Portfolio optimization using Mixture Design of Experiments: Scheduling trades within electricity markets
Deregulation of the electricity sector has given rise to several approaches to defining optimal portfolios of energy contracts. Financial tools - requiring substantial adjustments - are usually used to determine risk and return. This article presents a novel approach to adjusting the conditional value at risk (CVaR) metric to the mix of contracts on the energy markets; the approach uses Mixture Design of Experiments (MDE). In this kind of experimental strategy, the design factors are treated as proportions in a mixture system considered quite adequate for treating portfolios in general. Instead of using traditional linear programming, the concept of desirability function is here used to combine the multi-response, nonlinear objective functions for mean with the variance of a specific portfolio obtained through MDE. The maximization of the desirability function is implied in the portfolio optimization, generating an efficient recruitment frontier. This approach offers three main contributions: it includes risk aversion in the optimization routine, it assesses interaction between contracts, and it lessens the computational effort required to solve the constrained nonlinear optimization problem. A case study based on the Brazilian energy market is used to illustrate the proposal. The numerical results verify the proposal's adequacy.
Year of publication: |
2011
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Authors: | Oliveira, Francisco Alexandre de ; Paiva, Anderson Paulo de ; Lima, José Wanderley Marangon ; Balestrassi, Pedro Paulo ; Mendes, Ronã Rinston Amaury |
Published in: |
Energy Economics. - Elsevier, ISSN 0140-9883. - Vol. 33.2011, 1, p. 24-32
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Publisher: |
Elsevier |
Keywords: | Mixture Design of Experiments Portfolio optimization CVaR and electricity markets |
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