Gas storage valuation under multifactor Lévy processes

Mark Cummins*, Greg Kiely, Bernard Murphy

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

10 Citations (Scopus)
57 Downloads (Pure)

Abstract

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 Lévy 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 Lévy 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 Lévy model suite is better specified to more accurately capture extrinsic value.

Original languageEnglish
Pages (from-to)167-184
Number of pages18
JournalJournal of Banking and Finance
Volume95
Early online date22 Feb 2018
DOIs
Publication statusPublished - 31 Oct 2018

Funding

The authors would like to thank Prof. Michael Dempster (University of Cambridge) for reviewing an earlier draft of this paper and for very helpful comments provided. The authors would also like to thank the participants of the Energy and Commodity Finance Conference 2016, in particular the discussant Tomasso Pellegrino, for a range of valuable suggestions. The authors would also like to thank the Associate Editor and two anonymous reviewers for comments and recommendations that have led to a substantially improved study.

Keywords

  • fast Fourier transform
  • Gas storage valuation
  • implied moments calibration
  • mean reverting variance gamma processes
  • multifactor Lévy processes

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