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首页> 外文期刊>Management science: Journal of the Institute of Management Sciences >Relaxations of Approximate Linear Programs for the Real Option Management of Commodity Storage
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Relaxations of Approximate Linear Programs for the Real Option Management of Commodity Storage

机译:放松近似线性程序,用于商品存储的实物期权管理

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摘要

The real option management of commodity conversion assets gives rise to intractable Markov decision processes (MDPs), in part because of the use of high-dimensional models of commodity forward curve evolution, as commonly done in practice. Focusing on commodity storage, we identify a deficiency of approximate linear programming (ALP), which we address by developing a novel approach to derive relaxations of approximate linear programs. We apply our approach to obtain a class of tractable ALP relaxations, also subsuming an existing method. We provide theoretical support for the use of these ALP relaxations rather than their associated approximate linear programs. Applied to existing natural gas storage instances, our ALP relaxations significantly outperform their corresponding approximate linear programs. Our best ALP relaxation is both near optimal and competitive with, albeit slower than, state-of-the-art methods for computing heuristic policies and lower bounds on the value of commodity storage, but is more directly applicable for dual (upper) bound estimation than these methods. Our approach is potentially relevant for the approximate solution of MDPs that arise in the real option management of other commodity conversion assets, as well as the valuation of real and financial options that depend on forward curve dynamics.
机译:商品转换资产的实物期权管理引起了棘手的马尔可夫决策过程(MDP),部分原因是使用了商品前向曲线演化的高维模型,这在实践中是很常见的。重点放在商品存储上,我们确定了近似线性规划(ALP)的不足,我们通过开发一种新颖的方法来推导近似线性规划的松弛来解决这一问题。我们采用我们的方法来获得一类可处理的ALP松弛,同时也包含了现有方法。我们为使用这些ALP松弛而不是它们相关的近似线性程序提供理论支持。应用到现有的天然气存储实例中,我们的ALP松弛显着优于其相应的近似线性程序。我们最好的ALP松弛既接近最佳值,又具有竞争力,尽管它比计算启发式策略的最新方法和商品存储价值的下限慢,但更直接适用于双重(上限)估计比这些方法。我们的方法可能与其他商品转换资产的实物期权管理中产生的MDP的近似解决方案以及依赖于前向曲线动态的实物期权和财务期权的估值有关。

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