Research Article

MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS

Volume: 18 Number: 2 November 30, 2022
TR EN

MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS

Abstract

In today’s technology world, intrusion detection is important topic for the Internet of Things (IoT) systems. With the growth of using tiny devices connected to wireless networks in IoT, the amount of data is growing rapidly. This data may be vulnerable to attacks so that IoT systems need to secure it for increasing the system’s confidentiality, availability, and reliability. The progress of detecting attacks using artificial intelligence (AI) autonomously has become a more convenient method in network intrusion detection systems (NIDS). In this article, we propose new detecting technique to improve performance and increase accuracy in NIDS. We present different machine learning (ML) and deep learning (DL) methods to detect the different type of attacks for IoT systems. We also provide the experiments to find out the best way to identify the anomaly in IoT system environment, take comparisons between different AI models. The experiment was evaluated with the open database UNSW-NB15.

Keywords

References

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Details

Primary Language

English

Subjects

Engineering

Journal Section

Research Article

Publication Date

November 30, 2022

Submission Date

February 17, 2022

Acceptance Date

April 23, 2022

Published in Issue

Year 2022 Volume: 18 Number: 2

APA
Amarouche, S., & Küçük, K. (2022). MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS. Journal of Naval Sciences and Engineering, 18(2), 333-361. https://izlik.org/JA35SJ68MJ
AMA
1.Amarouche S, Küçük K. MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS. JNSE. 2022;18(2):333-361. https://izlik.org/JA35SJ68MJ
Chicago
Amarouche, Siham, and Kerem Küçük. 2022. “MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS”. Journal of Naval Sciences and Engineering 18 (2): 333-61. https://izlik.org/JA35SJ68MJ.
EndNote
Amarouche S, Küçük K (November 1, 2022) MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS. Journal of Naval Sciences and Engineering 18 2 333–361.
IEEE
[1]S. Amarouche and K. Küçük, “MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS”, JNSE, vol. 18, no. 2, pp. 333–361, Nov. 2022, [Online]. Available: https://izlik.org/JA35SJ68MJ
ISNAD
Amarouche, Siham - Küçük, Kerem. “MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS”. Journal of Naval Sciences and Engineering 18/2 (November 1, 2022): 333-361. https://izlik.org/JA35SJ68MJ.
JAMA
1.Amarouche S, Küçük K. MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS. JNSE. 2022;18:333–361.
MLA
Amarouche, Siham, and Kerem Küçük. “MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS”. Journal of Naval Sciences and Engineering, vol. 18, no. 2, Nov. 2022, pp. 333-61, https://izlik.org/JA35SJ68MJ.
Vancouver
1.Siham Amarouche, Kerem Küçük. MACHINE AND DEEP LEARNING-BASED INTRUSION DETECTION AND COMPARISON IN INTERNET OF THINGS. JNSE [Internet]. 2022 Nov. 1;18(2):333-61. Available from: https://izlik.org/JA35SJ68MJ