Fig. 1. Expansion Joint Damage1).
Fig. 2. Measured displacement data and sensor.
Fig. 2. Artificial neural network model structure.
Fig. 3. Prediction performance.
Fig. 4. Comparison of actual and predicted values.
Table 1. Descriptive statistics
Table 2. Design of artificial neural network model topology
Table 3. Coefficients of multiple regression analysis model
Table 4. Pearson's correlations
Table 5. Training options
Table 6. Independent variable importance
Table 7. Comparison of predictive model validation
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