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An ANN-based approach to modelling sediment yield: a case study in a semi-arid area of Brazil

机译:基于基于Ann的沉积物产量的方法 - 以巴西半干旱地区为例

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This paper describes an Artificial Neural Network (ANN) model for estimating sediment yield based on runoff and climatological data. The model has been applied to an erosion plot inside the Sao Joao do Cariri experimental basin, which is located in the semi-arid portion of Paraiba State, Brazil. Large quantities of sediment tend to be generated only periodically in semi-arid regions, thus accurate estimations of when sediment yields are likely to be high are needed to improve erosion management in such areas. A total of 61 rainfall events, which occurred between 1999 and 2002, were utilized to calibrate and test the model. Another model, based on multiple linear regression (MLR) was used for comparison. The results produced by the ANN model appear to be superior to those generated by the MLR model. The results also indicate that the ANN model is suitable for identifying and extracting nonlinear trends for significant variables.
机译:本文介绍了一种人工神经网络(ANN)模型,用于估算基于径流和气候数据的沉积物产量。该模型已应用于Sao Joao Do Cariri实验盆内的侵蚀地块,该盆地位于巴西巴拉斯州的半干旱部分。只有在半干旱区域中倾向于周期性地产生大量的沉积物,因此需要高度估计沉积物产量时可能高,以改善在这些区域中的侵蚀管理。共有61项发生的降雨事件发生在1999年至2002年间,用于校准和测试模型。基于多个线性回归(MLR)的另一模型用于比较。 ANN模型产生的结果似乎优于MLR模型产生的结果。结果还表明ANN模型适用于识别和提取显着变量的非线性趋势。

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