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利用人工神经网络预测侵蚀泥沙的颗粒分布。

Predicting the particle size distribution of eroded sediment using artificial neural networks.

机构信息

Departamento de Ingeniería Hidráulica y Ambiental, Pontificia Universidad Católica de Chile, Av. Vicuña Mackenna 4860, Macul, Santiago, Chile.

Departamento de Ingeniería Hidráulica y Ambiental, Pontificia Universidad Católica de Chile, Av. Vicuña Mackenna 4860, Macul, Santiago, Chile; Centro de Desarrollo Urbano Sustentable CEDEUS, El Comendador 1916, Providencia, Santiago, Chile.

出版信息

Sci Total Environ. 2017 Mar 1;581-582:833-839. doi: 10.1016/j.scitotenv.2017.01.020. Epub 2017 Jan 12.

Abstract

Water erosion causes soil degradation and nonpoint pollution. Pollutants are primarily transported on the surfaces of fine soil and sediment particles. Several soil loss models and empirical equations have been developed for the size distribution estimation of the sediment leaving the field, including the physically-based models and empirical equations. Usually, physically-based models require a large amount of data, sometimes exceeding the amount of available data in the modeled area. Conversely, empirical equations do not always predict the sediment composition associated with individual events and may require data that are not always available. Therefore, the objective of this study was to develop a model to predict the particle size distribution (PSD) of eroded soil. A total of 41 erosion events from 21 soils were used. These data were compiled from previous studies. Correlation and multiple regression analyses were used to identify the main variables controlling sediment PSD. These variables were the particle size distribution in the soil matrix, the antecedent soil moisture condition, soil erodibility, and hillslope geometry. With these variables, an artificial neural network was calibrated using data from 29 events (r=0.98, 0.97, and 0.86; for sand, silt, and clay in the sediment, respectively) and then validated and tested on 12 events (r=0.74, 0.85, and 0.75; for sand, silt, and clay in the sediment, respectively). The artificial neural network was compared with three empirical models. The network presented better performance in predicting sediment PSD and differentiating rain-runoff events in the same soil. In addition to the quality of the particle distribution estimates, this model requires a small number of easily obtained variables, providing a convenient routine for predicting PSD in eroded sediment in other pollutant transport models.

摘要

水蚀会导致土壤退化和非点源污染。污染物主要通过细土和泥沙颗粒的表面进行输送。为了估计农田表层流失土壤颗粒的大小分布,已经开发出了几种土壤流失模型和经验公式,包括基于物理原理的模型和经验公式。通常,基于物理原理的模型需要大量的数据,有时甚至超过了模型区域内可用数据的数量。相反,经验公式并不总是能够预测与个别事件相关的泥沙组成,并且可能需要不一定总是可用的数据。因此,本研究的目的是开发一种预测土壤侵蚀后土壤颗粒大小分布(PSD)的模型。总共使用了 21 种土壤的 41 个侵蚀事件的数据。这些数据是从以前的研究中汇编的。相关和多元回归分析用于确定控制泥沙 PSD 的主要变量。这些变量是土壤基质中的颗粒大小分布、前期土壤水分条件、土壤可蚀性和山坡几何形状。利用这些变量,使用 29 个事件的数据(在泥沙中分别为沙子、粉砂和黏土,r=0.98、0.97 和 0.86)校准人工神经网络,然后在 12 个事件上进行验证和测试(在泥沙中分别为沙子、粉砂和黏土,r=0.74、0.85 和 0.75)。人工神经网络与三个经验模型进行了比较。该网络在预测泥沙 PSD 和区分同一土壤中的雨径流事件方面表现出更好的性能。除了颗粒分布估计的质量外,该模型还需要少量易于获得的变量,为在其他污染物输运模型中预测侵蚀泥沙的 PSD 提供了便捷的常规方法。

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