Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
480178 | European Journal of Operational Research | 2012 | 12 Pages |
The deregulation of electricity markets increases the financial risk faced by retailers who procure electric energy on the spot market to meet their customers’ electricity demand. To hedge against this exposure, retailers often hold a portfolio of electricity derivative contracts. In this paper, we propose a multistage stochastic mean–variance optimisation model for the management of such a portfolio. To reduce computational complexity, we apply two approximations: we aggregate the decision stages and solve the resulting problem in linear decision rules (LDR). The LDR approach consists of restricting the set of recourse decisions to those affine in the history of the random parameters. When applied to mean–variance optimisation models, it leads to convex quadratic programs. Since their size grows typically only polynomially with the number of periods, they can be efficiently solved. Our numerical experiments illustrate the value of adaptivity inherent in the LDR method and its potential for enabling scalability to problems with many periods.
► We formulate a dynamic mean–variance model for electricity portfolio management. ► We solve the problem in linear decision rules (LDR). ► The adaptivity offered by the LDRs mitigates the risk. ► LDRs permit scalability to multiple decision stages.