Development of a decision support system for long sea outfall designing and operations

dc.contributor.advisorRatnayake, N
dc.contributor.advisorIndralingam, M
dc.contributor.authorLankasena, BNS
dc.date.accept2001
dc.date.accessioned2011-11-29T10:32:05Z
dc.date.available2011-11-29T10:32:05Z
dc.description.abstractLong sea out-fall is an acceptable method of domestic wastewater disposal, provided that the design is done properly, and it is constructed robustly and according to the design. The dispersion of the sewage after discharging to the sea has come under increased scrutiny in recent years, due to the sea and seashore pollution. In a properly designed and constructed long sea out-fall, the waste is discharged at a point in sea, away from any environmentally sensitive areas such as coral reefs, and far enough from the beach so that the quality of water reaching the beach conforms to the stipulated standards. In this research development of SOS (Sea Outfall System) was done and a successful implication of GA (Genetic Algorithm) in sea outfall optimization and ANN (Artificial Neural Network) in concentration prediction after discharging to sea is introduced. The SOS is specially developed to design and identify pollutant behavior of sewage discharged using Multi-port Diffusers. The system is designed to handle several scenarios such as stratified and unstratified sea conditions and stagnant and flowing plumes. The system can predict concentrations of parameters in the far field as well as the near field, and also can be used as a decision support system for designing. It is also capable of analyzing the near field of single port sea outfalls, and can be developed for the far field analyzing and design decisions of multiport diffuser discharges. SOS Expert (Decision-maker) provides decisions on required designing configurations, so that the user can find optimum configurations. SOS HELP provides necessary information about long sea outfalls as well as information about the SOS. In addition to SOS, Artificial Neural Network (ANN) too is used in concentration prediction after outfall discharging. Artificial Neural Networks are capable of modeling experience based non-algorithmic knowledge. Different technologies and data gathering methodologies used in ANN training and it is possible to develop site-specific neural networks for predictions. The system is developed according to Object Oriented Techniques. Major programming is done using Visual C++ Version 6.0 and MATLAB 5.3 was used in GA optimizations. WinNN Version 0.93 used in ANN designing, training and testing. The system provides an easy way to identify concentrations due to dispersion and decaying. With the help of SOS Expert designers can optimize outfall configurations. The cost and time needed in sea outfall designing and operations can be reduced with the SOS, SOS Expert, GA optimization technique and ANN predictions.
dc.identifier.accno74445en_US
dc.identifier.degreeMScen_US
dc.identifier.departmentDepartment of Civil Engineeringen_US
dc.identifier.facultyEngineeringen_US
dc.identifier.urihttp://dl.lib.mrt.ac.lk/handle/123/1959
dc.language.isoenen_US
dc.subjectCIVIL ENGINEERING-Thesis
dc.subjectDECISION SUPPORT SYSTEMS
dc.subjectWASTE DISPOSAL
dc.titleDevelopment of a decision support system for long sea outfall designing and operations
dc.typeThesis-Abstract

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