Demand-side load forecasting in smart grids using machine learning techniques

被引:0
|
作者
Masood M.Y. [1 ]
Aurangzeb S. [2 ]
Aleem M. [2 ]
Chilwan A. [3 ]
Awais M. [1 ]
机构
[1] The University of Lahore, Lahore
[2] Computer Science, National University of Computer and Emerging Sciences, Islamabad, Islamabad
[3] Norwegian University of Science and Technology, Trondheim
关键词
Artificial Intelligence; Artificial intelligence; Data Mining and Machine Learning; Data mining and machine learning; Data Science; Data science; Forecasting and prediction; Network Science and Online Social Networks; Smart grid;
D O I
10.7717/PEERJ-CS.1987
中图分类号
学科分类号
摘要
Electrical load forecasting remains an ongoing challenge due to various factors, such as temperature and weather, which change day by day. In this age of Big Data, efficient handling of data and obtaining valuable information from raw data is crucial. Through the use of IoT devices and smart meters, we can capture data efficiently, whereas traditional methods may struggle with data management. The proposed solution consists of two levels for forecasting. The selected subsets of data are first fed into the “Daily Consumption Electrical Networks” (DCEN) network, which provides valid input to the “Intra Load Forecasting Networks” (ILFN) network. To address overfitting issues, we use classic or conventional neural networks. This research employs a three-tier architecture, which includes the cloud layer, fog layer, and edge servers. The classical state-of-the-art prediction schemes usually employ a two-tier architecture with classical models, which can result in low learning precision and overfitting issues. The proposed approach uses more weather features that were not previously utilized to predict the load. In this study, numerous experiments were conducted and found that support vector regression outperformed other methods. The results obtained were 5.055 for mean absolute percentage error (MAPE), 0.69 for root mean square error (RMSE), 0.37 for normalized mean square error (NRMSE), 0.0072 for mean squared logarithmic error (MSLE), and 0.86 for R2 score values. The experimental findings demonstrate the effectiveness of the proposed method. © 2024 Masood et al. Distributed under Creative Commons CC-BY 4.0. All Rights Reserved.
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