CLAICYJan 18, 2023

News and Load: A Quantitative Exploration of Natural Language Processing Applications for Forecasting Day-ahead Electricity System Demand

arXiv:2301.07535v217 citationsh-index: 21
Originality Synthesis-oriented
AI Analysis

This provides an incremental improvement for power systems forecasting by incorporating unstructured text data.

The study tackled the problem of forecasting day-ahead electricity demand by exploring links with nuanced social events using NLP, finding that textual features like word frequencies and sentiments improve forecasts.

The relationship between electricity demand and weather is well established in power systems, along with the importance of behavioral and social aspects such as holidays and significant events. This study explores the link between electricity demand and more nuanced information about social events. This is done using mature Natural Language Processing (NLP) and demand forecasting techniques. The results indicate that day-ahead forecasts are improved by textual features such as word frequencies, public sentiments, topic distributions, and word embeddings. The social events contained in these features include global pandemics, politics, international conflicts, transportation, etc. Causality effects and correlations are discussed to propose explanations for the mechanisms behind the links highlighted. This study is believed to bring a new perspective to traditional electricity demand analysis. It confirms the feasibility of improving forecasts from unstructured text, with potential consequences for sociology and economics.

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