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Inorganic geochemistry of lake sediments: A review of analytical techniques and guidelines for data interpretation.

Authors :
Bertrand, Sebastien
Tjallingii, Rik
Kylander, Malin E.
Wilhelm, Bruno
Roberts, Stephen J.
Arnaud, Fabien
Brown, Erik
Bindler, Richard
Source :
Earth-Science Reviews. Feb2024, Vol. 249, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Inorganic geochemistry is a powerful tool in paleolimnology. It has become one of the most commonly used techniques to analyze lake sediments, particularly due to the development and increasing availability of XRF core scanners during the last two decades. It allows for the reconstruction of the continuous processes that occur in lakes and their watersheds, and it is ideally suited to identify event deposits. How earth surface processes and limnological conditions are recorded in the inorganic geochemical composition of lake sediments is, however, relatively complex. Here, we review the main techniques used for the inorganic geochemical analysis of lake sediments and we offer guidance on sample preparation and instrument selection. We then summarize the best practices to process and interpret bulk inorganic geochemical data. In particular, we emphasize that log-ratio transformation is critical for the rigorous statistical analysis of geochemical datasets, whether they are obtained by XRF core scanning or more traditional techniques. In addition, we show that accurately interpreting inorganic geochemical data requires a sound understanding of the main components of the sediment (organic matter, biogenic silica, carbonates, lithogenic particles) and mineral assemblages. Finally, we provide a series of examples illustrating the potential and limits of inorganic geochemistry in paleolimnology. Although the examples presented in this paper focus on lake and fjord sediments, the principles presented here also apply to other sedimentary environments. • Inorganic geochemical proxies are not universally applicable. • Simple multivariate statistics allow associating elements with sediment components. • Variations in most elements reflect sediment grain size and provenance. • Log-ratios effectively reduce the limitations inherent to XRF core scanner analysis. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00128252
Volume :
249
Database :
Academic Search Index
Journal :
Earth-Science Reviews
Publication Type :
Academic Journal
Accession number :
174975188
Full Text :
https://doi.org/10.1016/j.earscirev.2023.104639