Water Quality Modeling using Artificial Intelligence-Based Tools

dc.contributor.authorCouto, Catarina
dc.contributor.authorVicente, Henrique
dc.contributor.authorMachado, José
dc.contributor.authorAbelha, António
dc.contributor.authorNeves, José
dc.date.accessioned2012-09-10T11:04:27Z
dc.date.available2012-09-10T11:04:27Z
dc.date.issued2012
dc.date.updated2012-09-06T17:45:17Z
dc.description.abstractWater, like any other biosphere natural resource, is scarce, and its judicious use includes its quality safeguarding. Indeed, there is a wide concern to the fact that an ineffi cient water management system may become one of the major drawbacks for a human-centered sustainable development process. The assessment of reservoir water quality is constrained due to geographic considerations, the number of parameters to be considered and the huge financial resources needed to get such data. Under these circumstances, the modeling of water quality in reservoirs is essential in the resolution of environmental problems and has lately been asserting itself as a relevant tool for a sustainable and harmonious progress of the populations. The analysis and development of forecast models, based on Artificial Intelligence-Based tools and the new methodologies for problem solving, has proven to be an alternative, having in mind a pro-active behavior that may contribute decisively to diagnose, preserve, and rehabilitate the reservoirs. In particular, this work describes the training, validation and application of Artificial Neural Networks (ANNs) and Decision Trees (DTs) to forecast the water quality of the Odivelas reservoir, in Portugal, over a period of 10 years. The input variables of the ANN model are chemical oxygen demand (COD), dissolved oxygen (DO), and oxidability and total suspended solids (TSS), while for the DT the inputs are, in addition to those used by ANN, the Water Conductivity and the Temperature. The performance of the models, evaluated in terms of the coincidence matrix, created by matching the predicted and actual values, are very similar for both models; the percentage of adjustments relative to the number of presented cases is 98.8% for the training set and 97.4% for the testing one.por
dc.identifier.authoremailhorbite@gmail.com
dc.identifier.authoremailhvicente@uevora.pt
dc.identifier.authoremailjmac@di.uminho.pt
dc.identifier.authoremailabelha@di.uminho.pt
dc.identifier.authoremailjneves@di.uminho.pt
dc.identifier.citationCouto, C., Vicente, H., Machado, J., Abelha, A. & Neves, J., Water Quality Modeling using Artificial Intelligence-Based Tools, International Journal of Design & Nature and Ecodynamics, 7: 299-308, 2012.por
dc.identifier.issn1755-7437
dc.identifier.numrev3
dc.identifier.pagina299-308
dc.identifier.revistaInternational Journal of Design & Nature and Ecodynamics
dc.identifier.scientificarea592por
dc.identifier.sharewithDepartamento de Químicapor
dc.identifier.urihttp://hdl.handle.net/10174/5241
dc.identifier.volume7
dc.language.isoporpor
dc.peerreviewedyespor
dc.publisherWIT Presspor
dc.rightsopenAccesspor
dc.subjectArtificial Neural Networkspor
dc.subjectData Miningpor
dc.subjectDecision Treespor
dc.subjectWater Qualitypor
dc.titleWater Quality Modeling using Artificial Intelligence-Based Toolspor
dc.typearticlepor
degois.publication.firstPage299por
degois.publication.lastPage308por
degois.publication.locationSouthampton, United Kingdompor
degois.publication.titleInternational Journal of Design & Nature and Ecodynamicspor
degois.publication.volume7por

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