Self-affinity and surface-area-dependent fluctuations of lake-level time series

Zachary C. Williams, Jon Pelletier

Research output: Contribution to journalArticle

2 Citations (Scopus)

Abstract

We performed power-spectral analyses on 133 globally distributed lake-level time series after removing annual variability. Lake-level power spectra are found to be power-law functions of frequency over the range of 20 d-1 to 27 yr-1, suggesting that lake levels are globally a f-β-type noise. The spectral exponent (β), i.e.; the best-fit slope of the logarithm of the power spectrum to the logarithm of frequency, is a nonlinear function of lake surface area, indicating that lake size is an important control on the magnitude of water-level variability over the range of time scales we considered. A simple cellular model for lake-level fluctuations that reproduces the observed spectral-scaling properties is presented. The model (an adaptation of a surface-growth model with random deposition and relaxation) is based on the equations governing flow in an unconfined aquifer with stochastic inputs and outputs of water (e.g.; random storms). The agreement between observation and simulation suggests that lake surface area, spatiotemporal stochastic forcing, and diffusion of the groundwater table are the primary factors controlling lake water-level variability in natural (unmanaged) lakes. Water-level variability is generally considered to be a manifestation of climate trends or climate change, yet our work shows that an input with short or no memory (i.e.; weather) gives rise to a long-memory nonstationary output (lake water-level). This work forms the basis for a null hypothesis of lake water-level variability that should be disproven before water-level trends are to be attributed to climate.

Original languageEnglish (US)
Pages (from-to)7258-7269
Number of pages12
JournalWater Resources Research
Volume51
Issue number9
DOIs
StatePublished - Sep 1 2015

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lake level
water level
surface area
time series
lake water
lake
unconfined aquifer
climate
power law
timescale
weather
climate change
groundwater
simulation
water

Keywords

  • diffusion
  • lake-level variability
  • self-affinity
  • time-series analysis

ASJC Scopus subject areas

  • Water Science and Technology

Cite this

Self-affinity and surface-area-dependent fluctuations of lake-level time series. / Williams, Zachary C.; Pelletier, Jon.

In: Water Resources Research, Vol. 51, No. 9, 01.09.2015, p. 7258-7269.

Research output: Contribution to journalArticle

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