Multi-Horizon Electricity Price Forecasting with Deep Learning in the Australian National Electricity Market
- URL: http://arxiv.org/abs/2602.01157v1
- Date: Sun, 01 Feb 2026 11:08:40 GMT
- Title: Multi-Horizon Electricity Price Forecasting with Deep Learning in the Australian National Electricity Market
- Authors: Mohammed Osman Gani, Zhipeng He, Chun Ouyang, Sara Khalifa,
- Abstract summary: We propose a novel electricity price forecasting (EPF) framework that extends the forecast horizon to multi-day-ahead.<n>Standard DL models deliver superior performance in most regions, while SOTA time series DL models demonstrate greater robustness to forecast horizon extension.
- Score: 2.2951895147679298
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate electricity price forecasting (EPF) is essential for operational planning, trading, and flexible asset scheduling in liberalised power systems, yet remains challenging due to volatility, heavy-tailed spikes, and frequent regime shifts. While deep learning (DL) has been increasingly adopted in EPF to capture complex and nonlinear price dynamics, several important gaps persist: (i) limited attention to multi-day horizons beyond day-ahead forecasting, (ii) insufficient exploration of state-of-the-art (SOTA) time series DL models, and (iii) a predominant reliance on aggregated horizon-level evaluation that obscures time-of-day forecasting variation. To address these gaps, we propose a novel EPF framework that extends the forecast horizon to multi-day-ahead by systematically building forecasting models that leverage benchmarked SOTA time series DL models. We conduct a comprehensive evaluation to analyse time-of-day forecasting performance by integrating model assessment at intraday interval levels across all five regions in the Australian National Electricity Market (NEM). The results show that no single model consistently dominates across regions, metrics, and horizons. Overall, standard DL models deliver superior performance in most regions, while SOTA time series DL models demonstrate greater robustness to forecast horizon extension. Intraday interval-level evaluation reveals pronounced diurnal error patterns, indicating that absolute errors peak during the evening ramp, relative errors inflate during midday negative-price regimes, and directional accuracy degrades during periods of frequent trend changes. These findings suggest that future research on DL-based EPF can benefit from enriched feature representations and modelling strategies that enhance longer-term forecasting robustness while maintaining sensitivity to intraday volatility and structural price dynamics.
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