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A Comprehensive Evaluation of Machine Learning on Coral Trace Element Paleothermometers for Sea Surface Temperature Reconstruction

Authors :
Wei, Yuxuan
Deng, Wenfeng
Chen, Xuefei
Wei, Gangjian
Source :
Paleoceanography and Paleoclimatology; October 2024, Vol. 39 Issue: 10
Publication Year :
2024

Abstract

This research introduces a novel approach to reconstruct sea surface temperature (SST) by developing a universal coral thermometer using machine learning (ML) algorithms on monthly resolved Poritescoral proxies and SST data. A total of 1,202 data sets from 19 corals, covering SSTs ranging from 21.5 to 31.5°C, with proxies including Sr/Ca, Mg/Ca, Li/Mg, U/Ca, and B/Ca ratios were analyzed. The data were divided into four sub‐datasets by regional and taxon constraints. An exhaustive analysis was conducted, training 1,612 models using various proxy combinations and ML strategies to assess the impact of the non‐SST effect on the universality of ML models. The results indicated that the non‐SST effect is more significantly attributed to regional variations than to taxon differences, underscoring the importance of regional factors in Poritescoral proxy‐based SST reconstructions. Sr/Ca and Li/Mg proxies were identified as the most indicative of SST, showing clearer relationships with temperature than other proxies. Non‐linear approaches achieved a Root Mean Square Error (RMSE) of less than 0.90°C, which further decreased to 0.72°C upon incorporating specific regional and taxon constraints. In an independent test set focusing exclusively on Li/Mg and Sr/Ca proxies, the tree‐based algorithms particularly excelled, achieving an average RMSE improvement of at least 0.52°C over the Universal Multi‐Trace Element Calibration Scheme and the Li/Mg empirical equation. This research underscores the potential of applying ML to coral‐based SST reconstructions, especially highlighting the effectiveness of tree‐based algorithms and the suitability of Sr/Ca and Li/Mg proxies for accurate temperature estimations. A universal coral thermometer was developed using machine learning (ML) on Poritescoral proxies, enhancing paleo sea surface temperature (SST) reconstruction accuracyLi/Mg and Sr/Ca proxies were identified as the most effective for SST reconstructions, showcasing clearer relationships with SSTTree‐based ML models outperformed others in predicting SST, advocating their use when Sr/Ca and Li/Mg proxies are available A universal coral thermometer was developed using machine learning (ML) on Poritescoral proxies, enhancing paleo sea surface temperature (SST) reconstruction accuracy Li/Mg and Sr/Ca proxies were identified as the most effective for SST reconstructions, showcasing clearer relationships with SST Tree‐based ML models outperformed others in predicting SST, advocating their use when Sr/Ca and Li/Mg proxies are available

Details

Language :
English
ISSN :
25724517 and 25724525
Volume :
39
Issue :
10
Database :
Supplemental Index
Journal :
Paleoceanography and Paleoclimatology
Publication Type :
Periodical
Accession number :
ejs67820175
Full Text :
https://doi.org/10.1029/2024PA004885