Energies (Jul 2021)

Robust Multi-Step Predictor for Electricity Markets with Real-Time Pricing

  • Sachin Kahawala,
  • Daswin De Silva,
  • Seppo Sierla,
  • Damminda Alahakoon,
  • Rashmika Nawaratne,
  • Evgeny Osipov,
  • Andrew Jennings,
  • Valeriy Vyatkin

DOI
https://doi.org/10.3390/en14144378
Journal volume & issue
Vol. 14, no. 14
p. 4378

Abstract

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Real-time electricity pricing mechanisms are emerging as a key component of the smart grid. However, prior work has not fully addressed the challenges of multi-step prediction (Predicting multiple time steps into the future) that is accurate, robust and real-time. This paper proposes a novel Artificial Intelligence-based approach, Robust Intelligent Price Prediction in Real-time (RIPPR), that overcomes these challenges. RIPPR utilizes Variational Mode Decomposition (VMD) to transform the spot price data stream into sub-series that are optimized for robustness using the particle swarm optimization (PSO) algorithm. These sub-series are inputted to a Random Vector Functional Link neural network algorithm for real-time multi-step prediction. A mirror extension removal of VMD, including continuous and discrete spaces in the PSO, is a further novel contribution that improves the effectiveness of RIPPR. The superiority of the proposed RIPPR is demonstrated using three empirical studies of multi-step price prediction of the Australian electricity market.

Keywords