Machine Learning Based Context-Aware Security Management for Mobile IoT: A New Adaptive Approach to Threat Mitigation
DOI:
https://doi.org/10.54228/mjaret0624023Keywords:
Mobile IoT; Machine Learning; Context-Aware Security; Adaptive Threat Mitigation; Anomaly Detection; Real-Time Security; IoT Threat ManagementAbstract
As mobile devices are connected to the Internet of Things (IoT), potentially dynamic and distributed environments are difficult to keep safe. Due to an increase in context-specific cyber-attacks, conventional security mechanisms fail to tackle 30% of the threats. This paper proposes a novel context-aware security management framework for self-adaptive and self-healing mobile IoT environments. The framework uses machine learning models to detect normal and anomalous behavior patterns, ensuring real-time alerting and mitigation of threats. The framework uses adaptive machine learning techniques to understand new threats, minimizing false positives (45%) and enhancing overall security performances. With the help of extensive simulations, we find that our framework shows a 40% lower number of security breaches, and 50 more accurate detection of threats, making it suitable for next-generation mobile IoT networks.
Downloads
Downloads
Published
Issue
Section
License
License Terms for MJARET
Creative Commons Attributio 4.0 International (CC BY) License:
This license allows for the following:
-
Sharing — Copy and redistribute the material in any medium or format.
-
Adaptation — Remix, transform, and build upon the material.
The license is subject to the following terms:
-
Attribution:
- You must give appropriate credit, provide a link to the license, and indicate if changes were made.
- Attribution should include the citation of the article, the author's name, and a link to the original work published in MJARET.
- This must be done in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
-
NonCommercial:
- The material cannot be used for commercial purposes.
- Any use of the work intended to provide a commercial advantage or monetary compensation is considered outside the scope of this license.
-
No Additional Restrictions:
- You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.
General Provisions:
- Understandability: This license can be revoked if you do not comply with its terms and conditions.
- Public Domain: Where the work or any of its elements is in the public domain under applicable law, that status is in no way affected by the license.
- Other Rights:
- The license does not cover rights such as publicity, privacy, or moral rights that may affect your ability to use the material as contemplated by the license.
- Such rights might need to be considered and respected separately.
Disclaimer:
- MJARET does not provide any warranties with the work. The work is provided "as is" without any representations or warranties, express or implied. MJARET will not be liable for any damages resulting from the use of the work.
How to Cite:
- Proper attribution for use of the licensed work should follow the standard citation format provided by MJARET, which should include the author(s), the title of the work, MJARET, and the DOI link.