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Evolutionary self-organising modelling of a municipal wastewater treatment plant

Water research, v.37 no.6, 2003년, pp.1199 - 1212  

Hong, Yoon-Seok (Institute of Geological and Nuclear Sciences, Wairakei Research Centre, Private Bag 2000, Taupo, New Zealand) ,  Bhamidimarri, Rao (Massey University, Private Bag 11 222, Palmerston North, New Zealand)

Abstract AI-Helper 아이콘AI-Helper

AbstractBuilding predictive models for highly time varying and complex multivariable aspects of the wastewater treatment plant is important both for understanding the dynamics of this complex system, and in the development of optimal control support and management schemes.This paper presents a new a...

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