Title
Application of GA Optimized Wavelet Neural Networks for Carrying Capacity of Water Resources Prediction
Abstract
The prediction of urban water demand using a small number of representative properties is fundamental in evaluating carrying capacity of water resources. Artificial neural networks (ANNs) have recently become popular tools in the prediction of urban water demand. In this paper, an iterative method which combining the strength of back-propagation (BP) in weight learning and genetic algorithms’ capability of searching the satisfying solution is proposed for optimizing wavelet neural networks (WNNs). Taking the city of Hefei in China as an example, the proposed genetic algorithms optimized WNN that required a few representative properties as possible for input data is applied to predict urban water demand in the future several years. The prediction performance of the GA Optimized WNN is compared with traditional neural networks, and simulation results demonstrate the accuracy and the reliability of the prediction methodology based on the proposed model. Finally, urban water demand in Hefei, 2008-2010, is obtained which provide reference for coordinated development of socio-economic and water resources in Hefei.
Year
DOI
Venue
2009
10.1109/ESIAT.2009.59
ESIAT (1)
Keywords
Field
DocType
representative property,water resource,ga optimized wavelet neural,proposed genetic algorithm,wavelet neural network,prediction performance,water resources prediction,urban water demand,artificial neural network,prediction methodology,traditional neural network,china,prediction,carrying capacity,neural networks,neural nets,satisfiability,artificial neural networks,back propagation,wavelet transforms,genetics,neural network,genetic algorithm,genetic algorithms,gallium,iteration method,iterative methods,sustainable development,water resources,predictive models
Small number,Data mining,Wavelet neural network,Computer science,Iterative method,Carrying capacity,Artificial neural network,Water resources,Genetic algorithm,Wavelet transform
Conference
Citations 
PageRank 
References 
0
0.34
4
Authors
3
Name
Order
Citations
PageRank
Feng Lu100.34
Jianhua Xu2327.21
Zhanyong Wang3507.04