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Risk-Based Environmental Remediation: Bayesian Monte Carlo Analysis and the Expected Value of Sample Information
Authors:Maxine E. Dakins  John E. Toll  Mitchell J. Small  Kevin P. Brand
Affiliation:Department of Civil Engineering, University of Idaho, 1776 Science Center Drive, Idaho Falls, Idaho 83405.;Parametrix, Inc., 5808 Lake Washington Boulevard NE, Kirkland, Washington 98033.;Departments of Civil &Environmental Engineering and Engineering &Public Policy, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213.;Program in Environmental Health and Public Policy, Harvard School of Public Health, Harvard University, Boston, Massachusetts 02115.
Abstract:A methodology that simulates outcomes from future data collection programs, utilizes Bayesian Monte Carlo analysis to predict the resulting reduction in uncertainty in an environmental fate-and-transport model, and estimates the expected value of this reduction in uncertainty to a risk-based environmental remediation decision is illustrated considering polychlorinated biphenyl (PCB) sediment contamination and uptake by winter flounder in New Bedford Harbor, MA. The expected value of sample information (EVSI), the difference between the expected loss of the optimal decision based on the prior uncertainty analysis and the expected loss of the optimal decision from an updated information state, is calculated for several sampling plan. For the illustrative application we have posed, the EVSI for a sampling plan of two data points is $9.4 million, for five data points is $10.4 million, and for ten data points is $11.5 million. The EVSI for sampling plans involving larger numbers of data points is bounded by the expected value of perfect information, $15.6 million. A sensitivity analysis is conducted to examine the effect of selected model structure and parametric assumptions on the optimal decision and the EVSI. The optimal decision (total area to be dredged) is sensitive to the assumption of linearity between PCB sediment concentration and flounder PCB body burden and to the assumed relationship between area dredged and the harbor-wide average sediment PCB concentration; these assumptions also have a moderate impact on the computed EVSI. The EVSI is most sensitive to the unit cost of remediation and rather insensitive to the penalty cost associated with under-remediation.
Keywords:Bayesian Monte Carlo analysis    decision analysis    value of information    New Bedford Harbor    PCBs
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