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基于提升回归树算法的流域非点源污染影响因素研究。

[Influencing factors of non-point source pollution of watershed based on boosted regression tree algorithm.].

作者信息

Yin Cai, Liu Miao, Sun Feng Yun, Li Chun Lin, Xiang Wei Ning

机构信息

School of Geography Sciences, East China Normal University, Shanghai 200241, China.

Institute of Applied Ecology, Chinese Academy of Sciences, Shenyang 110164, China.

出版信息

Ying Yong Sheng Tai Xue Bao. 2016 Mar;27(3):911-919. doi: 10.13287/j.1001-9332.201603.020.

Abstract

Non-point source (NPS) pollution has become a key water pollution problem under the condition of point source pollution was controlled. The complexity and uncertainty research of NPS pollution influential factors has always been important and difficult. This paper simulated NPS pollution of the Fanhe River watershed in 2003-2012 by the soil and water assessment tool (SWAT) and analyzed its spatial distribution. Meanwhile, the boosted regression tree (BRT) method was proposed to quantitatively analyze the corresponding influential factors including land use, soil, elevation and slope. The results showed that NPS pollution in the Fanhe River watershed had high spatial heterogeneity. The spatial distribution of total nitrogen (TN) had greater difference than that of total phosphorus (TP). The three pollutants, TN, TP and sediment, were all positively related to slope gradients (P<0.01). The slope gradients played the strongest role in determining the sediment and TP output with the contribution rate of 46.5% and 38.2%, respectively. Land use had important influence on sediment and TP loads, with the contribution rate of 27.2% and 35.3%, respectively. TN was produced abundantly in low-elevation and steep-slope locations and with cultivated land use. Cinnamon soil was most vulnerable to the TN load while meadow soil took the second place in terms of soil erosion and TP load. The paper overcame the complexity of influential factors for NPS pollution by BRT, and deepened the understanding of NPS pollution mechanism.

摘要

在点源污染得到控制的情况下,非点源(NPS)污染已成为关键的水污染问题。NPS污染影响因素的复杂性和不确定性研究一直是重点和难点。本文利用土壤与水评估工具(SWAT)对2003—2012年范河流域的NPS污染进行模拟,并分析其空间分布。同时,提出采用增强回归树(BRT)方法定量分析土地利用、土壤、海拔和坡度等相应影响因素。结果表明,范河流域的NPS污染具有较高的空间异质性。总氮(TN)的空间分布差异大于总磷(TP)。TN、TP和沉积物这三种污染物均与坡度呈正相关(P<0.01)。坡度在决定沉积物和TP输出方面作用最强,贡献率分别为46.5%和38.2%。土地利用对沉积物和TP负荷有重要影响,贡献率分别为27.2%和35.3%。TN在低海拔、陡坡位置以及耕地利用情况下大量产生。褐土最易受TN负荷影响,而草甸土在土壤侵蚀和TP负荷方面居第二位。本文通过BRT克服了NPS污染影响因素的复杂性,加深了对NPS污染机制的理解。

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