2002
DOI: 10.1179/mnt.2002.111.1.82
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Moving forward from traditional optimization: grade uncertainty and risk effects in open-pit design

Abstract: SynopsisAn economic argument is presented for the incorporation of quantitative modelling of the uncertainty of grade, tonnage and geology into open-pit design and planning. Two new implementations of conditional simulation-the generalized sequential Gaussian simulation and direct block simulation-are outlined. An optimization study of a typical disseminated, lowgrade, epithermal, quartz breccia-type gold deposit is used to highlight the differences between the financial projections that may be obtained from a… Show more

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Cited by 126 publications
(70 citation statements)
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References 8 publications
(8 reference statements)
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“…These methods can be classified into three categories: exact methods (Dagdelen and Johnson, 1986;Caccetta and Hill, 2003;Ramazan, 2007;Boland et al, 2009;Bley et al, 2010), heuristic and metaheuristic methods (Gershon, 1987;Denby and Schofield, 1994;Ferland et al, 2007;Chatterjee et al, 2010), and hybrid methods (Tolwinski and Underwood, 1996;Sevim and Lei, 1998;Moreno et al, 2010). However, the uncertain nature of the problem is ignored in the deterministic version of the MPSP, resulting in misleading assessments (Ravenscroft, 1992;Dowd, 1994;Dimitrakopoulos et al, 2002;Godoy and Dimitrakopoulos, 2004). Studies that compare stochastic to deterministic approaches (Godoy and Dimitrakopoulos, 2004;Menabde et al, 2007;Dimitrakopoulos, 2009, 2010;Asad and Dimitrakopoulos, 2013) indicate that stochastic approaches show major improvements in NPV, on the order of 20% to 30%, substantially reduce risk in meeting production forecasts, and find pit limits larger than the ones found by deterministic approaches, contributing to the sustainable utilization of mineral resources.…”
Section: Introductionmentioning
confidence: 99%
“…These methods can be classified into three categories: exact methods (Dagdelen and Johnson, 1986;Caccetta and Hill, 2003;Ramazan, 2007;Boland et al, 2009;Bley et al, 2010), heuristic and metaheuristic methods (Gershon, 1987;Denby and Schofield, 1994;Ferland et al, 2007;Chatterjee et al, 2010), and hybrid methods (Tolwinski and Underwood, 1996;Sevim and Lei, 1998;Moreno et al, 2010). However, the uncertain nature of the problem is ignored in the deterministic version of the MPSP, resulting in misleading assessments (Ravenscroft, 1992;Dowd, 1994;Dimitrakopoulos et al, 2002;Godoy and Dimitrakopoulos, 2004). Studies that compare stochastic to deterministic approaches (Godoy and Dimitrakopoulos, 2004;Menabde et al, 2007;Dimitrakopoulos, 2009, 2010;Asad and Dimitrakopoulos, 2013) indicate that stochastic approaches show major improvements in NPV, on the order of 20% to 30%, substantially reduce risk in meeting production forecasts, and find pit limits larger than the ones found by deterministic approaches, contributing to the sustainable utilization of mineral resources.…”
Section: Introductionmentioning
confidence: 99%
“…In order to evaluate the risk associated with stochastic decision making, a risk analysis is performed on the life-of-mine plans corresponding to the optimal transition depth stated above. Similar analysis has been done extensively on open pit case studies (Dimitrakopoulos et al 2002;Godoy 2003;Jewbali 2006;Leite and Dimitrakopoulos 2014;Ramazan andDimitrakopoulos 2005, 2013;Goodfellow 2014). To do so, a set of 20 simulated scenarios of the grades of the deposit are used and passed through the long-term production schedule determined for the optimal transition depth, which in this case is Transition Depth 2.…”
Section: Stochastic Optimization Results and Risk Analysismentioning
confidence: 99%
“…Examples of mining simulation models are found in Magalhaes et al (1996);Sturgul (1996); Dimitrakopolous et al (2002).…”
Section: Stochastic Decision Making Modelsmentioning
confidence: 99%