A Stability-Driven Framework for Long-Term Hourly Electricity Demand Forecasting
A Stability-Driven Framework for Long-Term Hourly Electricity Demand Forecasting
Long-term electricity demand forecasting is essential for grid and operations planning, as well as for the analysis and planning of energy transition strategies. However, accurate long-term load forecasting with high temporal resolution remains challenging, as most existing approaches focus on aggregated forecasts, which require accurate prediction of numerous variables for bottom-up sectoral forecasts. In this study, we propose a parsimonious methodology that employs t-tests to verify load stability and the correlation of load with gross domestic product (GDP) to produce a long-term hourly load forecast. Applying this method to Singapore's electricity demand, analysis of multi-year historical data (2004-2022) reveals that its relative hourly load has remained statistically stable, with an overall percentage deviation of 4.24% across seasonality indices. Utilizing these stability findings, five-year-ahead total yearly forecasts were generated using GDP as a predictor, and hourly loads were forecasted using hourly seasonality index fractions. The maximum Mean Absolute Percentage Error (MAPE) across multiple experiments for six-year-ahead forecasts was 6.87%. The methodology was further applied to Belgium (an OECD country) and Bulgaria (a non-OECD country), yielding MAPE values of 6.81% and 5.64%, respectively. Additionally, stability results were incorporated into a short-term forecasting model based on exponential smoothing, demonstrating comparable or improved accuracy relative to existing machine learning-based methods. These findings indicate that parsimonious approaches can effectively produce long-term, high-resolution forecasts.
Soumyadeep Dhar、Ayushkumar Parmar、Haifeng Qiu、Juan Ramon L. Senga、S. Viswanathan
发电、发电厂输配电工程经济计划、经济管理
Soumyadeep Dhar,Ayushkumar Parmar,Haifeng Qiu,Juan Ramon L. Senga,S. Viswanathan.A Stability-Driven Framework for Long-Term Hourly Electricity Demand Forecasting[EB/OL].(2025-07-20)[2025-08-16].https://arxiv.org/abs/2507.15001.点此复制
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