Predicting peak day and peak hour of electricity demand with ensemble machine learning

Fu, Tao and Zhou, Huifen and Ma, Xu and Hou, Z. Jason and Wu, Di (2022) Predicting peak day and peak hour of electricity demand with ensemble machine learning. Frontiers in Energy Research, 10. ISSN 2296-598X

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Abstract

Battery energy storage systems can be used for peak demand reduction in power systems, leading to significant economic benefits. Two practical challenges are 1) accurately determining the peak load days and hours and 2) quantifying and reducing uncertainties associated with the forecast in probabilistic risk measures for dispatch decision-making. In this study, we develop a supervised machine learning approach to generate 1) the probability of the next operation day containing the peak hour of the month and 2) the probability of an hour to be the peak hour of the day. Guidance is provided on preparation and augmentation of data as well as selection of machine learning models and decision-making thresholds. The proposed approach is applied to the Duke Energy Progress system and successfully captures 69 peak days out of 72 testing months with a 3% exceedance probability threshold. On 90% of the peak days, the actual peak hour is among the 2 h with the highest probabilities.

Item Type: Article
Subjects: Institute Archives > Energy
Depositing User: Managing Editor
Date Deposited: 09 May 2023 04:17
Last Modified: 23 Jan 2024 04:06
URI: http://eprint.subtopublish.com/id/eprint/2221

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