CLASSIFICATION OF DEEP-SEA, FINE-GRAINED SEDIMENTS

被引:0
|
作者
Dean, Walter E. [1 ]
Leinen, Margaret [2 ]
Stow, Dorrik A.V. [3 ]
机构
[1] U.S. Geological Survey, P.O. Box 25046, DFC, MS 940, Denver,CO,80225, United States
[2] GraduateSchoolofOceanography UniversityofRhode Island, Narragansett,RI,02882, United States
[3] Grant Institute ofGeology UniversityofEdinburgh, Edinburgh,EH9 3JW, United Kingdom
关键词
D O I
10.1306/212F868E-2B24-11D7-8648000102C1865D
中图分类号
TU4 [土力学、地基基础工程];
学科分类号
081401 ;
摘要
Most deep-sea sediments contain one or more biogenic components and one dominant nonbiogenic component, usually clay or silty clay. We present a desefiptive classification scheme in which deep-sea, fine-grained sediments are placed within a three-component system ofcalcareous-biogenic, siliceous-biogenic, and nonbiogenic components. In a three-step procedure the user assesses whether the dominant component is biogenic or nonbiogenic, whether the dominant biogenic component is siliceous or calcareous, and what the relative abundances of the biogenic components are within limits of 10, 25, and 50%. The terminology proposed is that commonly used by many sedimentologists, with some refinements and greater precision in the use of terms. © 1985,The Societyof EconomicPaleontologistsand Mineralogists.
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