论文

Evaluation of Groundwater Resources Based on RAGA-BP Neural Networks in the Sanjiang Plain

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  • 1. School of Geographic and Oceanographic Science, Nanjing University, Nanjing, Jiangsu 210093;
    2. Northeast Agricultural University, Harbin, Heilongjiang 150030

Received date: 2008-03-17

  Revised date: 2008-10-12

  Online published: 2009-03-20

Abstract

Replacing Least Square Method by Real coding based Accelerating Genetic Algorithm, the parameters of time response function in the GM(1,1) Model are optimized. Combined with BP Artificial Neural Networks Model, the Equal-dimension Gray Filling BP Neural Networks Model Based on RAGA is established. By this model, predicted the groundwater depth of Chuangye Farm in the Sanjiang Plain. The structural of BP Neural Networks is 3:12:3. The relative error is only 2.33%. Comparing with the traditional GM(1,1) Model or BP Neural Networks Model, the precision is highly increased. The result shows that the groundwater deep will descend 0.3m in average annually in the area.

Cite this article

Su An-yu, Li Heng, Pu Li-jie, Peng bu-zhuo, Fu Qiang . Evaluation of Groundwater Resources Based on RAGA-BP Neural Networks in the Sanjiang Plain[J]. SCIENTIA GEOGRAPHICA SINICA, 2009 , 29(2) : 283 -287 . DOI: 10.13249/j.cnki.sgs.2009.02.283

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