Testing the impact of stratigraphic uncertainty on spectral analyses of sedimentary series
Spectral analysis is a key tool for identifying periodic patterns in sedimentary sequences, including astronomically related orbital signals. While most spectral analysis methods require equally spaced samples, this condition is rarely achieved either in the field or when sampling sediment core. Her...
Main Authors: | , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2016-09-01
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Series: | Climate of the Past |
Online Access: | http://www.clim-past.net/12/1765/2016/cp-12-1765-2016.pdf |
Summary: | Spectral analysis is a key tool for identifying periodic patterns in
sedimentary sequences, including astronomically related orbital signals.
While most spectral analysis methods require equally spaced samples, this
condition is rarely achieved either in the field or when sampling sediment
core. Here, we propose a method to assess the impact of the uncertainty or
error made in the measurement of the sample stratigraphic position on the
resulting power spectra. We apply a Monte Carlo procedure to randomise the
sample steps of depth series using a gamma distribution. Such a distribution
preserves the stratigraphic order of samples and allows controlling the
average and the variance of the distribution of sample distances after
randomisation. We apply the Monte Carlo procedure on two geological datasets
and find that gamma distribution of sample distances completely smooths the
spectrum at high frequencies and decreases the power and significance levels
of the spectral peaks in an important proportion of the spectrum. At 5 % of
stratigraphic uncertainty, a small portion of the spectrum is completely
smoothed. Taking at least three samples per thinnest cycle of interest should
allow this cycle to be still observed in the spectrum, while taking at least
four samples per thinnest cycle of interest should allow its significance levels
to be preserved in the spectrum. At 10 and 15 % uncertainty, these thresholds
increase, and taking at least four samples per thinnest cycle of interest should
allow the targeted cycles to be still observed in the spectrum. In addition,
taking at least 10 samples per thinnest cycle of interest should allow their
significance levels to be preserved. For robust applications of the power
spectrum in further studies, we suggest providing a strong control of the
measurement of the sample position. A density of 10 samples per putative
precession cycle is a safe sampling density for preserving spectral power and
significance level in the Milankovitch band. For lower sampling density, the
use of gamma-law simulations should help in assessing the impact of
stratigraphic uncertainty in the power spectrum in the Milankovitch band.
Gamma-law simulations can also model the distortions of the Milankovitch
record in sedimentary series due to variations in the sedimentation rate. |
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ISSN: | 1814-9324 1814-9332 |