Financial Mathematics Seminars - February 28, 2001
Abstracts
Discrete and Continuous-Time Approaches to Modelling Spot Electricity
Prices
Matt Davison, University of Western Ontario
The current continent-wide deregulation of the electrical power marketplace
brings with it the challenge of valuing options to trade spot electrical
power. In order to do this, a stochastic model for spot electricity
prices and a means for accounting for risk in the discounting of cash
flows are required. Once those are in hand, realistic electrical power
options may be priced. In this talk I present some approaches taken
by our group to these problems.
The bulk of our effort so far has been in the construction of stochastic
electricity price models. Electrical power is a unique commodity. It
is essential and cannot be stored, so "spikes", in which spot electricity
prices rise by large factors, are often observed. Electrical power markets
have only been deregulated in recent years, so price time series are
relatively short. Furthermore, every regional market has its own special
characteristics, making calibration of models across regions dangerous.
Mitigating these problems to a certain extent is the availability of
engineering data about the operation of electrical power markets - both
in terms of the main demand drivers (weather, diurnal variability) and
in terms of the main supply drivers (plant outages). Also available
is a great deal of historical "load" information which describes how
much power was actually generated and consumed in given time intervals.
Our models are more dependent on engineering lore and load data than
they are on historical price data.
We have constructed two classes of model. The first is a discrete-time
model designed to "get the spikes right". This is a "switching" or "mixture
of distributions" model. The second, continuous-time model, simulates
spikes without resorting to Poisson jumps. We also present some preliminary
work on pricing options with these models.
Market Imperfections, Investment Optionality and Default Spreads
Stathis Tompaidis, McCombs School of Business, University of Texas
at Austin
We present a model for the valuation of risky debt that accounts for
the endogeneity of the borrower's investment choice as well as possible
borrowing constraints. The model also extends previous research by assuming
that changes in the cash flows generated by the loan's collateral have
both permanent and temporary components and illustrates why this is
relevant in a setting with market imperfections. The paper presents
numerical simulations that allow us to quantify the extent to which
investment flexibility, incentive problems and credit constraints affect
borrowing rates.
Joint with Sheridan Titman and Sergey Tsyplakov, University of Texas
at Austin.