The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project
In order to quantify the uncertainty in the grade estimate for the Sadiola Deep Sulphide Prefeasibility Project a conditional simulation model was generated using Direct Block Simulation methodology. Compared to conventional Sequential Gaussian Simulation, the Direct Block Simulation algorithm pr...
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ndltd-netd.ac.za-oai-union.ndltd.org-wits-oai-wiredspace.wits.ac.za-10539-58902021-04-29T05:09:17Z The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project Robins, Steven Paul conditional simulation Direct Block Simulation risk pit grade uncertainty pit optimisation coefficient of variation probability In order to quantify the uncertainty in the grade estimate for the Sadiola Deep Sulphide Prefeasibility Project a conditional simulation model was generated using Direct Block Simulation methodology. Compared to conventional Sequential Gaussian Simulation, the Direct Block Simulation algorithm produced a reliable model in significantly less time, lending its application to a production environment. Through application of a mining transfer function, risk pits were generated for comparison with the Deep Sulphide Prefeasibility pit. The results of this study revealed that the prefeasibility pit is optimal at the applied gold price and cost parameters, and that the risk of not achieving the project grade profile is low. Should the gold price increase, or the operating costs of the project decrease significantly, the Deep Sulphide reserve tonnage would realise significant upside potential. The potential for using the simulation model coefficient of variation to improve the classification of the resource has been highlighted. This exercise could allow significant saving of feasibility drilling capital. 2008-12-11T08:34:00Z 2008-12-11T08:34:00Z 2008-12-11T08:34:00Z Thesis http://hdl.handle.net/10539/5890 en application/pdf |
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conditional simulation Direct Block Simulation risk pit grade uncertainty pit optimisation coefficient of variation probability |
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conditional simulation Direct Block Simulation risk pit grade uncertainty pit optimisation coefficient of variation probability Robins, Steven Paul The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
description |
In order to quantify the uncertainty in the grade estimate for the Sadiola Deep
Sulphide Prefeasibility Project a conditional simulation model was generated
using Direct Block Simulation methodology. Compared to conventional
Sequential Gaussian Simulation, the Direct Block Simulation algorithm produced
a reliable model in significantly less time, lending its application to a production
environment.
Through application of a mining transfer function, risk pits were generated for
comparison with the Deep Sulphide Prefeasibility pit. The results of this study
revealed that the prefeasibility pit is optimal at the applied gold price and cost
parameters, and that the risk of not achieving the project grade profile is low.
Should the gold price increase, or the operating costs of the project decrease
significantly, the Deep Sulphide reserve tonnage would realise significant upside
potential.
The potential for using the simulation model coefficient of variation to improve the
classification of the resource has been highlighted. This exercise could allow
significant saving of feasibility drilling capital. |
author |
Robins, Steven Paul |
author_facet |
Robins, Steven Paul |
author_sort |
Robins, Steven Paul |
title |
The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
title_short |
The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
title_full |
The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
title_fullStr |
The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
title_full_unstemmed |
The quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the Sadiola deep sulphide prefeasability project |
title_sort |
quantification of grade uncertainty, and associated risk, and their influence on pit optimisation for the sadiola deep sulphide prefeasability project |
publishDate |
2008 |
url |
http://hdl.handle.net/10539/5890 |
work_keys_str_mv |
AT robinsstevenpaul thequantificationofgradeuncertaintyandassociatedriskandtheirinfluenceonpitoptimisationforthesadioladeepsulphideprefeasabilityproject AT robinsstevenpaul quantificationofgradeuncertaintyandassociatedriskandtheirinfluenceonpitoptimisationforthesadioladeepsulphideprefeasabilityproject |
_version_ |
1719400123587362816 |