The Internet of Things (IoT) devices are being widely deployed and have been targeted and victimized by malware attacks. The mathematical modelling for an accurate prediction of malicious spreads of botnets across IoT networks is of great importance. Suppose the spread of IoT botnets can be predicted using mathematical models, the security community can then take the necessary steps to deter an outbreak of botnet attacks and minimize the damage caused by malware. This paper surveys mobile malware epidemiological models to understand the mechanisms and dynamics of malware spread for IoT botnets. We describe the characteristics of IoT botnets based on the Susceptible-Infection-Recovery-Susceptible and Susceptible-Exposed-Infection-Recovery-Susceptible epidemic models. These models extend the traditional SIR (Susceptible-Infection-Recovery) model by adding extra states and parameters specific to the epidemic spread of IoT botnets. We use mathematical modelling to simulate complex spreading processes of IoT botnets and interpret the influence of an epidemic on distributed denial of service attacks. We use MATLAB and R to illustrate the use of a stochastic IoT botnet transmission model in the identification and mitigation of challenges towards minimizing the impact of devastating IoT botnet epidemics.
Journal article
Stochastic modeling of IoT Botnet spread: A short survey on mobile malware spread modeling
IEEE Access, Vol.8, pp.228818-228830
2020
Published VersionCC BY V4.0, Open Access
Abstract
Details
- Title
- Stochastic modeling of IoT Botnet spread: A short survey on mobile malware spread modeling
- Authors
- Arash Mahboubi (Author) - Charles Sturt UniversitySeyit Camtepe (Author) - Commonwealth Scientific and Industrial Research OrganisationKeyvan Ansari (Author) - University of the Sunshine Coast, Queensland, USC Business School - Legacy
- Publication details
- IEEE Access, Vol.8, pp.228818-228830
- Publisher
- Institute of Electrical and Electronics Engineers
- Date published
- 2020
- DOI
- 10.1109/ACCESS.2020.3044277
- ISSN
- 2169-3536
- Copyright note
- This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/
- Organisation Unit
- University of the Sunshine Coast, Queensland; USC Business School - Legacy; School of Science, Technology and Engineering
- Language
- English
- Record Identifier
- 99493308802621
- Output Type
- Journal article
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- Collaboration types
- Domestic collaboration
- Web Of Science research areas
- Computer Science, Information Systems
- Engineering, Electrical & Electronic
- Telecommunications