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Artificial Neural Network Based Prediction Hardness of Al2024-Multiwall Carbon Nanotube Composite Prepared by Mechanical Alloying

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Figure

TABLE 1. Transfer functions used in this study
TABLE 3. The ANN architecture variables
Figure 3. The flowchart of finding suitable the ANN architecture
TABLE 5. Actuarial parameters of the ANN model for predicted hardness in different hidden layer
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