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| MINING |
The rapidly fluctuating price of minerals, increasing competition,
and volatile financial markets have placed the mining industry
in a position of ever-increasing risk. How do you:
- Accurately forecast production?
- Predict prices, supply/demand volumes, imports, exports, operating costs?
- Improve the accuracy of cost estimates for sites?
- Evaluate the inherent risk in achieving financial targets for acquisitions?
- Figure commercial terms for service offerings?
- Determine optimum replacement rates for equipment and maintenance?
While Microsoft® Excel® is a popular tool for building models to assess risk, it cannot succeed alone because it has no way to account for the inherent uncertainty in market, operational, and financial forecasts. Without a tool to address uncertainty, mining companies expose themselves to risks that include overestimating costs based on the changes of mineral prices
in the market and fluctuating market demand and production levels.
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Crystal Ball is a Microsoft Excel®-based suite of analytical tools that adds to the power of Excel by including the ability to do Monte Carlo simulation, optimization, and forecasting. With little effort, you can apply these advanced analytical techniques to your new or existing spreadsheets to create more accurate financial and operational predictions and better informed business decisions.
With Crystal Ball, you can:
- Increase the efficiency of your capital allocation. Incorporate the appropriate measure of risk in capital project evaluations so you can determine which projects will be strong contributors to the company and which will be a waste of corporate time and effort.
- Gain a better understanding of risk. Mining exploration deals with many unknowns, with high risk and uncertainty an inherent part of the industry. The management of risk in extractive industries has always been a difficult subject. Stochastic analysis methods allow you to gain a better understanding of risk.
- Account for strategic flexibility in project valuations. Add real options to your discounted cash flow analysis to accurately account for the impact of positive uncertainty in estimating your project's value, particularly when there is high volatility in future phases.
Key
features of interest to your industry include sensitivity
analysis, correlation, and historical data fitting. The sensitivity
analysis helps you to understand which of the uncertain input variables
are most critical and drive the uncertainty of your
model. Correlation lets you link uncertain inputs and account
for their positive or negative dependencies. If historical data
does exist, the data fitting feature will compare the data to
the distribution algorithms and calculate the best possible fit
and parameters for your data.
Oracle's powerful, yet easy-to-use Crystal Ball software
has allowed companies like Newmont Mining, Barrick Gold, and Metallica
Minerals to make better and more lucrative decisions in the face
of these industry-specific risks. You can focus your resources on the right problem and complete
analysis sooner with less effort.
LEARN MORE ABOUT CRYSTAL BALL FOR MINING
This page offers links to a growing number of resources, including recorded Web seminars, articles, white papers, case studies, and example models. Additionally, you can view a list of common uses and examples reported directly from customers using Crystal Ball. You can also download a free trial version of Crystal Ball to see how it can help improve your business forecasts and decisions!
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RECORDED WEB SEMINARS
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Evaluating Mining Projects Using Monte Carlo Simulation
Shows how input parameters such as capital, operating costs, mining rates, recoveries, and metal prices can easily be varied in order to determine which of them will have the greatest impact on the project’s economic success.
Presented by Nathan Stubina of Barrick Gold
Recorded August 7, 2007
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View recording
Download files
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WHITE PAPERS
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Market Risk for a
South African Gold Miner: Implications for EPS, Cash Flow &
Valuations
By Alex James (MSc Imperial College London)
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Download |
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Optimizing the Growth Portfolio of a Diversified Mining Company
Thomas de Lange, Manager Strategy, Kumba Resources
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Download |
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Process Operating
Costs with Applications in Mine Planning and Risk Analysis
By Doug Halbe and T.J. Smolik (Presented at the SME Mineral
Processing 2002 Symposium)
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Download |
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CASE STUDIES
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Forecasting Mine Production
Decisioneering Services helps one of the largest copper companies accurately forecast mine production using Monte Carlo simulation
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Download
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Property Valuation
Crystal Ball Taught for Valuing Properties at Colorado School
of Mines |
Download
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EXAMPLE MODELS

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Drill Bit Replacement
Detail: When drilling wells in certain types of terrain, the performance of a drill bit erodes with time because of wear. The problem is to determine the optimum replacement policy; that is, the drilling cycle between replacements. Includes optimizations setting file and defines time as a decision variable. |
Download
For:
Crystal Ball
Level:
Moderate- advanced |
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Mine Project Valuation Using
Monte Carlo Analysis
From: By Alpay Sergi, Visiting Scholar, and Graham A. Davis,
Associate
Professor (gdavis@mines.edu),
Division of Economics and Business, Colorado School of Mines, Golden,
CO
Detail: A mining corporation is evaluating a small underground
gold mining project containing an estimated one million ounces of
gold. The project is based on the example given in "Optimum
Production Rate Selection" by Bruce Cavender, Mining Engineering,1992.
The problem is to value the project using traditional DCF analysis,
but to take the valuation impacts of these geological and economic
uncertainties into account.
Monte Carlo analysis is useful in this case because 1) the correlations
between the uncertain variables that are multiplicands, and 2) the
non-linearities in the cash flows created by taxes and an uncertain
mine life mean that the expected NPV value from a static analysis
is not equal to the mean NPV value from the Monte Carlo exercise.
In fact, the only way to estimate an expected value for this project
is via Monte Carlo analysis. |
Download
For:
Crystal Ball
Level:
Moderate |
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COMMON USES & EXAMPLES
The following examples were provided by our customers and represent
only some of the potential mining applications for Crystal Ball.
- Assessing comparative operational costs
- Develop risk profiles and NPV valuations of development projects
- Evaluation of engineering alternatives for environmental remediation
projects
- Evaluation of operational and technical risks
- Evaluation of strategic coal supply options and investments
- Feasibility analysis on new projects and expansions
- Manage of Capital Investment Evaluation and Project Control
- Mine planning and mine operation decisions
- Probabilistic evaluation of various technologies and R&D
projects
- Quantifying risks in terms of time and money for dredging
tenders
- Run Monte Carlo simulations for real options analysis in capital
investments
- Techno-economic evaluations and business planning
- Validate estimation cost and schedule
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