A parsimonious diffusion equation for electricity demand

Authors

  • Elliot Tonkes Energy Edge Pty Ltd
  • Phil Broadbridge

DOI:

https://doi.org/10.21914/anziamj.v54i0.6751

Keywords:

Electricity demand

Abstract

We present a parsimonious model for describing the stochastic dynamics of electricity demand in the nsw region of the National Electricity Market. We apply a moment matching approach to calibrate the parameters and perform in-sample and out-of-sample tests to demonstrate the model's capability and weaknesses. We show a solid improvement when the calibration uses the minimum and maximum daily temperatures in the regression. We clearly express the relationship between the drift term and the expected demand, which is a nontrivial connection and has not been made explicit in other publications. References
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Published

2014-01-27

Issue

Section

Proceedings Computational Techniques and Applications Conference