JOURNAL OF HYDROELECTRIC ENGINEERING ›› 2014, Vol. 33 ›› Issue (6): 25-29.
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Abstract: One of the key steps in artificial neural networks (ANN) forecasting is the determination of significant input variables. A partial mutual information (PMI) method was used to characterize the dependence of a potential model between its input and output variables. We also developed a copula entropy method for effective calculation of mutual information (MI) and PMI, and verified its accuracy and performance using numerical tests. This forecasting technique has been applied to a real-world case study of the Three Gorges reservoir (TGR), and results show that the proposed method is useful and effective for identification of suitable inputs of flood forecasting model.
CHEN Lu, YE Lei, LU Weiwei, et al. Determination of input variables for artificial neural networks for flood forecasting using Copula entropy method[J].JOURNAL OF HYDROELECTRIC ENGINEERING, 2014, 33(6): 25-29.
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