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Study of Pile Cap Lateral Resistance using Artificial Neural Networks

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Figure

Figure 1: The typical NN Architecture
Figure 4: 9 D Spacing & model pile length=775 mm (At GL-35.74% , Below 0.2m GL-42.34%)
Figure 7: Sensitivity about the mean by neural network
Figure 8: No. of pile vs. pile cap resistance

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