Experimental and AI-based numerical modeling of contaminant transport in porous media

J Contam Hydrol. 2017 Oct:205:78-95. doi: 10.1016/j.jconhyd.2017.09.006. Epub 2017 Sep 21.

Abstract

This study developed a new hybrid artificial intelligence (AI)-meshless approach for modeling contaminant transport in porous media. The key innovation of the proposed approach is that both black box and physically-based models are combined for modeling contaminant transport. The effectiveness of the approach was evaluated using experimental and real world data. Artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) were calibrated to predict temporal contaminant concentrations (CCs), and the effect of noisy and de-noised data on the model performance was evaluated. Then, considering the predicted CCs at test points (TPs, in experimental study) and piezometers (in Myandoab plain) as interior conditions, the multiquadric radial basis function (MQ-RBF), as a meshless approach which solves partial differential equation (PDE) of contaminant transport in porous media, was employed to estimate the CC values at any point within the study area where there was no TP or piezometer. Optimal values of the dispersion coefficient in the advection-dispersion PDE and shape coefficient of MQ-RBF were determined using the imperialist competitive algorithm. In temporal contaminant transport modeling, de-noised data enhanced the performance of ANN and ANFIS methods in terms of the determination coefficient, up to 6 and 5%, respectively, in the experimental study and up to 39 and 18%, respectively, in the field study. Results showed that the efficiency of ANFIS-meshless model was more than ANN-meshless model up to 2 and 13% in the experimental and field studies, respectively.

Keywords: Artificial intelligence; Contaminant transport; Meshless approach; Porous media; Wavelet de-noising.

MeSH terms

  • Algorithms
  • Artificial Intelligence
  • Fuzzy Logic
  • Groundwater / chemistry*
  • Hydrology / methods*
  • Iran
  • Models, Theoretical*
  • Neural Networks, Computer
  • Porosity
  • Spatio-Temporal Analysis
  • Water Pollutants / analysis*

Substances

  • Water Pollutants