This paper presents a review of procedural steps and implementation techniques used in the development of artificial intelligence models, generally referred to as artificial neural networks (ANNs), within the water resources domain. It focusses on identifying different areas wherein ANNs have found application thereby elucidating its advantages and disadvantages as well as various challenges encountered in its use. Results from this review provide useful insights into how the performance of ANNs can be improved and potential areas of application that are yet to be explored in hydrological modeling. Recommendations for Resource Managers • Development of integrated and hybrid artificial intelligent tools is critical to achieving improved forecasts in hydrological modeling studies. • Further research into comprehending the internal mechanisms of neural networks is required to obtain a practical meaning of each network component deployed to solve real-world problems. • More robust optimization techniques and tools like differential evolution, particle swarm optimization and deep neural nets, are yet to be fully explored in the water resources analysis, and should be given more attention to enhance neural networks aptitude for modeling complex and nonlinear hydrological processes.
CITATION STYLE
Oyebode, O., & Stretch, D. (2019, February 1). Neural network modeling of hydrological systems: A review of implementation techniques. Natural Resource Modeling. Rocky Mountain Mathematics Consortium. https://doi.org/10.1111/nrm.12189
Mendeley helps you to discover research relevant for your work.