会议专题

STRONG GROUND MOTION DURATION AND RESPONSE SPECTRA USING ARTIFICIAL NEURAL NETWORKS

Artificial neural networks (ANN) were used to estimate strong ground motion duration and response spectra using accelerograms recorded in and around the Mexican cities of Puebla and Oaxaca. These networks were developed using a back propagation algorithm and multi-layer feed-forward architecture in the training stage. For strong ground motion duration, we integrate data considering that the phenomenon is characterized by seismic magnitude, epicenter distance, site period and azimuth. Results were compared with those obtained from the Arias method and Reinoso&Ordaz equation. Regarding to response spectra, besides the previous parameters we also considered a vector of spectral amplitudes. In order to evaluate the forecasting capacity of the ANN strong ground motion duration and response spectra were estimated from earthquakes whose data were not included in the training phase. An acceptable concordance is observed between them and those provided by the ANN. Overall, the results presented show that ANN provide good and reasonable estimates of strong ground motion duration and response spectra in each one of the three orthogonal components of the accelerograms recorded in the cities of Puebla and Oaxaca. Furthermore, the networks have a good predictive capacity to estimate duration and response spectra.

Strong Ground Motion Duration Artificial Neural Network Response Spectra Accelerogram Recording Arias Intensity Earthquake.

Alcántara L. Ovando E. Macías M. A. Ruiz A. L.

Instituto de Ingeniería de la Universidad Nacional Autónoma de México Ciudad Universitaria, Apdo. Postal 70-472 Coyoacán 04510, México, DF, México

国际会议

14th World Conference on Earthquake Engineering(第十四届国际地震工程会议)

北京

英文

2008-10-12(万方平台首次上网日期,不代表论文的发表时间)