Data-centric approach for predicting critical metals distribution: Heavy rare earth elements in cretaceous Mediterranean-type karst bauxite deposits, southern Italy

被引:8
作者
Buccione, Roberto [1 ]
Ameur-Zaimeche, Ouafi [2 ]
Ouladmansour, Abdelhamid [3 ]
Kechiched, Rabah [2 ]
Mongelli, Giovanni [1 ]
机构
[1] Univ Basilicata, Dept Sci, Viale Ateneo Lucano 10, I-85100 Potenza, Italy
[2] Univ Kasdi Merbah Ouargla, Lab Reservoirs Souterrains Petroliers Gaziers & Aq, Ouargla 30000, Algeria
[3] Univ Kasdi Merbah Ouargla, Fac Hydrocabures Energies Renouvelables & Sci Terr, Ouargla 30000, Algeria
来源
GEOCHEMISTRY | 2024年 / 84卷 / 02期
关键词
Karst bauxite; Southern Italy; Machine learning; HREE; iron oxyhydroxides; GEOCHEMISTRY; APENNINES; GENESIS; FRACTIONATION; DEFORMATION; CONSTRAINTS; CONCRETIONS; ANOMALIES; PROVINCE; TETHYS;
D O I
10.1016/j.chemer.2023.126026
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
In the last few years, many efforts have been devoted to the factors controlling the distribution of CMs in karst bauxites, residual deposits hosted in carbonate rocks. Most of these efforts regard Mediterranean-type karst bauxite deposits of Cretaceous age occurring in southern Italy. Further, there is an increasing interest in assessing the usefulness of machine learning applications devoted to geochemically based datasets. With this in mind, we explored a data-centric machine learning arrangement aiming to find the proper input, limited to Al 2 O 3 , Fe 2 O 3 , TiO 2 , and SiO 2 , the most abundant major oxides occurring in these ores, for predicting the HREE distribution in southern Italy karst bauxite deposits. Among the machine learning techniques used, Artificial Neural Network (ANN), Support Vector Machine (SVR), Random Forest (RF) and Extreme Gradient Boosting (XGBoost) are those that effectively predict HREE concentrations. A predictive model based on just Al 2 O 3 , Fe 2 O 3 , and SiO 2 , is one conducing at the worst performance impact suggesting that TiO 2 is a relevant input variable in order to predict HREE concentrations in considered karst bauxite deposits. The XGBoost model was found to deliver the highest accuracy in predicting HREE for the validation data records (R 2 - 0.830, RMSE-7.299, MAE - 5.091). Moreover, Fe 2 O 3 is the highest correlated input variable with the output variable and is a significant predictor in our model suggesting iron oxyhydroxides play a relevant role in distributing HREE, likely through a scavenging mechanism at the expense of soil solutions. A further step of our research will involve comprehensive cross -validation studies across multiple areas where Mediterranean-type karst bauxite deposits occur, thus providing a thorough assessment of the model's performance. By addressing these tasks and exploring avenues for improvement, the data-centric approach can advance its potential as a cheap and fast technique to perform a preliminary economic evaluation of potentially HREE abundance, as well as other CMs, in karst bauxite ores benefiting applications reliant on these critical resources.
引用
收藏
页数:12
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