LGNov 5, 2024

Energy Price Modelling: A Comparative Evaluation of four Generations of Forecasting Methods

arXiv:2411.03372v15 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This work addresses a gap for energy market analysts and policymakers by providing a systematic evaluation, though it is incremental as it focuses on comparing existing methods rather than introducing new ones.

The paper tackles the lack of empirical comparison in energy price forecasting by conducting a large-scale study on four generations of methods, including econometric models, machine learning, LSTMs, and transformers, using EU energy market data to contrast their accuracy.

Energy is a critical driver of modern economic systems. Accurate energy price forecasting plays an important role in supporting decision-making at various levels, from operational purchasing decisions at individual business organizations to policy-making. A significant body of literature has looked into energy price forecasting, investigating a wide range of methods to improve accuracy and inform these critical decisions. Given the evolving landscape of forecasting techniques, the literature lacks a thorough empirical comparison that systematically contrasts these methods. This paper provides an in-depth review of the evolution of forecasting modeling frameworks, from well-established econometric models to machine learning methods, early sequence learners such LSTMs, and more recent advancements in deep learning with transformer networks, which represent the cutting edge in forecasting. We offer a detailed review of the related literature and categorize forecasting methodologies into four model families. We also explore emerging concepts like pre-training and transfer learning, which have transformed the analysis of unstructured data and hold significant promise for time series forecasting. We address a gap in the literature by performing a comprehensive empirical analysis on these four family models, using data from the EU energy markets, we conduct a large-scale empirical study, which contrasts the forecasting accuracy of different approaches, focusing especially on alternative propositions for time series transformers.

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