2019
DOI: 10.1086/701678
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Recycling of Paleoplacer Gold through Mechanical and Postdepositional Mobilization in the Neoarchean Black Reef Formation, South Africa

Abstract: A B S T R A C TThe source of gold in the ca. 2.66 Ga Black Reef Formation (BRF) has been investigated and constrained through petrographic, mineralogical, geochemical, and high-resolution three-dimensional reflection seismic data combined with drill core and underground geological mapping. The BRF is a strong seismic marker and consists of carbonaceous shale, quartz arenite, and conglomerate. Gold grade in the BRF is primarily controlled by the nature of the host conglomerates. Most of the gold in the BRF cong… Show more

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Cited by 6 publications
(6 citation statements)
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“…Between the Ventersdorp Supergroup and the overlying Chuniespoort Group of the Transvaal Basin is the ~30 m thick Black Reef Formation of massive to cross-bedded quartz arenites, shales and siltstones, carbon rich shales, and minor conglomerates. The Black Reef Formation is not itself dated, although it is commonly described as 2590 Ma based on the relationship of rocks above and below [49] or 2642 ± 2 Ma [50,51], and we use 2640 Ma to 2590 Ma here. The Black Reef contains detrital zircons in age range from 3515 Ma mostly 3150 Ma to 3050 Ma, and to 2904 Ma as an overgrowth [51].…”
Section: Black Reef Formation Of the Transvaal Supergroupmentioning
confidence: 99%
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“…Between the Ventersdorp Supergroup and the overlying Chuniespoort Group of the Transvaal Basin is the ~30 m thick Black Reef Formation of massive to cross-bedded quartz arenites, shales and siltstones, carbon rich shales, and minor conglomerates. The Black Reef Formation is not itself dated, although it is commonly described as 2590 Ma based on the relationship of rocks above and below [49] or 2642 ± 2 Ma [50,51], and we use 2640 Ma to 2590 Ma here. The Black Reef contains detrital zircons in age range from 3515 Ma mostly 3150 Ma to 3050 Ma, and to 2904 Ma as an overgrowth [51].…”
Section: Black Reef Formation Of the Transvaal Supergroupmentioning
confidence: 99%
“…The Black Reef Formation is not itself dated, although it is commonly described as 2590 Ma based on the relationship of rocks above and below [49] or 2642 ± 2 Ma [50,51], and we use 2640 Ma to 2590 Ma here. The Black Reef contains detrital zircons in age range from 3515 Ma mostly 3150 Ma to 3050 Ma, and to 2904 Ma as an overgrowth [51]. We are aware of no explanation for the >200 Ma gap between source and deposition, so it remains uncertain whether everything referred to as mineralised Black Reef is correctly the (basal) unit of the Transvaal Supergoup or not [49].…”
Section: Black Reef Formation Of the Transvaal Supergroupmentioning
confidence: 99%
“…Sensors can also enable in-situ and rapid estimation of resource grades by using trained models that relate in-mine observational and analytical data (e.g., through remote sensing) to resource potential (e.g., grades and uncertainty) (Daniels, 2015;Nwaila et al, 2019;Samson, 2019;Zhang et al, 2021c). Leveraging this type of technology, in principle, it should be possible to perform more accurate and timely grade control and in-situ assessments to drive rapid feedback between the tactical and operational levels.…”
Section: Pre-concentrationmentioning
confidence: 99%
“…For such data, the ideal approach to modelling is data-driven predictive modelling, such as through machine learning, which is capable of identifying and leveraging complex, multi-dimensional patterns to make inferences. This approach has no counterpart in traditional geostatistics and its application to resource modelling could reveal a range of possibilities, such as rapid point-wise target prediction (e.g., Nwaila et al, 2019;Zhang et al, 2021c). The overall aim is to leverage abundant data and modern algorithms to increase resource model reliability.…”
Section: Resource Mapping Prediction Modelling and New Approachesmentioning
confidence: 99%
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