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Gas storage valuation under multifactor Levy processes

机译:多因素征费流程下的储气库估价

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A practical problem for energy companies is instituting a consistent framework across its supply and trading activities to deliver on all-important P&L and at-Risk reporting requirements. With a focus on storage assets and wider natural gas market exposures, we present a gas storage valuation methodology, which uniquely uses a flexible multifactor Levy process setting that allows for consistent valuation and risk management reporting across a general derivative book. Our approach is capable of replicating the complex covariance structure of the natural gas forward curve and capturing time spread volatility, a key driver of extrinsic storage value, while being simultaneously capable of accurately calibrating to market traded options. We begin by extending a single factor Mean Reverting Variance Gamma process to an arbitrary number of dimensions and, by way of specific examples, show how the traditional Principal Component Analysis based view of gas forward curve dynamics can be incorporated into a primarily market based valuation. We develop in the process an innovative implied moments based calibration technique, which allows for efficient calibration of general multifactor forward curve models to delivery period options common in energy and commodity markets. Furthermore, to accommodate the forward curve and traded options market consistency, we propose an appropriate joint market based calibration and historical estimation methodology. Through a formal model specification analysis, we provide evidence that the multifactor Levy models we propose provide a better joint fit to NBP natural gas options-forward market data, relative to comparative benchmark models. Finally, we develop a novel multidimensional fast Fourier transform based storage valuation algorithm and provide empirical evidence that the multifactor Levy model suite is better specified to more accurately capture extrinsic value. (C) 2018 Elsevier B.V. All rights reserved.
机译:能源公司的一个实际问题是在其供应和交易活动中建立一致的框架,以实现最重要的损益和风险报告要求。我们着重于存储资产和更广泛的天然气市场敞口,我们提供了一种储气库估值方法,该方法独特地使用了灵活的多因素征费流程设置,可在整个通用衍生产品书中进行一致的估值和风险管理报告。我们的方法能够复制天然气正向曲线的复杂协方差结构,并捕获时间扩散波动性,这是外部存储价值的关键驱动力,同时还能够准确地校准市场交易期权。我们首先将单因素均值回复方差伽马程序扩展到任意数量的维度,并通过特定示例展示如何将基于主成分分析的天然气远期曲线动态视图纳入主要基于市场的估值中。在此过程中,我们开发了一种创新的基于隐式矩的校准技术,该技术可对能源和商品市场中常见的交货期选项的通用多因子正向曲线模型进行有效校准。此外,为了适应远期曲线和交易期权市场的一致性,我们提出了一种合适的基于联合市场的校准和历史估计方法。通过正式的模型规格分析,我们提供的证据表明,相对于比较基准模型,我们提出的多因素征费模型可以更好地与NBP天然气期权-前瞻性市场数据进行联合拟合。最后,我们开发了一种新颖的基于多维快速傅立叶变换的存储评估算法,并提供了经验证据,表明可以更好地指定多因素Levy模型套件以更准确地捕获外部价值。 (C)2018 Elsevier B.V.保留所有权利。

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