Hybrid neural modeling for groundwater level prediction

被引:0
作者
Nikunja B. Dash
Sudhindra N. Panda
Renji Remesan
Narayan Sahoo
机构
[1] Indian Institute of Technology,Agricultural and Food Engineering Department
[2] University of Bristol,Water and Environmental Management Research Centre, Department of Civil Engineering
[3] Water Technology Center for Eastern Region,undefined
来源
Neural Computing and Applications | 2010年 / 19卷
关键词
Training algorithms; Prediction; Genetic algorithm; ANN; Winter; Groundwater; India;
D O I
暂无
中图分类号
学科分类号
摘要
The accurate prediction of groundwater level is important for the efficient use and management of groundwater resources, particularly in sub-humid regions where water surplus in monsoon season and water scarcity in non-monsoon season is a common phenomenon. In this paper, an attempt has been made to develop a hybrid neural model (ANN-GA) employing an artificial neural network (ANN) model in conjunction with famous optimization strategy called genetic algorithms (GA) for accurate prediction of groundwater levels in the lower Mahanadi river basin of Orissa State, India. Three types of functionally different algorithm-based ANN models (viz. back-propagation (GDX), Levenberg–Marquardt (LM) and Bayesian regularization (BR)) were used to compare the strength of proposed hybrid model in the efficient prediction of groundwater fluctuations. The ANN-GA hybrid modeling was carried out with lead-time of 1 week and study mainly aimed at November and January months of a year. Overall, simulation results suggest that the Bayesian regularization model is the most efficient of the ANN models tested for the study period. However, a strong correlation between the observed and predicted groundwater levels was observed for all the models. The results reveal that the hybrid GA-based ANN algorithm is able to produce better accuracy and performance in medium and high groundwater level predictions compared to conventional ANN techniques including Bayesian regularization model. Furthermore, the study shows that hybrid neural models can offer significant implications for improving groundwater management and water supply planning in semi-arid areas where aquifer information is not available.
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页码:1251 / 1263
页数:12
相关论文
共 63 条
  • [1] Bhattacharjya RK(2000)Artificial neural network in hydrology I: preliminary concepts J Hydrol Energy ASCE 5 115-123
  • [2] Datta B(2000)Artificial neural network in hydrology II: hydrologic application J Hydrol Energy ASCE 5 124-137
  • [3] Bhattacharjya RK(2005)Optimal management of coastal aquifer using linked simulation optimization approach Water Resour Manag 19 295-320
  • [4] Datta B(2009)ANN-GA-based model for multiple objective management of coastal aquifers J Water Resour Plann Manage 135 314-322
  • [5] Coulibaly P(2000)Daily reservoir inflow forecasting using artificial neural networks with stopped training approach J Hydrol 230 244-257
  • [6] Anctil F(2001)Artificial neural network modeling of water table depth fluctuations Water Resour Res 37 885-896
  • [7] Bobee B(2001)Multivariate reservoir inflow forecasting using temporal neural networks J Hydrol Energy 9–10 367-376
  • [8] Coulibaly P(2001)Improving extreme hydrologic events forecasting using a new criterion for artificial neural network selection Hydrol Process 15 1533-1536
  • [9] Anctil F(2005)Groundwater level forecasting using artificial neural networks J Hydrol 309 229-240
  • [10] Aravena R(1992)Rainfall forecasting in space and time using a neural network J Hydrol 137 1-31