This study presents a supervised committee fuzzy logic (SCFL) model to estimate transmissivity in the aquifer of the Tasuj Plain, Iran. The estimation of transmissivity especially in a heterogeneous aquifer is expensive and time consuming. In this study, fuzzy logic models such as Mamdani fuzzy logic (MFL), Larsen fuzzy logic (LSL) and Sugeno fuzzy logic (SFL) were applied to estimate transmissivity using hydrogeological and geophysical survey data. The results showed that all of these models have a similar fitting to the transmissivity data in the Tasuj Plain. The SCFL model was adopted to combine output of the three single fuzzy models instead of the selecting superior single model. To reap the advantage of considering single models, the SCFL proposes a nonlinear combination of individual FL model outputs through a committee fuzzy logic model. The SCFL method uses an artificial neural network (ANN) model to re-estimate transmissivity based on the output of the three FL models. The result showed improvement to the committee machine with a linear combination of FL models estimations. The results also showed significant fitting improvement to individual FL models.
Klantari, A., Hosseinpour, A., Abghari, H., Klantari, A., Hosseinpour, A., & habibzadeh, A. (2014). Fuzzy Logic Model for Estimation of Aquifers Transmissivity Case study: Tasuj Plain. Water and Soil Science, 24(1), 209-223.
MLA
A Klantari; A Hosseinpour; H Abghari; A Klantari; A Hosseinpour; A habibzadeh. "Fuzzy Logic Model for Estimation of Aquifers Transmissivity Case study: Tasuj Plain". Water and Soil Science, 24, 1, 2014, 209-223.
HARVARD
Klantari, A., Hosseinpour, A., Abghari, H., Klantari, A., Hosseinpour, A., habibzadeh, A. (2014). 'Fuzzy Logic Model for Estimation of Aquifers Transmissivity Case study: Tasuj Plain', Water and Soil Science, 24(1), pp. 209-223.
VANCOUVER
Klantari, A., Hosseinpour, A., Abghari, H., Klantari, A., Hosseinpour, A., habibzadeh, A. Fuzzy Logic Model for Estimation of Aquifers Transmissivity Case study: Tasuj Plain. Water and Soil Science, 2014; 24(1): 209-223.