Assessment of spatio-temporal variability of streambed hydraulic conductivity: A case study in the Pavanje river, India
Date
2019
Authors
N, Sujay Raghavendra
Journal Title
Journal ISSN
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Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The hydro-geological properties of streambed together with the hydraulic
gradients determine the fluxes of water, energy and solutes between the stream and
underlying aquifer system. Uncertainty in stream-aquifer interactions arises from the
inherent complex-nested flow paths and spatio-temporal variability of streambed
hydraulic properties. The estimation and modeling of streambed hydraulic conductivity
(Ks) is an emerging interest due to its connection to water quality, aquatic habitat, and
groundwater recharge.
Fragmenting streams with dams, diversions, and less frequently road culverts
disrupt the longitudinal connectivity and capacity of a stream. Dam induced
sedimentation affects hyporheic processes and alters substrate pore space geometries in
the course of progressive stabilization of the sediment layers. The present study reports
the spatial and temporal variability of streambed hydraulic conductivity along the
stream reach obstructed by two Vented Dams in sequence. A detailed field investigation
of streambed hydraulic conductivity using Guelph Permeameter was carried out in an
intermittent stream reach of the Pavanje river basin located in the mountainous, forested
tract of Western Ghats of India. Arriving at realistic statistical and spatial inference
based on in-situ data collected is challenging, considering the possible sediment
sources, processes, and complexity. Statistical tests such as Levene’s and Welch’s ttests were employed to check for various variability measures. The strength of spatial
dependence and the presence of spatial autocorrelation among the streambed Ks
samples were tested by using Moran’s I statistic. The measures of central tendency and
dispersion pointed out reasonable spatial variability in streambed Ks distribution
throughout the study reach during two consecutive years 2016 and 2017. The streambed
was heterogeneous with regard to hydraulic conductivity distribution with high-Ks
zones near the backwater areas of the vented dam and low-Ks zones particularly at the
tail water section of vented dams. Dam operational strategies were responsible for
seasonal fluctuations in sedimentation and modifications to streambed substrate
characteristics (such as porosity, grain size, packing etc.), resulting in heterogeneous
streambed Ks profiles. The channel downstream of vented dams contained significantly
more cohesive deposits of fine sediment due to the overflow of surplus suspendedii
sediment-laden water at low velocity and pressure head. The statistical test results
accept the hypothesis of significant spatial variability of streambed Ks but refuse to
accept the temporal variations. Advanced geo-statistical techniques offer a wide range
of univariate or multi-variate interpolation procedures such as kriging and variogram
analysis that could be applied to these complex systems. The deterministic and geostatistical approaches of spatial interpolation provided virtuous surface maps of
streambed Ks distribution. The Moran’s I index approved the presence of spatial
dependence in the heterogeneous streambed Ks samples. Interpolation maps of Inverse
Distance Weighting (IDW) and Radial Basis Functions (RBF) were more accurate than
the krigged surface maps; however, the prediction uncertainty was lower around the
sampled values in ordinary kriging estimates compared to deterministic methods.
In-situ measurement of streambed hydraulic conductivity all along the length of
the stream may not be an ideal and cost-effective way. Hence, the soft computing
approaches could be applied to induce a rule based relationship for estimating the values
of streambed hydraulic conductivity at unmeasured locations using representative
georeferenced neighborhood data. The artificial intelligence (AI) based spatial
modeling schemes were tested to predict the spatial patterns of streambed hydraulic
conductivity. The geographical coordinates (i.e., latitude and longitude) of the sampled
locations from where the in-situ hydraulic conductivity measurements were made were
used as model inputs to predict streambed Ks over spatial scale using artificial neural
network (ANN), adaptive neuro fuzzy inference system (ANFIS) and support vector
machine (SVM) paradigms. The statistical measures computed by using the actual
versus predicted streambed Ks values of individual models were comparatively
evaluated. The AI based spatial models provided superior spatial Ks prediction
efficiencies with respect to both the strategies/schemes considered. The SVM model
was found to predict reasonably accurate streambed Ks patterns.
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Keywords
Department of Applied Mechanics and Hydraulics