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Effects of Measurement Uncertainties on Adaptive Source Characterization in Water Distribution Networks Li Liu, E. Downey Brill, G. Mahinthakumar, James Uber, Emily M. Zechman, S. Ranjithan North Carolina State University
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Contaminant Source Determination u Rapid identification of … ¡ Contamination source location ¡ Starting time ¡ Mass loadings at different time u When to stop the search and make final decision u Necessary information for threat management in water distribution systems
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Challenges of Source Identification u Inverse Problem ¡ Ill-posed/Non-uniqueness u Under dynamic environments ¡ Dynamic system ¡ Dynamically updated observations u Under noisy environments ¡ Measurement error ¡ Uncertain demands ¡ Model error
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Simulation-Optimization Method Hydraulic Simulation Water Quality Simulation EA-based Optimizer Observed Data C sim Source characteristics t C obs
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Adaptive Dynamic Optimization Technique (ADOPT) u An EA-based search u Solves as information becomes available over time u Multiple solutions to assess non-uniqueness
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Objective u Investigate the effects of sensor errors on source characteristics obtained using ADOPT
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Assumptions u Deterministic demand values u Conservative contaminant u Contamination occurs at any one location in the network u Only sensor errors are considered
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Scenarios with Sensor Error u Scenario 1: Sensor with continuous malfunction u Scenario 2: Sensor with intermittent malfunction u Scenario 3: Sensor activates after a lag time of first detection u Scenario 4: Sensor with systematic reading error
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Contamination Case A Mass Loading Profile
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Contamination Case A… Node 197 Node 184 Node 211 Node 115 Time Step (10 mins) Observed Conc. (mg/L) Time Step (10 mins)
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Results for Case A with Perfect Data Node 197 Node 184 Node 211 Node 115 True source Best solution Prediction Error = 0.026 mg/L Observed Conc. (mg/L) Time Step (10 mins)
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Case A : scenario 1 Node 115 True concentration Observed concentration Observed Conc. (mg/L)
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Case A : scenario 1 Node 115 True concentration Node 184 Observed concentration Best solution Observed Conc. (mg/L) Time Step (10 mins) Observed Conc. (mg/L)
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Case A: scenario 2, 3 & 4 Best solution True concentration Observed concentration Scenario 2 Scenario 3 Scenario 4 Observed Conc. (mg/L) Time Step (10 mins) Observed Conc. (mg/L) Node 115
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Contamination Case B True Source Mass Loading Profile
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Case B … Time Step (10 mins) Observed Conc. (mg/L) Time Step (10 mins) Observed Conc. (mg/L) Node 197 Node 184Node 211
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Results for Case B with Perfect Data
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Node 197 Node 211 Node 184 Results for Case B with Perfect Data
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Case B: scenario 1 Time Step (10 mins) Observed Conc. (mg/L) Time Step (10 mins) Observed Conc. (mg/L) Node 197 Node 184Node 211
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Case B: scenario 2 Time Step (10 mins) Observed Conc. (mg/L) Time Step (10 mins) Observed Conc. (mg/L) Node 197 Node 184 Node 211
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Case B: scenario 3 & 4 Scenario 3 Scenario 4
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Summary for results Number of alternative source locations Scenario #
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Summary for results… Scenario # Mass Loading difference at true source location (g/min)
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Final Remarks u Source characteristics identified by ADOPT are influenced by the type of sensor errors. u Investigate effects of demand uncertainty. u Update ADOPT to be robust under combined noisy conditions.
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Acknowledgements This work is supported by National Science Foundation (NSF) under Grant No. CMS-0540316 under the DDDAS program.
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