1 research outputs found
<i>In Situ</i> Monitoring of Groundwater Contamination Using the Kalman Filter
This
study presents a Kalman filter-based framework to establish
a real-time <i>in situ</i> monitoring system for groundwater
contamination based on <i>in situ</i> measurable water quality
variables, such as specific conductance (SC) and pH. First, this framework
uses principal component analysis (PCA) to identify correlations between
the contaminant concentrations of interest and <i>in situ</i> measurable variables. It then applies the Kalman filter to estimate
contaminant concentrations continuously and in real-time by coupling
data-driven concentration-decay models with the previously identified
data correlations. We demonstrate our approach with historical groundwater
data from the Savannah River Site F-Area: We use SC and pH data to
estimate tritium and uranium concentrations over time. Results show
that the developed method can estimate these contaminant concentrations
based on <i>in situ</i> measurable variables. The estimates
remain reliable with less frequent or no direct measurements of the
contaminant concentrations, while capturing the dynamics of short-
and long-term contaminant concentration changes. In addition, we show
that data mining, such as PCA, is useful to understand correlations
in groundwater data and to design long-term monitoring systems. The
developed <i>in situ</i> monitoring methodology is expected
to improve long-term groundwater monitoring by continuously confirming
the contaminant plume’s stability and by providing an early
warning system for unexpected changes in the plume’s migration