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Partial Least Squares Regression for Determining the Control Factors for Runoff and Suspended Sediment Yield during Rainfall Events

机译:偏最小二乘回归法确定降雨事件期间径流和悬浮泥沙产量的控制因素

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摘要

Multivariate statistics are commonly used to identify the factors that control the dynamics of runoff or sediment yields during hydrological processes. However, one issue with the use of conventional statistical methods to address relationships between variables and runoff or sediment yield is multicollinearity. The main objectives of this study were to apply a method for effectively identifying runoff and sediment control factors during hydrological processes and apply that method to a case study. The method combines the clustering approach and partial least squares regression (PLSR) models. The case study was conducted in a mountainous watershed in the Three Gorges Area. A total of 29 flood events in three hydrological years in areas with different land uses were obtained. In total, fourteen related variables were separated from hydrographs using the classical hydrograph separation method. Twenty-nine rainfall events were classified into two rainfall regimes (heavy Rainfall Regime I and moderate Rainfall Regime II) based on rainfall characteristics and K-means clustering. Four separate PLSR models were constructed to identify the main variables that control runoff and sediment yield for the two rainfall regimes. For Rainfall Regime I, the dominant first-order factors affecting the changes in sediment yield in our study were all of the four rainfall-related variables, flood peak discharge, maximum flood suspended sediment concentration, runoff, and the percentages of forest and farmland. For Rainfall Regime II, antecedent condition-related variables have more effects on both runoff and sediment yield than in Rainfall Regime I. The results suggest that the different control factors of the two rainfall regimes are determined by the rainfall characteristics and thus different runoff mechanisms.
机译:多元统计通常用于确定控制水文过程中径流或沉积物产量动态的因素。然而,使用常规统计方法解决变量与径流或沉积物产量之间关系的一个问题是多重共线性。这项研究的主要目的是应用一种方法来有效识别水文过程中的径流和泥沙控制因素,并将该方法应用于案例研究。该方法结合了聚类方法和偏最小二乘回归(PLSR)模型。案例研究是在三峡地区的山区流域进行的。在三个水文年中,在土地用途不同的地区共发生了29次洪水事件。总体上,使用经典水位图分离方法从水位图中分离了14个相关变量。根据降雨特征和K均值聚类,将29个降雨事件分为两个降雨类型(重度降雨I型和中度降雨II型)。构建了四个单独的PLSR模型,以识别控制两种降雨方式下径流量和沉积物产量的主要变量。对于降雨体制I,在我们的研究中,影响沉积物产量变化的主要一阶因素是所有四个与降雨相关的变量,即洪峰流量,最大悬浮泥沙浓度,径流量以及林地和农田的百分比。对于降雨类型II,与降雨类型I相比,与降雨相关的前期条件相关变量对径流量和泥沙产量的影响更大。结果表明,两种降雨类型的不同控制因素取决于降雨特征,因此具有不同的径流机理。

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