Title
BotDetector: An extreme learning machine‐based Internet of Things botnet detection model
Abstract
AbstractAbstractThe development of artificial intelligence has brought new methods for botnet detection. For better performance, deep learning (DL) is more and more widely employed to botnet detecting. The existing DL‐based botnet detection methods require lots of computing resources and running time. While in the real Internet of Things (IoT) environment, real‐time and low computing consumption are much needed. Therefore, the DL‐based methods seem to be powerless in real‐time IoT scenarios. For these reasons, this article proposes a botnet detection model based on extreme learning machine, named BotDetector, which can directly obtain network stream files and quickly learn without data processing to extract botnet traffic characteristics. Experiments show that BotDetector has a good performance, which can identify botnets accurately with great reduction the time consumption and resource consumption. Furthermore, BotDetector has strong applicability in real IoT scenes.This article proposes an Internet of Things (IoT) botnet detection model based on extreme learning machine (ELM), named BotDetector, which can directly obtain network stream files and quickly learn without data processing to extract botnet traffic characteristics. Experiments show that BotDetector has a good performance, which can identify botnets accurately with great reduction the time consumption and resource consumption. Furthermore, BotDetector has strong applicability. View Figure
Year
DOI
Venue
2021
10.1002/ett.3999
Periodicals
DocType
Volume
Issue
Journal
32
5
ISSN
Citations 
PageRank 
2161-3915
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Xudong Dong100.34
Chen Dong295.55
Zhenyi Chen3103.80
Ye Cheng400.34
Bo Chen500.34