A Federated-ANFIS for Collaborative Intrusion Detection in Securing Decentralized Autonomous Organizations

被引:3
作者
Tsang Y.P. [1 ]
Wu C.H. [2 ]
Dong N. [3 ]
机构
[1] The Hong Kong Polytechnic University, Department of Industrial and Systems Engineering, Hong Kong SAR
[2] The Hang Seng University of Hong Kong, Department of Supply Chain and Information Management, Hong Kong SAR
[3] Tianjin University, School of Electrical and Information Engineering, Tianjin
关键词
Adaptive neuro-fuzzy inference system (ANFIS); blockchain; collaborative intrusion detection; decentralized autonomous organizations (DAOs); federated learning;
D O I
10.1109/TEM.2023.3304409
中图分类号
学科分类号
摘要
Blockchain has facilitated the emergence of automation and decentralization concepts, leading to significant organizational and operational changes in businesses, e.g., decentralized autonomous organizations (DAOs). In DAOs, management decisions are made collectively and automatically through smart contracts without a central authority, which results in increased cybersecurity requirements. While blockchain integration aims to eliminate single points of failure and enhance data integrity, DAOs remain susceptible to vulnerabilities in consensus mechanisms, key management, and software management, highlighting the need for intrusion detection. Collaborative intrusion detection has been identified as a potential solution to address emerging cyberattacks in a decentralized environment; however, it is not yet fully developed. This study proposes a federated adaptive neuro-fuzzy inference system (FANFIS) for collaborative intrusion detection in blockchain-Internet-of-Things (IoT) networks. The FANFIS maintains a global intrusion detection model in a privacy-preserving manner over the network. Through computational experiments with datasets of KDDCUP99 and Bot-IoT, we found that using the FANFIS reduced the computational time for model training by an average of 49.42% while maintaining a high-performance level. The superior performance of the FANFIS, as demonstrated by its accuracy, precision, and F1-score, surpasses the conventional method involving data centralization, exhibiting mean percentage errors of 1.4092%, 2.6935%, and 1.3463%, respectively. © 1988-2012 IEEE.
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页码:12529 / 12541
页数:12
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共 41 条
  • [31] Khaledian Y., Miller B.A., Selecting appropriate machine learning methods for digital soil mapping, Appl. Math. Model., 81, pp. 401-418, (2020)
  • [32] Karimipour A., Bagherzadeh S.A., Taghipour A., Abdollahi A., Safaei M.R., A novel nonlinear regression model of SVR as a substitute for ANN to predict conductivity of MWCNT-CuO/water hybrid nanofluid based on empirical data, Physica A, Statist. Mech. Appl., 521, pp. 89-97, (2019)
  • [33] Karaboga D., Kaya E., Adaptive network based fuzzy inference system (ANFIS) training approaches: A comprehensive survey, Artif. Intell. Rev., 52, 4, pp. 2263-2293, (2018)
  • [34] Sajith P.J., Nagarajan G., Network intrusion detection system using ANFIS classifier, Soft Comput., 27, 3, pp. 1629-1638, (2022)
  • [35] Mar J., Yeh Y.-C., Hsiao I.-F., An ANFIS-IDS against deauthentication DOS attacks for a WLAN, Proc. IEEE Int. Symp. Inf. Theory Appl., pp. 548-553, (2010)
  • [36] Sun T., Li D., Wang B., Decentralised federated averaging, IEEE Trans. Pattern Anal. Mach. Intell., 45, 4, pp. 4289-4301, (2023)
  • [37] Faris M., Mahmud M.N., Salleh M.F.M., Alnoor A., Wireless sensor network security: A recent review based on state-of-the-art works, Int. J. Eng. Bus. Manage., 15, (2023)
  • [38] Dong N., Zhai M.D., Chang J.F., Wu C.H., A self-adaptive approach forwhite blood cell classification towards point-of-care testing, Appl. Soft Comput., 111, (2021)
  • [39] Kumar K., Mohan V., Performance enhancement of intrusion detection using neuro-fuzzy intelligent system, Ind. J. Comput. Sci. Eng., 5, 5, pp. 186-189, (2014)
  • [40] Altaher A., An improved Android malware detection scheme based on an evolving hybrid neuro-fuzzy classifier (EHNFC) and permission-based features, Neural Comput. Appl., 28, pp. 4147-4157, (2017)