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CyberSentry: Enhancing SCADA security through advanced deep learning and optimization strategies

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  • Khadidos, Alaa O.
  • Khadidos, Adil O.
  • Selvarajan, Shitharth
  • Al-Shehari, Taher
  • Alsadhan, Nasser A
  • Singh, Subhav

Abstract

SCADA systems form the core of infrastructural facilities, including power grids, water treatment facilities, and industrial processes. Changing cyber threats present increasingly sophisticated attacks against which traditional security models inadequately protect SCADA systems. These traditional models usually have drawbacks in the way of inadequate feature selection, inefficiency in detecting most attacks, and suboptimal parameter tuning, which cause vulnerabilities and reduce resilience in systems. This paper presents CyberSentry, a new security framework designed to overcome limitations so as to provide robust protection for SCADA systems. These three modules makeup CyberSentry: the RMIG feature selection model, tri-fusion net for attack detection, and Parrot-Levy Blend Optimization (PLBO) for parameter tuning. The Recursive Multi-Correlation-based Information Gain (RMIG) feature selection model enhances accuracy in detection by optimizing the set of fatal features through recursive multi-correlation analysis by Information Gain prioritization. The Tri-Fusion Net combines anomaly detection, signature-based detection, and machine learning classifiers to enhance the detection versatility and robustness. The PLBO module ensures efficient and dynamic tuning for the parameters through undocumented Parrot and Levy optimization techniques. The proposed CyberSentry framework integrates, within a unified architecture, anomaly detection, signature-based detection, and machine learning classifiers to enhance the security of SCADA systems against diverse cyber threats. Features extracted in this manner are analyzed using machine learning classifiers that exploit their predictive capabilities for robust threat classification. The proposed approaches are fused within the Tri-Fusion Net to complement each other in areas where the separate methods lack certain strengths. This, therefore, ensures broad threat detection, as is validated by extensive testing with various datasets for the assurance of superiority in accuracy and reliability. Validated and tested against a wide variety of datasets, CyberSentry demonstrates an overall accuracy of 99.5 % and a loss of 0.32, proving that this method is both effective and reliable.

Suggested Citation

  • Khadidos, Alaa O. & Khadidos, Adil O. & Selvarajan, Shitharth & Al-Shehari, Taher & Alsadhan, Nasser A & Singh, Subhav, 2025. "CyberSentry: Enhancing SCADA security through advanced deep learning and optimization strategies," International Journal of Critical Infrastructure Protection, Elsevier, vol. 50(C).
  • Handle: RePEc:eee:ijocip:v:50:y:2025:i:c:s1874548225000435
    DOI: 10.1016/j.ijcip.2025.100782
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