In: A neural network to predict spectral acceleration (Elsevier eBooks)
Chapter In A Book 2020 English
Authors
AK
Ali R. Kashani
MA
Mohsen Akhani
CC
Charles V. Camp
Abstract
1 min read
In this study, the main effort was evaluating the efficiency of artificial intelligence-based machine learning algorithms in the ground motion acceleration prediction (GMPE). To this end, a backpropagation neural networks (BPNN) is selected to build a data-driven model. This research evaluates the results of 25,745 records provided by the Pacific Earthquake Engineering Research Center (PEER). A total of nine independent variables have been considered to describe ground motion acceleration. Linear regression is applied to the model as a benchmark. The effect of a number of hidden layers, different activation functions, and optimizers are also examined. The results declared that one-hidden layer BPNN with ‘RMSprop’ optimizer and ‘Softplus’ activation function performed as the best predictor.
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