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Neural Network Modeling and Prediction of Surface Roughness in Machining Aluminum Alloys

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Figure

Figure 1. Training for average roughness Ra.
Figure 3. Training for for peak roughness Rp.
Figure 7. Prediction of root-mean-square roughness Rq.
Table 1. Comparison of measured and predicted average roughness (Ra) for the MLP model

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