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Modelling groundwater level variations by learning from multiple models using fuzzy logic
Authors:Ata Allah Nadiri  Keyvan Naderi  Maryam Gharekhani
Institution:1. Department of Earth Sciences, Faculty of Natural Sciences, University of Tabriz, Tabriz, Iran;2. Institute of Environment, University of Tabriz, East Azerbaijan, Iran;3. Formerly of Department of Earth Sciences, Faculty of Natural Sciences, University of Tabriz, Tabriz, Iran
Abstract:Modelling time series of groundwater levels is investigated by three fuzzy logic (FL) models, Sugeno (SFL), Mamdani (MFL) and Larsen (LFL), using data from observation wells. One novelty in the study is the re-use of these three models as multiple models through the following strategies: (a) simple averaging, (b) weighted averaging and (c) committee machine techniques; these are implemented using artificial neural networks (ANN). These strategies provide some evidence that (i) multiple models improve on the performance of individual models and those using committee machines perform better than the other two options; and (ii) committee machine models produce defensible modelling results to develop management scenarios. The study investigates water table declines through management scenarios and shows that in this aquifer water use has higher impacts on water table variations than climatic variations. This provides evidence of the need for planned management in the study area.
Keywords:committee fuzzy logic  fuzzy logic  Sugeno model  Mamdani model  Larsen model  groundwater level prediction  two levels of learning
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