Drinking Water Treatment Plant Design Incorporating Variability and Uncertainty |
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Authors: | Dominic L. Boccelli Mitchell J. Small Urmila M. Diwekar |
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Affiliation: | 1Office of Research and Development, National Homeland Security Research Center, U.S. Environmental Protection Agency, MS 163, 26 W. Martin Luther King Dr., Cincinnati, OH 45268 (corresponding author). E-mail: boccelli.dominic@epa.gov 2H. John Heinz III Professor of Environmental Engineering, Dept. of Civil and Environmental Engineering and Dept. of Engineering and Public Policy, Carnegie Mellon Univ., Pittsburgh, PA 15213. 3President, Center for Uncertain Systems: Tools for Optimization and Management, Vishwamitra Research Institute, 34 North Cass Ave., Westmont, IL 60559.
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Abstract: | Both inherent natural variability and model parameter uncertainty must be considered in the development of robust and reliable designs for drinking water treatment. This study presents an optimization framework for investigating the effects of five variable influent parameters and three uncertain model parameters on the least-cost treatment plant configuration (contact, direct, or nonsweep conventional filtration) that reliably satisfies an effluent particulate matter concentration constraint. Incorporating variability and uncertainty within the decision-making framework generates information for investigating: (1) impacts on total cost and treatment reliability; (2) shifts on the least-cost treatment configuration for providing reliable treatment; and (3) the importance of the individual variable and uncertain parameter distributions for reliably satisfying an effluent water quality constraint. Increasing the magnitude of influent variability and model parameter uncertainty results in a greater expected design cost due, generally, to increases in process sizing required to reliably satisfy the effluent concentration constraint. The inclusion of variability and uncertainty can also produce a shift in the locations of the least-cost configuration regions, which are dependent on the expected influent water quality and the magnitude of variability and uncertainty. The additional information provided by incorporating the variable and uncertain parameters illustrates that parameter distributions related to the primary removal mechanism are critical, and that contact and direct filtration are more sensitive to variability and uncertainty than conventional filtration. |
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Keywords: | Potable water Water treatment plants Stochastic processes Optimization Uncertainty principles |
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