Application of integrated back‐propagation network and self organizing map for flood forecasting |
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Authors: | Chao‐Chung Yang Chang‐Shian Chen |
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Affiliation: | 1. Construction and Disaster Prevention Research Center, Feng Chia University, Taichung, Taiwan;2. Department of Water Resources Engineering, Feng Chia University, Taichung, Taiwan |
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Abstract: | ![]() Much of the nonlinearity and uncertainty regarding the flood process is because hydrologic data required for estimation are often tremendously difficult to obtain. This study employed a back‐propagation network (BPN) as the main structure in flood forecasting to learn and to demonstrate the sophisticated nonlinear mapping relationship. However, a deterministic BPN model implies high uncertainty and poor consistency for verification work even when the learning performance is satisfactory for flood forecasting. Therefore, a novel procedure was proposed in this investigation which integrates linear transfer function (LTF) and self‐organizing map (SOM) to efficiently determine the intervals of weights and biases of a flood forecasting neural network to avoid the above problems. A SOM network with classification ability was applied to the solutions and parameters of the BPN model in the learning stage, to classify the network parameter rules and to obtain the winning parameters. The outcomes from the previous stage were then used as the ranges of the parameters in the recall stage. Finally, a case study was carried out in Wu‐Shi basin to demonstrate the effectiveness of the proposal. Copyright © 2009 John Wiley & Sons, Ltd. |
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Keywords: | neural network flood forecasting self‐organizing map back‐propagation network |
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