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Artificial intelligence in smart grid for energy management: power load prediction

发表日期 August 15, 2023 (DOI: https://doi.org/10.54985/peeref.2308p8584388)

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作者

Chibuzo Valentine Nwadike1
  1. Illinois Institute of Technology, IEEE

会议/活动

23rd Annual IEEE International Conference on Electro Information Technology (eit2023), May 2023 (Lewis University, United States)

海报摘要

This project focuses on analysing load and temperature data collected from utility companies in the US, consisting of 20 load zones with varying patterns of hourly load values and 11 temperature stations with distinct locations. The objective is to identify patterns and correlations between temperature data and load values for each zone and develop a predictive model for load values using machine learning algorithms. A thorough data exploration was conducted to examine potential correlations between temperature stations and load values in each zone. In cases where strong correlations were found, the temperature data from the correlated station was utilized to predict load values in the corresponding zones. However, in instances where strong correlations were not identified, a method was devised to select temperature data from a station and incorporate it into machine learning algorithms for predicting load values in each load zone.

关键词

Load prediction, Regression, Machine learning, Smart grid, Load zones, Temperature zones

研究领域

Computer and Information Science , Electrical Engineering, Energy Engineering

参考文献

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基金

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附加信息

利益冲突
No competing interests were disclosed.
数据可用性声明
The datasets generated during and / or analyzed during the current study are available from the corresponding author on reasonable request.
知识共享许可协议
Copyright © 2023 Nwadike. This is an open access work distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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引用
Nwadike, C. Artificial intelligence in smart grid for energy management: power load prediction [not peer reviewed]. Peeref 2023 (poster).
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