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首页> 外文期刊>Natural resources research >Kalman Filtering-Based Approach for Project Valuation of an Iron Ore Mining Project Through Spot Price and Long-Term Commitment Contracts
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Kalman Filtering-Based Approach for Project Valuation of an Iron Ore Mining Project Through Spot Price and Long-Term Commitment Contracts

机译:Kalman通过现货价格和长期承诺合同进行铁矿石矿业项目的项目估值方法

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摘要

Iron ore was traditionally traded using long-term commitment (LTC) contracts. In the last decade, with the surging demand from China, a futures market was created for iron ore. In this paper, using historical information from this futures market, we focus on modeling market dynamics of Iron Fine 62% Fe-CFR Tianjin Port (China) futures contracts to determine optimal parameter values of the Schwartz (J Financ 52:923-973,1997) two-factor model. A new approach using LTC and futures contracts is proposed to assess the Net Present Value (NPV) of an iron ore mining project. We apply Kalman filtering techniques to calibrate the two-factor commodity model to iron ore futures for the January 2014-November 2016 period. The Kalman filter is useful to infer unobservable variables from noisy measurements. In the Schwartz (1997) two-factor model, the unobservable spot price and convenience yield are inferred from futures contracts transactions. Model parameters are fitted using maximum likelihood optimization. Using parameters derived from the Kalman filtering and the maximum likelihood approach, spot price simulations for the next 7 years are made for three scenarios. The NPV of a mining project is calculated for each scenario. Then, both LTC and futures markets are treated separately and the mining company can choose which proportion of its production to sell in each market. Results show that the calibration and NPV simulation workflow can be effectively used to assess the profitability of a mining project, accounting for the exposure to futures markets.
机译:铁矿石传统上使用长期承诺(LTC)合同进行交易。在过去的十年中,随着中国的需求飙升,为铁矿石创造了期货市场。在本文中,使用本期货市场的历史信息,我们专注于铁罚款62%FE-CFR天津港(中国)期货合约的建模市场动态,以确定Schwartz的最佳参数值(J Finist 52:923-973, 1997)双因素模型。建议采用LTC和期货合约的新方法评估铁矿石矿业项目的净目前价值(NPV)。我们应用卡尔曼滤波技术,以将双因素商品模型校准到2014年1月期间的铁矿石期货。卡尔曼滤波器可用于从嘈杂测量中推断出不可接受的变量。在Schwartz(1997)的双因素模型中,从期货合约交易推断出不可观察的现货价格和便利率。模型参数使用最大似然优化拟合。使用源自卡尔曼滤波的参数和最大似然方法,未来7年的现货价格模拟是针对三种情况进行的。为每个场景计算挖掘项目的NPV。然后,既单独处理LTC和期货市场,矿业公司都可以选择其生产中的哪个比例在每个市场上销售。结果表明,校准和NPV仿真工作流程可以有效地用于评估采矿项目的盈利能力,占期货市场的接触。

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