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Artificial Neural Network Approach to Predict the Abrasive Wear of AA2024 B4C Composites

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Figure

Table 1.  Characteristics of the composite materials
Figure 1.  Artificial neural cell (artificial neuron).
Table 2.  Experiment data and predicted output from the ANN network for training set
Figure 4.  SEM image showing the distributions of B4C particles..
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