Title of article :
Kalman filtering for neural prediction of response spectra from mining tremors
Author/Authors :
Agnieszka Krok، نويسنده , , Zenon Waszczyszyn and Marek Bartczak، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Pages :
7
From page :
1257
To page :
1263
Abstract :
Acceleration response spectra (ARS) for mining tremors in the Upper Silesian Coalfield, Poland are generated using neural networks trained by means of Kalman filtering. The target ARS were computed on the base of measured accelerograms. It was proved that the standard feed-forward, layered neural network, trained by the DEFK (decoupled extended Kalman filter) algorithm is numerically much less efficient than the standard recurrent NN learnt by Recurrent DEKF, cf. [Haykin S, (editor). Kalman filtering and neural networks. New York: John Wiley & Sons; 2001]. It is also shown that the studied KF algorithms are better than the traditional Resilient-Propagation learning method. The improvement of the training process and neural prediction due to introduction of an autoregressive input is also discussed in the paper.
Keywords :
NEURAL NETWORKS , Kalman filtering , Autoregressive input , Acceleration response spectrum , Mining tremor
Journal title :
Computers and Structures
Serial Year :
2007
Journal title :
Computers and Structures
Record number :
1210174
Link To Document :
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