4.6 Article

Short-term load forecasting for multiple buildings: A length sensitivity-based approach

Journal

ENERGY REPORTS
Volume 8, Issue -, Pages 14274-14288

Publisher

ELSEVIER
DOI: 10.1016/j.egyr.2022.10.425

Keywords

Short-term load forecasting; Big data for buildings; Data-driven models; LightGBM Length sensitivity analysis

Categories

Funding

  1. China Postdoctoral Science Foundation [2020M681347]

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With the rapid development of large-scale building energy monitoring platforms, it is important to develop precise forecasting methods for buildings on a large scale to achieve better energy system design and operation. This study proposes a novel approach for selectively utilizing building historical data to improve prediction accuracy, especially for short-term load forecasting.
With the rapid development of large-scale building energy monitoring platforms, it is of great significance to develop precise forecasting methods for buildings on a large scale to achieve better energy system design, system operation, energy management, and renewable energy integration in the grid. Traditionally, using all available historical data to train a data-driven model has been widely employed to ensure prediction performance because more historical information can be learned. However, this strategy may introduce more noise, especially for short-term load forecasting. Thus, this study proposes a novel approach for selectively utilizing building historical data to determine the amount of data that should be used to train the data-driven model. First, the CV(RMSE) curve of each building reflecting the relationship between training data length and forecasting accuracy is obtained using LightGBM. Second, clustering techniques such as k-means are used to identify buildings that are sensitive to the training data length based on CV(RMSE) curves. Finally, the optimal training data length for day-ahead forecasting is estimated for each building. The case study shows that approximately 20% of buildings in the Building Data Genome are labeled as length-sensitive buildings, and adopting appropriate training data lengths can reduce the prediction error of these buildings by up to 15%. (c) 2022 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by- nc- nd/4.0/).

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