Literature DB >> 17760585

A hybrid artificial neural network-numerical model for ground water problems.

Ferenc Szidarovszky1, Emery A Coppola, Jingjie Long, Anthony D Hall, Mary M Poulton.   

Abstract

Numerical models constitute the most advanced physical-based methods for modeling complex ground water systems. Spatial and/or temporal variability of aquifer parameters, boundary conditions, and initial conditions (for transient simulations) can be assigned across the numerical model domain. While this constitutes a powerful modeling advantage, it also presents the formidable challenge of overcoming parameter uncertainty, which, to date, has not been satisfactorily resolved, inevitably producing model prediction errors. In previous research, artificial neural networks (ANNs), developed with more accessible field data, have achieved excellent predictive accuracy over discrete stress periods at site-specific field locations in complex ground water systems. In an effort to combine the relative advantages of numerical models and ANNs, a new modeling paradigm is presented. The ANN models generate accurate predictions for a limited number of field locations. Appending them to a numerical model produces an overdetermined system of equations, which can be solved using a variety of mathematical techniques, potentially yielding more accurate numerical predictions. Mathematical theory and a simple two-dimensional example are presented to overview relevant mathematical and modeling issues. Two of the three methods for solving the overdetermined system achieved an overall improvement in numerical model accuracy for various levels of synthetic ANN errors using relatively few constrained head values (i.e., cells), which, while demonstrating promise, requires further research. This hybrid approach is not limited to ANN technology; it can be used with other approaches for improving numerical model predictions, such as regression or support vector machines (SVMs).

Mesh:

Year:  2007        PMID: 17760585     DOI: 10.1111/j.1745-6584.2007.00330.x

Source DB:  PubMed          Journal:  Ground Water        ISSN: 0017-467X            Impact factor:   2.671


  3 in total

1.  Developing a fuzzy neural network-based support vector regression (FNN-SVR) for regionalizing nitrate concentration in groundwater.

Authors:  Seiyed Mossa Hosseini; Najmeh Mahjouri
Journal:  Environ Monit Assess       Date:  2014-02-05       Impact factor: 2.513

2.  Potential impacts of climate change on groundwater level through hybrid soft-computing methods: a case study-Shabestar Plain, Iran.

Authors:  Esmaeil Jeihouni; Mirali Mohammadi; Saeid Eslamian; Mohammad Javad Zareian
Journal:  Environ Monit Assess       Date:  2019-09-06       Impact factor: 2.513

3.  Prediction of missing flow records using multilayer perceptron and coactive neurofuzzy inference system.

Authors:  Samkele S Tfwala; Yu-Min Wang; Yu-Chieh Lin
Journal:  ScientificWorldJournal       Date:  2013-12-17
  3 in total

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