an efficient predictive statistical tool when designing Artificial Neural Networks of Radial Basis Function architectures. Santhanakumar, Adalarasan, Siddharth, and Velayudham (2016) employed a grey-based RSM and Taguchi's L27 orthogonal design on the study of the influence of cutting speed (Vc), feed rate (f) and depth of cut (ap) on tool's flank wear and on roughness in rough machining of high-strength materials; at the same time they reduced their multi-response optimization case to a single-response one, they found that, even though the surface finish's quality was improved by the increase of the cutting speed, as feed rate and depth of cut increase to elevated values the roughness also increased.…”
Section: Methodsmentioning
confidence: 99%
“…Chromium layer thickness predictions on hard chrome plating processes´ results suggest that DOE may be successfully used for the optimization of ANNs´ backpropagation parameters. In another paper on turning, DOE was employed to determine factor levels that benefit network forecasting skills, concluding that the DOE methodology constitutes a better approach to the design of RBF networks for roughness prediction than most trial and error common approaches [ 35 ]. Authors in [ 36 ] comment that an efficient methodology is needed to obtain optimal values for various parameters in artificial neural networks.…”
Section: Introductionmentioning
confidence: 99%
“…though it is costly and difficult to machine [7][8][9][10][11][12]. Researchers have used regression analysis and response surface methodology (RSM) [13][14][15][16][17][18][19][20][21][22] for prediction of R a . Deshpande et al [2] have used regression-based modelling for estimating R a in turning of Inconel 718.…”
Section: Introductionmentioning
confidence: 99%
“…Pontes et al [15] predicted R a using radial basis function neural network approach in hard turning of AISI 52100 steel. They concluded that the ANN model was accurately predicting the R a .…”
Section: Introductionmentioning
confidence: 99%
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