Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine

The optimal design of production phases and ultimate pit limit foran open pit mining operation may be generated using conventionalor stochastic approaches. Unlike the conventional approach, thestochastic framework accounts for expected variability anduncertainty in metal content by considering a set...

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Main Authors: Asad, Mohammad Waqar, Dimitrakopoulos, R.
Format: Journal Article
Published: South African Institute of Mining and Metallurgy 2012
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/40887
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author Asad, Mohammad Waqar
Dimitrakopoulos, R.
author_facet Asad, Mohammad Waqar
Dimitrakopoulos, R.
author_sort Asad, Mohammad Waqar
building Curtin Institutional Repository
collection Online Access
description The optimal design of production phases and ultimate pit limit foran open pit mining operation may be generated using conventionalor stochastic approaches. Unlike the conventional approach, thestochastic framework accounts for expected variability anduncertainty in metal content by considering a set of equallyprobable realizations (models) of the orebody. This paper evaluatesthe performance of a new stochastic network flow approach for thedevelopment of optimal phase design and ultimate pit limit using agold deposit as the case study. The stochastic and conventionalframeworks as considered here utilize the maximum flow andLerchs-Grossman (LG) algorithms, respectively. The LG algorithm isrestricted to considering an estimated (average-type) orebodymodel, while the stochastic maximum flow algorithm is developed tosimultaneously use a set of simulated orebody realizations as aninput. The case study demonstrates that, when compared to theconventional LG algorithm as used in the industry, the stochasticapproach generates a 30 per cent increase in discounted cash flow, a21 per cent larger ultimate pit limit, and about 7 per cent moremetal, while it maintains a consistency in phase size.
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spelling curtin-20.500.11937-408872017-02-28T01:47:08Z Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine Asad, Mohammad Waqar Dimitrakopoulos, R. Lerchs- - Grossman algorithm maximum flow algorithm open pit mine optimization The optimal design of production phases and ultimate pit limit foran open pit mining operation may be generated using conventionalor stochastic approaches. Unlike the conventional approach, thestochastic framework accounts for expected variability anduncertainty in metal content by considering a set of equallyprobable realizations (models) of the orebody. This paper evaluatesthe performance of a new stochastic network flow approach for thedevelopment of optimal phase design and ultimate pit limit using agold deposit as the case study. The stochastic and conventionalframeworks as considered here utilize the maximum flow andLerchs-Grossman (LG) algorithms, respectively. The LG algorithm isrestricted to considering an estimated (average-type) orebodymodel, while the stochastic maximum flow algorithm is developed tosimultaneously use a set of simulated orebody realizations as aninput. The case study demonstrates that, when compared to theconventional LG algorithm as used in the industry, the stochasticapproach generates a 30 per cent increase in discounted cash flow, a21 per cent larger ultimate pit limit, and about 7 per cent moremetal, while it maintains a consistency in phase size. 2012 Journal Article http://hdl.handle.net/20.500.11937/40887 South African Institute of Mining and Metallurgy restricted
spellingShingle Lerchs- - Grossman algorithm
maximum flow algorithm
open pit mine optimization
Asad, Mohammad Waqar
Dimitrakopoulos, R.
Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title_full Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title_fullStr Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title_full_unstemmed Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title_short Performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
title_sort performance evaluation of a new stochastic network flow approach to optimal open pit mine design - application at a gold mine
topic Lerchs- - Grossman algorithm
maximum flow algorithm
open pit mine optimization
url http://hdl.handle.net/20.500.11937/40887