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Bulletin of Earthquake Engineering | 2014

Comparisons among the five ground-motion models developed using RESORCE for the prediction of response spectral accelerations due to earthquakes in Europe and the Middle East

John Douglas; Sinan Akkar; Gabriele Ameri; Pierre Yves Bard; Dino Bindi; Julian J. Bommer; Sanjay Singh Bora; Fabrice Cotton; Boumédiène Derras; Marcel Hermkes; Nicolas Kuehn; L. Luzi; Marco Massa; Francesca Pacor; Carsten Riggelsen; M. Abdullah Sandıkkaya; Frank Scherbaum; Peter J. Stafford; Paola Traversa

This article presents comparisons among the five ground-motion models described in other articles within this special issue, in terms of data selection criteria, characteristics of the models and predicted peak ground and response spectral accelerations. Comparisons are also made with predictions from the Next Generation Attenuation (NGA) models to which the models presented here have similarities (e.g. a common master database has been used) but also differences (e.g. some models in this issue are nonparametric). As a result of the differing data selection criteria and derivation techniques the predicted median ground motions show considerable differences (up to a factor of two for certain scenarios), particularly for magnitudes and distances close to or beyond the range of the available observations. The predicted influence of style-of-faulting shows much variation among models whereas site amplification factors are more similar, with peak amplification at around 1s. These differences are greater than those among predictions from the NGA models. The models for aleatory variability (sigma), however, are similar and suggest that ground-motion variability from this region is slightly higher than that predicted by the NGA models, based primarily on data from California and Taiwan.


Earthquake Spectra | 2016

Site-Condition Proxies, Ground Motion Variability, and Data-Driven GMPEs: Insights from the NGA-West2 and RESORCE Data Sets

Boumédiène Derras; Pierre-Yves Bard; Fabrice Cotton

We compare the ability of various site-condition proxies (SCPs) to reduce the aleatory variability of ground motion prediction equations (GMPEs). Three SCPs (measured V S30, inferred V S30, local topographic slope) and two accelerometric databases (RESORCE and NGA-West2) are considered. An artificial neural network (ANN) approach including a random-effect procedure is used to derive GMPEs setting the relationship between peak ground acceleration (PGA), peak ground velocity (PGV), pseudo-spectral acceleration [PSA(T)], and explanatory variables (M w , R JB , and V S30 or Slope). The analysis is performed using both discrete site classes and continuous proxy values. All “non-measured” SCPs exhibit a rather poor performance in reducing aleatory variability, compared to the better performance of measured V S30. A new, fully data-driven GMPE based on the NGA-West2 is then derived, with an aleatory variability value depending on the quality of the SCP. It proves very consistent with previous GMPEs built on the same data set. Measuring V S30 allows for benefit from an aleatory variability reduction up to 15%.


Bulletin of Earthquake Engineering | 2014

Towards fully data driven ground-motion prediction models for Europe

Boumédiène Derras; Pierre Yves Bard; Fabrice Cotton


Bulletin of the Seismological Society of America | 2012

Adapting the Neural Network Approach to PGA Prediction: An Example Based on the KiK‐net Data

Boumédiène Derras; Pierre-Yves Bard; Fabrice Cotton; Abdelmalek Bekkouche


Archive | 2011

USE OF THE ARTIFICIAL NEURAL NETWORK FOR PEAK GROUND ACCELERATION ESTIMATION

Boumédiène Derras; Abdelmalek Bekkouche


Archive | 2010

Neuronal Approach and the Use of KIK-NET Network to Generate Response Spectrum on the Surface

Boumédiène Derras; Abdelmalek Bekkouche; Djawad Zendagui


Earth, Planets and Space | 2017

V S30 , slope, H 800 and f 0 : performance of various site-condition proxies in reducing ground-motion aleatory variability and predicting nonlinear site response

Boumédiène Derras; Pierre-Yves Bard; Fabrice Cotton


Earth, Planets and Space | 2017

Deriving amplification factors from simple site parameters using generalized regression neural networks: implications for relevant site proxies

Ahmed Stambouli; Djawad Zendagui; Pierre-Yves Bard; Boumédiène Derras


Second European Conference on Earthquake Engineering and Seismology (2ECEES) | 2014

TESTING THE USE OF LOCAL SLOPE AS A PROXY OF GMPE'S SITE CONDITIONS

Boumédiène Derras; Pierre-Yves Bard; Fabrice Cotton; Anne Lemoine


International Journal of Earthquake Engineering and Hazard Mitigation (IREHM) | 2014

Peak Ground Acceleration Prediction Using Artificial Neural Networks Approach: Application to the Kik-Net Data

Boumédiène Derras

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Pierre-Yves Bard

Centre national de la recherche scientifique

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Pierre-Yves Bard

Centre national de la recherche scientifique

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