EMLGMar 7, 2021

The impact of online machine-learning methods on long-term investment decisions and generator utilization in electricity markets

arXiv:2103.04327v19 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of accurate demand forecasting for electricity market operators and investors, though it appears incremental as it compares existing algorithms in a specific domain.

The paper tackled the problem of predicting electricity demand in decentralized markets to improve long-term investment decisions and generator utilization, showing that online learning algorithms can reduce mean absolute error by 30% compared to offline methods and lower costs and emissions by reducing required grid reserves.

Electricity supply must be matched with demand at all times. This helps reduce the chances of issues such as load frequency control and the chances of electricity blackouts. To gain a better understanding of the load that is likely to be required over the next 24h, estimations under uncertainty are needed. This is especially difficult in a decentralized electricity market with many micro-producers which are not under central control. In this paper, we investigate the impact of eleven offline learning and five online learning algorithms to predict the electricity demand profile over the next 24h. We achieve this through integration within the long-term agent-based model, ElecSim. Through the prediction of electricity demand profile over the next 24h, we can simulate the predictions made for a day-ahead market. Once we have made these predictions, we sample from the residual distributions and perturb the electricity market demand using the simulation, ElecSim. This enables us to understand the impact of errors on the long-term dynamics of a decentralized electricity market. We show we can reduce the mean absolute error by 30% using an online algorithm when compared to the best offline algorithm, whilst reducing the required tendered national grid reserve required. This reduction in national grid reserves leads to savings in costs and emissions. We also show that large errors in prediction accuracy have a disproportionate error on investments made over a 17-year time frame, as well as electricity mix.

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