LGEMAPFeb 15, 2024

mshw, a forecasting library to predict short-term electricity demand based on multiple seasonal Holt-Winters

arXiv:2402.10982v15 citationsh-index: 8J Comput Sci
Originality Synthesis-oriented
AI Analysis

This provides transmission system operators with a more accessible tool for demand forecasting, though it is incremental as it builds on existing hybrid models.

The authors tackled the problem of short-term electricity demand forecasting by developing a MATLAB toolbox that implements multiple seasonal Holt-Winters and neural network models, achieving results comparable to existing complex software but with simpler implementation.

Transmission system operators have a growing need for more accurate forecasting of electricity demand. Current electricity systems largely require demand forecasting so that the electricity market establishes electricity prices as well as the programming of production units. The companies that are part of the electrical system use exclusive software to obtain predictions, based on the use of time series and prediction tools, whether statistical or artificial intelligence. However, the most common form of prediction is based on hybrid models that use both technologies. In any case, it is software with a complicated structure, with a large number of associated variables and that requires a high computational load to make predictions. The predictions they can offer are not much better than those that simple models can offer. In this paper we present a MATLAB toolbox created for the prediction of electrical demand. The toolbox implements multiple seasonal Holt-Winters exponential smoothing models and neural network models. The models used include the use of discrete interval mobile seasonalities (DIMS) to improve forecasting on special days. Additionally, the results of its application in various electrical systems in Europe are shown, where the results obtained can be seen. The use of this library opens a new avenue of research for the use of models with discrete and complex seasonalities in other fields of application.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes