Efficient and Lightweight Convolutional Networks for IoT Malware Detection: A Federated Learning Approach

被引:13
|
作者
Abdel-Basset, Mohamed [1 ]
Hawash, Hossam [1 ]
Sallam, Karam M. [2 ]
Elgendi, Ibrahim [2 ]
Munasinghe, Kumudu [2 ]
Jamalipour, Abbas [3 ]
机构
[1] Zagazig Univ, Fac Comp & Informat, Zagazig 44519, Egypt
[2] Univ Canberra, Sch IT & Syst, Canberra, ACT 2601, Australia
[3] Univ Sydney, Sch Elect & Informat Engn, Sydney, NSW 2006, Australia
关键词
Internet of Things; Malware; Security; Image edge detection; Feature extraction; Training; Detectors; Adversarial attacks; deep learning (DL); edge; fog computing; federated learning (FL); malware detection; INTERNET;
D O I
10.1109/JIOT.2022.3229005
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Over the past few years, billions of unsecured Internet of Things (IoT) devices have been produced and released, and that number will only grow as wireless technology advances. As a result of their susceptibility to malware, effective methods have become necessary for identifying IoT malware. However, the low generalizability and the nonindependently and identically distributed data (non-IID) still pose a major challenge to achieving this goal. In this work, a new federated malware detection paradigm, termed FED-MAL, is introduced to collaboratively train multiple distributed edge devices to detect malware. In FED-MAL, the malware binaries are transformed into an image format to lessen the impact on non-IID, and then a compact convolutional model, named AM-NET, is proposed to learn the malware patterns as an image recognition task. The compact nature of AM-NET makes it an appropriate choice for deployment on resource-constrained IoT devices. Following, a refined edge-based adversarial training is given in FED-MAL to empower generalizability and resistibility by generating adversarial samples from various participating clients. Experimental evaluation on publicly available malware data sets shows that the FED-MAL is efficacious, reliable, expandable, generalizable, and communication efficient.
引用
收藏
页码:7164 / 7173
页数:10
相关论文
共 50 条
  • [41] Federated Machine Learning to Enable Intrusion Detection Systems in IoT Networks
    Devine, Mark
    Ardakani, Saeid Pourroostaei
    Al-Khafajiy, Mohammed
    James, Yvonne
    ELECTRONICS, 2025, 14 (06):
  • [42] Lightweight IoT Malware Detection Solution Using CNN Classification
    Zaza, Ahmad M. N.
    Kharroub, Suleiman K.
    Abualsaud, Khalid
    2020 IEEE 3RD 5G WORLD FORUM (5GWF), 2020, : 212 - 217
  • [43] Federated Learning With Cooperating Devices: A Consensus Approach for Massive IoT Networks
    Savazzi, Stefano
    Nicoli, Monica
    Rampa, Vittorio
    IEEE INTERNET OF THINGS JOURNAL, 2020, 7 (05) : 4641 - 4654
  • [44] A novel federated learning approach for routing optimisation in opportunistic IoT networks
    Bhardwaj, Moulik
    Singh, Jagdeep
    Gupta, Nitin
    Jadon, Kuldeep Singh
    Dhurandher, Sanjay Kumar
    INTERNATIONAL JOURNAL OF SENSOR NETWORKS, 2024, 46 (01) : 24 - 38
  • [45] Malware Threats and Detection for Industrial Mobile-IoT Networks
    Sharmeen, Shaila
    Huda, Shamsul
    Abawajy, Jemal H.
    Ismail, Walaa Nagy
    Hassan, Mohammad Mehedi
    IEEE ACCESS, 2018, 6 : 15941 - 15957
  • [46] A Novel Federated Edge Learning Approach for Detecting Cyberattacks in IoT Infrastructures
    Abbas, Sidra
    Al Hejaili, Abdullah
    Sampedro, Gabriel Avelino
    Abisado, Mideth
    Almadhor, Ahmad S.
    Shahzad, Tariq
    Ouahada, Khmaies
    IEEE ACCESS, 2023, 11 : 112189 - 112198
  • [47] Lightweight Intrusion Detection for IoT Systems Using Artificial Neural Networks
    Saleh, Radhwan A. A.
    Al-Awami, Louai
    Ghaleb, Mustafa
    Abudaqa, Anas A.
    SECURITY AND PRIVACY IN COMMUNICATION NETWORKS, PT II, SECURECOMM 2023, 2025, 568 : 45 - 59
  • [48] IoT Malicious Traffic Detection Based on Federated Learning
    Shen, Yi
    Zhang, Yuhan
    Li, Yuwei
    Ding, Wanmeng
    Hu, Miao
    Li, Yang
    Huang, Cheng
    Wang, Jie
    DIGITAL FORENSICS AND CYBER CRIME, PT 1, ICDF2C 2023, 2024, 570 : 249 - 263
  • [49] Exploring Lightweight Deep Learning Techniques for Intrusion Detection Systems in IoT Networks: A Survey
    Hassan, Hind Ali abdul
    Zolfy, Mina
    JOURNAL OF ELECTRICAL SYSTEMS, 2024, 20 (04) : 1944 - 1958
  • [50] Lightweight Tensor-Enabled GRU for Trustworthy and Communication Efficient Federated Learning in Industrial IoT
    Zhao, Ruonan
    Yang, Laurence T.
    Liu, Debin
    Lu, Wanli
    Yang, Xiangli
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2025, 21 (03) : 2043 - 2052