posted on 2012-03-20, 00:00authored byEduardo Castro-Alcalá, Daniel Fernàndez-Garcia, Jesus Carrera, Diogo Bolster
Mixing is increasingly recognized as a critical process
for understanding
and modeling reactive transport. Yet, mixing is hard to characterize
because it depends nonlinearly on concentrations. Visualization of
optical tracers in the laboratory at high spatial and temporal resolution
can help advance the study of mixing processes. The solute distribution
is obtained by analyzing the relationship between pixel intensity
and tracer concentration. The problem with such techniques is that
grain borders, light fluctuations, and nonuniform brightness contribute
to produce noisy images of concentrations that cannot be directly
used to estimate mixing at the local scale. We present a nonparametric
regression methodology to visualize local values of mixing from noisy
images of optical tracers that minimizes smoothing in the direction
of concentration gradients. This is achieved by weighting pixel data
along concentration isolines. The methodology is used to provide a
full visualization of mixing dynamics in a tracer experiment performed
in a reconstructed aquifer consisting of two materials with contrasting
hydraulic properties. The experiment reveals that mixing is largest
at the contact area of regions with different permeability. Also,
the temporal evolutions of mixing and dilution rates are significantly
different. The mixing rate is more persistent than the dilution rate
during tracer invasion, and the opposite is true during flushing,
which helps in understanding the complementary nature of these two
measures.