DOI:​10.1080/09715010.2017.1381861
Corpus ID: 65104705
Prediction of unsaturated hydraulic conductivity using adaptive neuro- fuzzy inference system (ANFIS)
Parveen Sihag, N. K. Tiwari, S. Ranjan
Published 2019
Mathematics

ISH Journal of Hydraulic Engineering
Abstract This paper aims to predict the unsaturated hydraulic conductivity of soil using Adaptive Neuro- fuzzy inference system (ANFIS), Multi-Linear Regression (MLR), and artificial neural network… Expand
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48 Citations
Background Citations
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Methods Citations
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Results Citations
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