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Optimizing Liquid Effluent Monitoring at a Large Nuclear Complex
Authors:Charissa J Chou  Vernon G Johnson  D Brent Barnett  Phil M Olson
Institution:(1) Pacific Northwest National Laboratory, P.O. Box 999, MSIN: K6-81, Richland, Washington 99352, USA;(2) Fluor Hanford Company, Richland, Washington 99352, USA;(3) Pacific Northwest National Laboratory, P.O. Box 999, MSIN: K6-81, Richland, Washington 99352, USA;(4) Fluor Hanford Company, Richland, Washington 99352, USA
Abstract:Effluent monitoring typically requires a large number of analytes and samples during the initial or startup phase of a facility. Once a baseline is established, the analyte list and sampling frequency may be reduced. Although there is a large body of literature relevant to the initial design, few, if any, published papers exist on updating established effluent monitoring programs. This paper statistically evaluates four years of baseline data to optimize the liquid effluent monitoring efficiency of a centralized waste treatment and disposal facility at a large defense nuclear complex. Specific objectives were to: (1) assess temporal variability in analyte concentrations, (2) determine operational factors contributing to waste stream variability, (3) assess the probability of exceeding permit limits, and (4) streamline the sampling and analysis regime. Results indicated that the probability of exceeding permit limits was one in a million under normal facility operating conditions, sampling frequency could be reduced, and several analytes could be eliminated. Furthermore, indicators such as gross alpha and gross beta measurements could be used in lieu of more expensive specific isotopic analyses (radium, cesium-137, and strontium-90) for routine monitoring. Study results were used by the state regulatory agency to modify monitoring requirements for a new discharge permit, resulting in an annual cost savings of US $223,000. This case study demonstrates that statistical evaluation of effluent contaminant variability coupled with process knowledge can help plant managers and regulators streamline analyte lists and sampling frequencies based on detection history and environmental risk.
Keywords:Effluent monitoring  Variability  Grab and composite sampling  Exceedance probability
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