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Cyber-resilient machine learning framework for accurate individual load forecasting and anomaly detection in smart grids

  • M. Tayseer
  • , M. Talaat*
  • , Amr A. Zamel
  • , Bishoy E. Sedhom
  • , M. Elgamal
  • , Tomonobu Senjyu
  • , Dongran Song
  • , Islam M. Ibrahim
  • , M. H. Elkholy
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

With the evolution of smart grids, accurate and secure predictions of the electricity load become crucial for efficient energy management and reliability. In this paper, a scalable and cyber-resilient methodology for electricity consumption forecasting on individual smart meter level based on machine learning and anomaly detection schemes is proposed. The proposed technique utilizes K-MEANS Clustering and Neural Networks (KMEANS–NN) to enhance Individual Load Forecasting (ILF) with reduced computational complexity and high prediction accuracy. A Principal Component Analysis based One-Class Support Vector Machine (PCA–OCSVM) model is employed as an Anomaly Detection Scheme (ADS) to identify the false data injection attacks in smart meter telemetry. The system uses five months of real-world data from smart meters gathered under the supervision of Electrical Distribution Sector (EDS) of Suez Canal Authority (SCA) in Egypt. KMEANS–NN strategy reduces significantly MAAPE by up to and cuts computational time from days to minutes. It improves forecasting accuracy across four proposed models: ARIMA, CTREE, MLP and NNETAR. To assess the cyber-security profile, of the dataset is orchestrated with scaling, ramping and random cyber-attack simulation. Proposed ADS achieves overall accuracy, sensitivity, precision, specificity and F1-score of, whereas it’s accurate on clean data. This integrated model offers accurate, efficient, and secure load forecasting presenting good potential for its deployment in large-scale smart grid environments.

Original languageEnglish
Article number44054
JournalScientific Reports
Volume15
Issue number1
DOIs
StatePublished - Dec 2025

Bibliographical note

Publisher Copyright:
© The Author(s) 2025.

Keywords

  • Anomaly detection scheme (ADS)
  • Cyber-attack scenarios
  • K-MEANS clustering and neural networks (KMEANS–NN)
  • Load forecasting
  • Resilient support vector machine
  • Smart meters

ASJC Scopus subject areas

  • General

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