Mostafa Gandomi,  Mohsen Soltanpour,  Mohammad R. Zolfaghari,  Amir H. Gandomi. Prediction of peak ground acceleration of Iran's tectonic regions using a hybrid soft computing technique[J]. Geoscience Frontiers, 2016, 7(1): 75-82. DOI: 10.1016/j.gsf.2014.10.004
Citation: Mostafa Gandomi,  Mohsen Soltanpour,  Mohammad R. Zolfaghari,  Amir H. Gandomi. Prediction of peak ground acceleration of Iran's tectonic regions using a hybrid soft computing technique[J]. Geoscience Frontiers, 2016, 7(1): 75-82. DOI: 10.1016/j.gsf.2014.10.004

Prediction of peak ground acceleration of Iran's tectonic regions using a hybrid soft computing technique

  • A new model is derived to predict the peak ground acceleration (PGA) utilizing a hybrid method coupling artificial neural network (ANN) and simulated annealing (SA), called SA-ANN. The proposed model relates PGA to earthquake source to site distance, earthquake magnitude, average shear-wave velocity, faulting mechanisms, and focal depth. A database of strong ground-motion recordings of 36 earthquakes, which happened in Iran's tectonic regions, is used to establish the model. For more validity verification, the SA-ANN model is employed to predict the PGA of a part of the database beyond the training data domain. The proposed SA-ANN model is compared with the simple ANN in addition to 10 well-known models proposed in the literature. The proposed model performance is superior to the single ANN and other existing attenuation models. The SA-ANN model is highly correlated to the actual records (R = 0.835 and ρ = 0.0908) and it is subsequently converted into a tractable design equation.
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