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首页> 外文期刊>Journal of natural gas science and engineering >Asset portfolio multi-objective optimization tools provide insight to value, risk and strategy for gas and oil decision makers
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Asset portfolio multi-objective optimization tools provide insight to value, risk and strategy for gas and oil decision makers

机译:资产组合多目标优化工具可为天然气和石油决策者提供价值,风险和策略的见解

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Applying optimization algorithm to identify high-performing portfolios is an essential component of gas and oil portfolio analysis and decision making. As oil and gas companies wish to strategically optimize their performance with respect of multiple valuation and non-financial key performance indicators (KPIs) optimization algorithms that facilitate multi-objective optimization are desirable. The benefits of applying a suite of optimizers to mean versus semi-standard deviation stochastic multi-year cash flow and income models are explored with the aid of the hypothetical Portfolio X consisting of eleven upstream assets (with a summary dataset of mean values of KPI simulation distributions plus some general simulation input assumptions applied to the portfolio included as Appendix A). The methods and results of three distinct optimizer algorithms are compared, i.e., rank and cut, linear (Simplex) and evolutionary (genetic) algorithms in terms of a multi-KPI function test score, which is also used as the objective function for the genetic algorithm. The calculations described using the Portfolio X dataset are produced using Excel workbooks driven by VBA macros, and can be scaled up for use with larger asset sets. The results of variously constrained optimization runs using the three optimizers are further evaluated in terms of feasible-envelope and efficient-frontier concepts for value metrics, and for chances of achieving specified KPI targets on an annual basis. A risked portfolio value metric including a risk aversion factor is also derived in order to capture portfolio value and risk in a single metric. An overall portfolio analysis and valuation framework into which a suit of optimizers can meaningfully be deployed is described. (C) 2016 Elsevier B.V. All rights reserved.
机译:应用优化算法识别高绩效投资组合是天然气和石油投资组合分析和决策的重要组成部分。由于石油和天然气公司希望从多个评估角度来战略性地优化其绩效,因此,需要一种能够促进多目标优化的非财务关键绩效指标(KPI)优化算法。借助由11个上游资产组成的假设投资组合X(具有KPI模拟平均值的汇总数据集),探索了将一套优化器应用于均值和半标准差随机多年现金流量和收入模型的好处分布以及应用于附录A)中的投资组合的一些一般模拟输入假设。比较了三种不同的优化器算法的方法和结果,即秩和割,线性(Simplex)算法和进化(遗传)算法的多重KPI功能测试得分,该得分也用作遗传算法的目标函数算法。使用Portfolio X数据集描述的计算是使用VBA宏驱动的Excel工作簿生成的,并且可以按比例放大以用于更大的资产集。进一步评估了使用三个优化器的各种约束优化运行的结果,包括价值度量的可行包络和有效边界概念,以及每年实现指定KPI目标的机会。还导出包含风险规避因子的风险投资组合价值度量,以便在单个度量中捕获投资组合价值和风险。描述了一个整体投资组合分析和评估框架,可以在其中合理部署优化程序。 (C)2016 Elsevier B.V.保留所有权利。

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