Learning and adaptation in wastewater treatment plants through case-based reasoning

Miquel Sànchez-Marrè, Ulises Cortés, Ignasi R.-Roda, Manel Poch, Javier Lafuente

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    Resumen

    This paper discusses a case-based reasoning approach to modeling the specific or experiential knowledge coming directly from wastewater treatment plant (WWTP) operation within the overall supervisory task of a plant. A concrete implementation is detailed: case structure, case library organization, retrieving algorithm, matching function, and learning techniques. Starting from some initial cases (learning by observation), the system evolves, adapting its experiential knowledge (learning by own experience) from the actual operation of the WWTP under control. The result is a more accurate supervisory system. Recording previous experiences - cases - in the system helps to solve new similar or related situations in the plant with less effort than other methods that start from scratch to build up new solutions. Moreover, the continuous execution of the system enhances its adaptation to new situations that could appear. © 1997 Microcomputers in Civil Engineering. Published by Blackwell Publishers.
    Idioma originalInglés
    Páginas (desde-hasta)251-266
    PublicaciónMicrocomputers in Civil Engineering
    Volumen12
    N.º4
    DOI
    EstadoPublicada - 1 jul 1997

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