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首页> 外文期刊>International Journal of Agronomy >Assessing Rainfall Erosivity with Artificial Neural Networks for the Ribeira Valley, Brazil
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Assessing Rainfall Erosivity with Artificial Neural Networks for the Ribeira Valley, Brazil

机译:利用人工神经网络评估巴西里贝拉河谷的降雨侵蚀力

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摘要

Soil loss is one of the main causes of pauperization and alteration of agricultural soil properties. Various empirical models (e.g., USLE) are used to predict soil losses from climate variables which in general have to be derived from spatial interpolation of point measurements. Alternatively, Artificial Neural Networks may be used as a powerful option to obtain site-specific climate data from independent factors. This study aimed to develop an artificial neural network to estimate rainfall erosivityin the Ribeira Valley and Coastal region of the State of Sao Paulo. In the development of the Artificial Neural Networks the input variables were latitude, longitude, and annual rainfall and a mathematical equation of the activation function for use inthe study area as the output variable. It was found among other things that the Artificial Neural Networks can be used in the interpolation of rainfall erosivity values for the Ribeira Valley and Coastal region of the State of Sao Paulo to a satisfactorydegree of precision in the estimation of erosion. The equation performance has been demonstrated by comparison with the mathematical equation of the activation function adjusted to the specific conditions of the study area.
机译:土壤流失是导致农业土壤化和土壤化的主要原因之一。各种经验模型(例如USLE)用于根据气候变量预测土壤损失,而气候变量通常必须从点测量值的空间插值中得出。另外,人工神经网络可以用作从独立因素获取特定地点气候数据的有力选择。这项研究旨在开发一个人工神经网络来估计圣保罗州里贝拉河谷和沿海地区的降雨侵蚀力。在人工神经网络的开发中,输入变量是纬度,经度和年降水量,以及用于研究区域的激活函数的数学方程作为输出变量。人们发现,除其他外,人工神经网络可用于对圣保罗州里贝拉河谷和沿海地区的降雨侵蚀力值进行插值,以达到令人满意的精确度估算侵蚀。通过与根据研究区域的特定条件调整的激活函数的数学方程进行比较,证明了该方程的性能。

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