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Nanofiltration Results: Membrane Removal of Calcium, Magnesium, Sodium, Silica, Lithium, Chlorine, and Sulfate from Simulated Geothermal BrinesSource

Results from a nanofiltration study utilizing simulated geothermal brines. The data includes a PDF documenting the process used to remove Calcium, Magnesium, Sodium, Silica, Lithium, Chlorine, and Sulfate from simulated geothermal brines. Three different membranes were evaluated. The results were analyzed using inductively coupled plasma mass spectrometry (ICP-MS).

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No licence known
Tags:
calciumcalcium removalchlorinechlorine removallithiumlithium removalmagnesiummagnesium removalmembrane nanofiltrationmineral recoverynanofiltrationsilicasilica removalsimluated geothermal brinesodiumsodium removalsulfatesulfate removal
Formats:
PDF
National Renewable Energy Laboratory (NREL)about 1 year ago
Safe Drinking Water Information System - State System (SDWIS/State)Source

This service currently delivers three datasets via RESTful APIs which draw data from the New Mexico Environment Department's SDWIS/State database: * Drinking Water Watch (DWW) samples * Drinking Water Watch (DWW) violations * Federal Reporting System (FedRep) facilities

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License not specified
Tags:
APIDWWE. coliEPAMDWCAMDWUAPWSSDWISSensorThingschlorinecoliformdrinking waterleadsampleviolation
Formats:
SensorThings APIJSONHTML
New Mexico Environment Departmentabout 1 year ago
Water quality modeling in the dead end sections of drinking water (Supplement)Source

Dead-end sections of drinking water distribution networks are known to be problematic zones in terms of water quality degradation. Extended residence time due to water stagnation leads to rapid reduction of disinfectant residuals allowing the regrowth of microbial pathogens. Water quality models developed so far apply spatial aggregation and temporal averaging techniques for hydraulic parameters by assigning hourly averaged water demands to the main nodes of the network. Although this practice has generally resulted in minimal loss of accuracy for the predicted disinfectant concentrations in main water transmission lines, this is not the case for the peripheries of the distribution network. This study proposes a new approach for simulating disinfectant residuals in dead end pipes while accounting for both spatial and temporal variability in hydraulic and transport parameters. A stochastic demand generator was developed to represent residential water pulses based on a non-homogenous Poisson process. Dispersive solute transport was considered using highly dynamic dispersion rates. A genetic algorithm was used to calibrate the axial hydraulic profile of the dead-end pipe based on the different demand shares of the withdrawal nodes. A parametric sensitivity analysis was done to assess the model performance under variation of different simulation parameters. A group of Monte-Carlo ensembles was carried out to investigate the influence of spatial and temporal variations in flow demands on the simulation accuracy. A set of three correction factors were analytically derived to adjust residence time, dispersion rate and wall demand to overcome simulation error caused by spatial aggregation approximation. The current model results show better agreement with field-measured concentrations of conservative fluoride tracer and free chlorine disinfectant than the simulations of recent advection dispersion reaction models published in the literature. Accuracy of the simulated concentration profiles showed significant dependence on the spatial distribution of the flow demands compared to temporal variation. This dataset is associated with the following publication: Abokifa, A., J. Yang , C. Lo, and P. Biswas. Water Quality Modeling in the Dead End Sections of Drinking Water Distribution Networks. WATER RESEARCH. Elsevier Science Ltd, New York, NY, USA, 18(89): 107-117, (2015).

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No licence known
Tags:
advection dispersionchlorinecorrection factorsdead end pipegenetic algorithmspatial distributionstochastic demands
Formats:
DOCXPDF
United State Environmental Protection Agencyabout 1 year ago