LGAIDec 2, 2024

Enhanced N-BEATS for Mid-Term Electricity Demand Forecasting

arXiv:2412.02722v15 citationsh-index: 21
Originality Incremental advance
AI Analysis

This work addresses forecasting accuracy for electricity demand planners, but it is incremental as it builds on an existing model with specific modifications.

This paper tackles mid-term electricity load forecasting by enhancing the N-BEATS model with a novel loss function and modified block architecture, achieving the lowest MAPE and RMSE on real-world data from 35 European countries.

This paper presents an enhanced N-BEATS model, N-BEATS*, for improved mid-term electricity load forecasting (MTLF). Building on the strengths of the original N-BEATS architecture, which excels in handling complex time series data without requiring preprocessing or domain-specific knowledge, N-BEATS* introduces two key modifications. (1) A novel loss function -- combining pinball loss based on MAPE with normalized MSE, the new loss function allows for a more balanced approach by capturing both L1 and L2 loss terms. (2) A modified block architecture -- the internal structure of the N-BEATS blocks is adjusted by introducing a destandardization component to harmonize the processing of different time series, leading to more efficient and less complex forecasting tasks. Evaluated on real-world monthly electricity consumption data from 35 European countries, N-BEATS* demonstrates superior performance compared to its predecessor and other established forecasting methods, including statistical, machine learning, and hybrid models. N-BEATS* achieves the lowest MAPE and RMSE, while also exhibiting the lowest dispersion in forecast errors.

Foundations

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