Numerical methods for the pricing of swing options: A stochastic control approach

  • Christophe Barrera-Esteve
  • , Florent Bergeret
  • , Charles Dossal
  • , Emmanuel Gobet
  • , Asma Meziou
  • , Rémi Munos
  • , Damien Reboul-Salze

Research output: Contribution to journalArticlepeer-review

Abstract

In the natural gas market, many derivative contracts have a large degree of flexibility. These are known as Swing or Take-Or-Pay options. They allow their owner to purchase gas daily, at a fixed price and according to a volume of their choice. Daily, monthly and/or annual constraints on the purchased volume are usually incorporated. Thus, the valuation of such contracts is related to a stochastic control problem, which we solve in this paper using new numerical methods. Firstly, we extend the Longstaff-Schwarz methodology (originally used for Bermuda options) to our case. Secondly, we propose two efficient parameterizations of the gas consumption, one is based on neural networks and the other on finite elements. It allows us to derive a local optimal consumption law using a stochastic gradient ascent. Numerical experiments illustrate the efficiency of these approaches. Furthermore, we show that the optimal purchase is of bang-bang type.

Original languageEnglish
Pages (from-to)517-540
Number of pages24
JournalMethodology and Computing in Applied Probability
Volume8
Issue number4
DOIs
Publication statusPublished - 1 Jan 2006
Externally publishedYes

Keywords

  • Bang-bang control
  • Monte Carlo simulations
  • Parametric consumption
  • Stochastic gradient
  • Swing options

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