← Volver a resultados
Ficha bibliográfica · Consulta y acceso
Artículo

SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks

Ali Alqazzaz · Nature Portfolio · 2026

Material complementario disponible
Lectura rápida. Revisá los datos básicos del recurso y luego accedé al contenido desde el botón principal. En esta ficha solo se muestra la información necesaria para identificar la obra, citarla y abrirla.
Revista académica

3D scan-based classification of Chinese young female hand morphology

Esta revista contiene 688 artículos y documentos relacionados.

Acceso al recurso

Entrá al contenido desde la opción principal o elegí otra fuente disponible.

Acceso principal

Material complementario disponible

DOAJ DOAJ - Open Access Journals
El enlace apunta a material asociado, anexos, tablas, datos o página complementaria. No se marca como libro/texto completo.
Abrir material

Resumen

Descripción general del contenido del recurso.

Abstract The increasing adoption of Industrial Internet of Things (IIoT) devices introduces significant cybersecurity and privacy challenges, particularly anomaly detection and secure data sharing. This study presents SecuFL-IoT, a secure and communication-efficient federated learning framework designed for IIoT environments. SecuFL-IoT integrates adaptive anomaly detection, lattice-based homomorphic encryption, differential privacy, and reinforcement learning-based threshold adjustment to enhance security, privacy, and efficiency. The proposed model is evaluated against state-of-the-art federated learning approaches, including FedAvg, FedProx, and SCAFFOLD, using the X-IIoTID dataset. Experimental results demonstrate that SecuFL-IoT achieves an F1-score of 88.5% and a false positive rate of 2.7%, outperforming baseline models in anomaly detection accuracy. The framework reduces communication overhead by 53%, converges 23% faster than FedOPT, and lowers energy consumption by 35%, making it highly suitable for resource-constrained IIoT devices. Additionally, SecuFL-IoT ensures strong privacy guarantees ( $$\epsilon=0.9$$ ) and improves adversarial robustness, reducing data poisoning success rates below 9%. However, the framework introduces encryption latency and assumes a static network topology, which may affect real-time adaptability in highly dynamic environments. In conclusion, SecuFL-IoT provides a scalable, privacy-preserving, and industry-compliant federated learning solution that aligns with ISA/IEC 62,443 cybersecurity standards, ensuring secure anomaly detection in smart factories, power grids, and other critical IIoT infrastructures.

Cómo citar

Elegí el formato que necesitás y copiá la referencia al portapapeles.

APA 7

Alqazzaz, A. (2026). SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks. https://doi.org/10.1038/s41598-025-11883-1

MLA

Alqazzaz, Ali. "SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks." 2026. https://doi.org/10.1038/s41598-025-11883-1.

Chicago

Alqazzaz, Ali. 2026. "SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks.". https://doi.org/10.1038/s41598-025-11883-1.

Harvard

Alqazzaz, A. 2026, SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks, Nature Portfolio, available at: https://doi.org/10.1038/s41598-025-11883-1 [Accessed 25 Jun. 2026].

Compartir e imprimir

Guardá la ficha, copiá su enlace permanente o imprimila como PDF.

Exportar referencia

Si usás un gestor bibliográfico, podés exportar el registro en los formatos más comunes.

Detalles del recurso

Información bibliográfica útil para confirmar que se trata del material correcto.

Título
SecuFL-IoT: an adaptive privacy-preserving federated learning framework for anomaly detection in smart industrial networks
Autor / colaboradores
Ali Alqazzaz
Editorial
Nature Portfolio
Año de publicación
2026
ISSN
2045-2322
ISSN
2045-2322
Idioma
eng

Materias

Explorá otros recursos relacionados a partir de estas materias.

Copiado