2022
DOI: 10.1155/2022/6967938
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A Deep Intelligent Attack Detection Framework for Fog-Based IoT Systems

Abstract: Fog computing provides a multitude of end-based IoT system services. End IoT devices exchange information with fog nodes and the cloud to handle client undertakings. During the process of data collection between the layer of fog and the cloud, there are more chances of crucial attacks or assaults like DDoS and many more security attacks being compromised by IoT end devices. These network (NW) threats must be spotted early. Deep learning (DL) assumes an unmistakable part in foreseeing the end client behavior by… Show more

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“…Recently, hybrid models combining diverse complementary neural architectures have become popular. For instance, Surya et al [ 40 ] developed a hybrid LSTM-DL model tailored for fog-computing intrusion detection, which attained an accuracy of 99.2% on the NSL-KDD dataset. Integrating different types of deep networks allows for learning enriched representations of network data compared with single-architecture models [ 37 , 41 , 42 ].…”
Section: Related Workmentioning
confidence: 99%
“…Recently, hybrid models combining diverse complementary neural architectures have become popular. For instance, Surya et al [ 40 ] developed a hybrid LSTM-DL model tailored for fog-computing intrusion detection, which attained an accuracy of 99.2% on the NSL-KDD dataset. Integrating different types of deep networks allows for learning enriched representations of network data compared with single-architecture models [ 37 , 41 , 42 ].…”
Section: Related Workmentioning
confidence: 99%