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Artificial Neural Network estimation of soil erosion and nutrient concentrations in runoff from land application areas

机译:人工神经网络估算土地应用区径流中的土壤侵蚀和养分含量

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摘要

The transport of sediment and nutrients from land application areas is an environmental concern. New methods are needed for estimating soil and nutrient concentrations of runoff from cropland areas on which manure is applied. Artificial Neural Networks (ANNs) trained with a backpropagation (BP) algorithm were used to estimate soil erosion, dissolved P (DP) and NH sub(4)-N concentrations of runoff from a land application site near Lincoln, Nebraska, USA. Simulation results from ANN-derived models showed that the amount of soil eroded is positively correlated with rainfall and runoff. In addition, concentrations of DP and NH sub(4)-N in overland flow were related to measurements of runoff, EC and pH. Coefficient of determination values (R super(2)) relating predicted versus measured estimates of soil erosion, DP, and NH sub(4)-N were 0.62, 0.72 and 0.92, respectively. The ANN models derived from measurements of runoff, electrical conductivity (EC) and pH provided reliable estimates of DP and NH sub(4)-N concentrations in runoff.
机译:来自土地应用区域的沉积物和养分的运输是环境问题。需要新的方法来估算施用了肥料的农田地区径流的土壤和养分浓度。经过反向传播(BP)算法训练的人工神经网络(ANN)用于估算土壤侵蚀,美国内布拉斯加州林肯附近土地施用地点的径流中溶解态P(DP)和NH sub(4)-N浓度。 ANN模型的模拟结果表明,土壤侵蚀量与降雨和径流量成正相关。此外,陆上径流中DP和NH sub(4)-N的浓度与径流,EC和pH值的测量有关。与土壤侵蚀,DP和NH sub(4)-N的预测估计值和测量值相关的确定值(R super(2))的系数分别为0.62、0.72和0.92。从径流,电导率(EC)和pH值的测量得出的ANN模型提供了径流中DP和NH sub(4)-N浓度的可靠估计。

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