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Obtaining Spectrum Matching Time Series Using a Reweighted Volterra Series Algorithm (RVSA)
Author(s) -
Nicholas A Alexander,
A.A. Chanerley,
Adam J Crewe,
Subhamoy Bhattacharya
Publication year - 2014
Publication title -
bulletin of the seismological society of america
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.258
H-Index - 151
eISSN - 1943-3573
pISSN - 0037-1106
DOI - 10.1785/0120130198
Subject(s) - series (stratigraphy) , algorithm , matching (statistics) , spectrum (functional analysis) , cross spectrum , computer science , mathematics , statistics , computer vision , frequency domain , geology , paleontology , physics , quantum mechanics
In this paper, we introduce a novel algorithm for morphing any accelerogram into a spectrum matching one. First, the seed time series is re-expressed as a discrete Volterra series. The first-order Volterra kernel is estimated by a multilevel wavelet decomposition using the stationary wavelet transform. Second, the higher-order Volterra kernels are estimated using a complete multinomial mixing of the first-order kernel functions. Finally, the weighting of every term in this Volterra series is optimally adapted using a Levenberg–Marquardt algorithm such that the modified time series matches any target response spectrum. Comparisons are made using the SeismoMatch algorithm, and this reweighted Volterra series algorithm is demonstrated to be considerably more robust,matching the target spectrum more faithfully. This is achieved while qualitatively maintaining the original signal’s non-stationary statistics, such as general envelope, time location of large pulses, and variation of frequency content with time

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