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논문검색

Prediction of Water Table Elevation Fluctuation through Fuzzy Logic & Artificial Neural Networks

초록

영어

Soft Computing tools are becoming very popular in solving hydrological problems. These tools have immense strength to deal with such complex problems. Water Table elevation estimation is an important aspect to understand the mechanism of ground water resources. The present study aims at the application of Artificial Neural Networks (ANN) & Fuzzy logic for simulation of water table elevation. This paper also investigates the best model to forecast water table elevation. Ten ANN models are developed in this study. These developed models are trained, tested and validated on the available data of Budaun District. Comparing observed data and the estimated data through developed ANN models and Fuzzy models, it has been observed that the developed Fuzzy models predict better results for four models and for model-5 ANN bore better results.

목차

Abstract
 1. Introduction
 2. Groundwater Resource
 3. Artificial Neural Network
 4. Fuzzy Methodology
 5. Study Area
 6. Methodology
 7. Development of Models
  7.1 Development of Basic Models
  7.2 ANN Water table Elevation Fluctuation Models
  7.3 Development of Fuzzy Models
 8. Results and Discussion
  8.1 Comparative Analysis of ANN Models and Fuzzy Models for Water Table Elevation Fluctuation.
 9. Summary and Conclusions
 Acknowledgments
 References

저자정보

  • Dinesh Bisht School of Engg. & Technology, ITM University, Gurgaon, INDIA
  • Shilpa Jain School of Engg. & Technology, ITM University, Gurgaon, INDIA
  • M. Mohan Raju ICAD (Projects Wing) Department, Govt. of Andhra Pradesh, India

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