6533b861fe1ef96bd12c457a
RESEARCH PRODUCT
Model-based automatic tuning of a filtration control system for submerged anaerobic membrane bioreactors (AnMBR)
J. RibesMaría Victoria RuanoJosé FerrerÁNgel RoblesAurora Secosubject
INGENIERIA HIDRAULICAEngineeringMonte Carlo methodFiltration and SeparationBiochemistrylaw.inventionControl theorylawGeneral Materials ScienceSensitivity (control systems)Physical and Theoretical ChemistryControl systemProcess engineeringTECNOLOGIA DEL MEDIO AMBIENTESpargingFiltrationOperating costDowntimebusiness.industryModel-based automatic tuningControl engineeringControl systembusinessSubmerged anaerobic membrane bioreactorsModel filtrationdescription
This paper describes a model-based method to optimise filtration in submerged AnMBRs. The method is applied to an advanced knowledge-based control system and considers three statistical methods: (1) sensitivity analysis (Morris screening method) to identify an input subset for the advanced controller; (2) Monte Carlo method (trajectory-based random sampling) to find suitable initial values for the control inputs; and (3) optimisation algorithm (performing as a supervisory controller) to re-calibrate these control inputs in order to minimise plant operating costs. The model-based supervisory controller proposed allowed filtration to be optimised with low computational demands (about 5min). Energy savings of up to 25% were achieved when using gas sparging to scour membranes. Downtime for physical cleaning was about 2.4% of operating time. The operating cost of the AnMBR system after implementing the proposed supervisory controller was about 0.045/m3, 53.3% of which were energy costs.
year | journal | country | edition | language |
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2014-09-01 | Journal of Membrane Science |