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含结构体工程堆积体土壤侵蚀研究

Journal of Soil and Water Conservation(2022)

西北农林科技大学

Cited 0|Views5
Abstract
为探究野外实际调查中常见的含结构体工程堆积体土壤侵蚀过程,设计含结构体工程堆积体和对照组2种试验材料(对照组为不含结构体工程堆积体,后文中对2种试验材料简称为结构体和堆积体),通过室内模拟降雨试验,研究了结构体和堆积体坡面径流侵蚀特征与雨强和场次的关系.结果表明:(1)初产历时随雨强和场次的增加而减小,结构体对初产历时有延缓作用,这与结构体的土壤特性和下垫面特征有关;(2)平均径流率和平均流速均随雨强和场次的增加而增大,堆积体平均流速和平均径流率分别是结构体的1.11~1.22,1.11~1.37倍,而结构体流速和径流率快速增加和趋于稳定的时间均较堆积体提前,且用时更短;(3)雨强对侵蚀速率、流速和径流率的贡献率较大,场次与侵蚀速率负相关,各条件下结构体的侵蚀速率均大于堆积体,且侵蚀速率和总侵蚀量分别是堆积体的1.03~2.15,1.36~2.63倍;(4)径流功率能够更好地描述结构体和堆积体侵蚀动力过程,结构体发生侵蚀的临界径流剪切力和径流功率均小于堆积体.
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