DOI: 10.3390/iot7030049 ISSN: 2624-831X
CID: A Compact Deep Learning Framework for Intrusion Detection Based on Binary Greylag Goose Optimization
Sudeshna Das, Abhishek Majumder, Sudipta RoyThe application of Internet of Things-based ecosystems is growing rapidly. Cyber attacks are also increasing at a similar pace. Intrusion detection using deep learning is getting harder as these devices lack enough resources for a large Intrusion Detection System. A compact deep learning-based Intrusion Detection System for IoT, called CID, has been proposed to reduce computational complexity. The proposed CID framework uses MobileNet v1 as the main classification model, and the Binary Greylag Goose Optimization technique is used for feature selection to improve detection while minimizing processing time. On comparing the experimental results, it has been found that the proposed method works better than the baseline methods.