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The Levelised Cost of Frequency Control Ancillary Services in Australia’s National Electricity Market

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  • Joel Gilmore
  • Tahlia Nolan
  • Paul Simshauser

Abstract

Over the period 2016–2021 Australia’s National Electricity Market (NEM) experienced an investment supercycle with 16,000MW of new utility-scale renewable plant commitments in a power system with a peak demand of 35,000MW, and the disorderly loss of 5,000MW of synchronous coal-fired plant. This placed strains on system security, most visibly in the distribution of the power systems’ frequency, requiring material changes to the NEM’s suite of Frequency Control Ancillary Service (FCAS) markets. Utility-scale batteries are ideally suited for FCAS duties, but there is no forward price curve for FCAS markets, nor is there any systematic framework for determining equilibrium prices that might otherwise be used for investment decision-making. In this article, we develop an approach for quantifying long run equilibrium costs and stochastic spot prices in the markets for Frequency Control Ancillary Services, with the intended application being to guide the suitability of utility-scale battery investments under conditions of uncertainty and missing forward FCAS markets.

Suggested Citation

  • Joel Gilmore & Tahlia Nolan & Paul Simshauser, 2024. "The Levelised Cost of Frequency Control Ancillary Services in Australia’s National Electricity Market," The Energy Journal, , vol. 45(1), pages 201-229, January.
  • Handle: RePEc:sae:enejou:v:45:y:2024:i:1:p:201-229
    DOI: 10.5547/01956574.45.1.jgil
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    References listed on IDEAS

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