posted on 2021-08-31, 19:37authored byCatherine A. Chamberlin, Gabriel G. Katul, James B. Heffernan
Solute
concentration time series reflect hydrological and biological
drivers through various frequencies, phases, and amplitudes of change.
Untangling these signals facilitates the understanding of dynamic
ecosystem conditions and transient water quality issues. A case in
point is the inference of biogeochemical processes from diel solute
concentration variations. This analysis requires approaches capable
of isolating subtle diel signals from background variability at other
scales. Conventional time series analyses typically assume stationary
or deterministic background variability; however, most rivers do not
respect such niceties. We developed a time-series filtering method
that uses empirical mode decomposition to decompose a measured solute
concentration time series into intrinsic mode frequencies. Based on
externally supplied mechanistic knowledge, we then filter these modes
by periodicity, phase, and coherence with neighboring days. This method
is tested on three synthetic series that incorporate environmental
variability and sensor noise and on a year of 15 min sampled concentration
time series from three hydrologically and ecologically distinct rivers
in the eastern United States. The proposed method successfully isolated
signals in the measured data sets that corresponded with variability
in gross primary productivity. The strength the diel signal isolated
through this method was smaller compared to the true signal in the
synthetic series; however, uncertainty analysis showed that the process-model-based
estimates derived from these signals were similar to other inference
methods. This signal decomposition method retains information that
can be used for further process modeling while making different assumptions
about the data than Fourier and wavelet analyses.