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The effect of demand uncertainty on the optimal capacity mix of a wholesale electricity market

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  • Milstein, Irena
  • Tishler, Asher
  • Woo, Chi-Keung

Abstract

Two-stage models have been the main tools to derive the optimal capacity mix of a wholesale electricity market. In the first stage, independent power producers (IPPs) maximize the expected profits of their capacity investments in generation technologies like photovoltaic (PV) systems and combined cycle gas turbines (CCGTs). In the second stage, interactions among IPPs result in the market's short-run equilibrium prices and output levels for the first stage's determination of the market's long-run optimal capacity mix. However, solving such models necessitates simplifying assumptions about the market's structure that has become more detailed and complex. This study assesses the effect of demand uncertainty on the market's optimal capacity mix by comparing the solutions based on stochastic demand functions to those based on deterministic demand functions. While demand uncertainty can impact the market's optimal capacity mix, we use real-world data to document that its effect is numerically negligible. Hence, deterministic modelling, which is much easier to implement than stochastic modelling, can provide a good approximation to the optimal capacity mix when assessing future electricity market scenarios. This finding's policy implication is that demand uncertainty is a less important driver of a wholesale electricity market's capacity mix than other drivers like capacity and fuel costs.

Suggested Citation

  • Milstein, Irena & Tishler, Asher & Woo, Chi-Keung, 2026. "The effect of demand uncertainty on the optimal capacity mix of a wholesale electricity market," Energy Economics, Elsevier, vol. 155(C).
  • Handle: RePEc:eee:eneeco:v:155:y:2026:i:c:s0140988326000447
    DOI: 10.1016/j.eneco.2026.109165
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