Title :
A Multiway Model for Predicting Earthquake Ground Motion
Author :
Yang Bai ; Tezcan, Jale ; Qiang Cheng ; Jie Cheng
Author_Institution :
Southern Illinois Univ., Carbondale, IL, USA
Abstract :
This paper develops a novel supervised method for predicting earthquake ground motions in the wavelet domain. The training input is a set of seismological predictors related to seismic source, path and local site conditions, and the training output consists of the weights from a multiway analysis of ground motions. We treat wavelet transforms of acceleration records as images and extract essential patterns from them using tensor decomposition. The decomposition weights of these patterns are then linked to seismological variables using general regression neural network (GRNN). The resulting nonparametric model is then used to predict the wavelet image of an accelerogram for a given set of seismological variables. The predicted image can be transformed back to the time domain using inverse wavelet transform for subsequent processing to match a given design spectrum. Unlike conventional ground motion models, the proposed approach retains the time domain characteristics of ground motions. Pearson´s correlation coefficient between the vectorized forms of actual and predicted wavelet images has been used as the similarity metric in assessing the prediction capability of the resulting model. Experimental results demonstrate the ability of the proposed model to predict significant patterns in the seismic energy distribution.
Keywords :
earthquakes; geophysics computing; neural nets; seismology; wavelet transforms; Pearson correlation coefficient; accelerogram; earthquake ground motions prediction; general regression neural network; ground motion models; inverse wavelet transform; multiway analysis; multiway model; nonparametric model; prediction capability seismic energy distribution; seismological predictors; seismological variables; time domain characteristics; training output; wavelet domain; wavelet image; wavelet images; wavelet transforms; Analytical models; Correlation coefficient; Earthquakes; Predictive models; Tensile stress; Wavelet analysis; Wavelet transforms; Tensor decomposition; general regression neural network; ground motion modeling; wavelet transform;
Conference_Titel :
Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD), 2013 14th ACIS International Conference on
Conference_Location :
Honolulu, HI
DOI :
10.1109/SNPD.2013.17