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Relationship between Runoff and Losses of Soil Erosion, Nitrogen, and Phosphorus

机译:径流与土壤侵蚀,氮,磷流失的关系

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The runoff loss of nitrogen and phosphorus in farmland results in severe surface water pollution. Runoff losses of nitrogen and phosphorus could be effectively assessed with the empirical model. Using the power function model with the LTS and S estimation, we fitted and evaluated the regression relationship between runoff and runoff losses of soil erosion and various nitrogen and phosphorus under different crop covers at Xinmaqiao Experimental Station located in Huaibei Plain of China. The results showed a good power function of regression between runoff and losses of soil erosion and nitrogen, respectively, and the coefficient of determination r~2 varied from 0.52-0.94 and followed the order of soil erosion > total nitrogen loss > dissolved nitrogen loss > particulate nitrogen loss. The fitting exponent parameter b of the soil erosion in fallow, cotton, and corn fields and nitrogen loss in fallow field were all greater than 1.0, and the soil erosion and nitrogen loss from these fields could be controlled by reducing the runoff. High phosphorus concentrations in corn, cotton, and soybean fields occur during small runoff events, and concentration of particulate phosphorus does not change much with increased runoff, whereas the concentrations of total phosphorus and dissolved phosphorus decrease. The concentrations of total phosphorus, dissolved phosphorus, and particulate phosphorus in fallow fields increase with runoff.
机译:农田中氮和磷的径流丧失导致严重的地表水污染。可以通过经验模型有效地评估氮气和磷的径流损失。利用LTS和S估计使用功率函数模型,我们拟合并评估了在中国淮北平原的新娘桥实验站下不同作物覆盖的土壤侵蚀和各种氮气和磷的回归关系。结果表明,土壤侵蚀和氮气损失之间的回归良好的功率函数,并且测定系数R〜2从0.52-0.94变化,然后进行了土壤侵蚀的顺序>总氮损失>溶解氮损失>颗粒状氮气损失。休耕,棉花和玉米田地腐蚀的拟合指数B和休耕场中的氮气损失大于1.0,并且可以通过减少径流来控制来自这些领域的土壤侵蚀和氮气损失。在小径流事件期间发生玉米,棉花和大豆田中的高磷浓度,并且颗粒磷的浓度不会随着径流增加而变化,而总磷的浓度和溶解磷的浓度降低。缺水田中总磷,溶解磷和颗粒磷的浓度随径流而增加。

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