๐”– Bobbio Scriptorium
โœฆ   LIBER   โœฆ

New method of generating spectrum compatible accelerograms using neural networks

โœ Scribed by Ghaboussi, Jamshid; Lin, Chu-Chieh J.


Publisher
John Wiley and Sons
Year
1998
Tongue
English
Weight
511 KB
Volume
27
Category
Article
ISSN
0098-8847

No coin nor oath required. For personal study only.

โœฆ Synopsis


A new method is proposed for generating artificial earthquake accelerograms from response spectra. This method uses the learning capabilities of neural networks to developed the knowledge of the inverse mapping from the response spectra to earthquake accelerogram. In the proposed method the neural networks learn the inverse mapping directly from the actual recorded earthquake accelerograms and their response spectra. A two-stage approach is used. In the first stage, a replicator neural network is used as a data compression tool. The replicator neural network compresses the vector of the discrete Fourier spectra of the accelerograms to vectors of much smaller dimension. In the second stage, a multi-layer feed-forward neural network learns to relate the response spectrum to the compressed Fourier spectrum. A simple example is presented, in which only 30 accelerograms are used to train the two-stage neural networks. This example demonstrates how the method works and shows its potential.


๐Ÿ“œ SIMILAR VOLUMES


A new method of modelling the rock micro
โœ Feng, Xia-Ting; Seto, Masahiro ๐Ÿ“‚ Article ๐Ÿ“… 1999 ๐Ÿ› John Wiley and Sons ๐ŸŒ English โš– 224 KB ๐Ÿ‘ 2 views

Microfracturing of rock is a complicated damage evolution process. Inaccurate prediction of microfracturing behaviours suggests a need for the development of a better modelling method. Analysis of acoustic emission (AE) measurements in double-torsion tests indicates that micro-fracturing behaviours

Universal Approximation Using Feedforwar
โœ Franco Scarselli; Ah Chung Tsoi ๐Ÿ“‚ Article ๐Ÿ“… 1998 ๐Ÿ› Elsevier Science ๐ŸŒ English โš– 699 KB

In this paper, we present a review of some recent works on approximation by feedforward neural networks. A particular emphasis is placed on the computational aspects of the problem, i.e. we discuss the possibility of realizing a feedforward neural network which achieves a prescribed degree of accura