
Router forensics: Navigating the digital crossroads
- 1 Saint Leo University
* Author to whom correspondence should be addressed.
Abstract
As the digital landscape continues to evolve, routers have become central gatekeepers, governing the flow of information in networks. This study delves deep into the realm of router forensics, focusing on the methodologies and techniques employed to extract and analyze forensic data from these pivotal devices. Drawing upon both traditional and contemporary approaches, our research underscores the significance of router logs, volatile data, and the challenges that arise in their forensic analysis. We highlight the pressing need for standardized forensic protocols, especially in the face of diverse router architectures and rapidly emerging cyber threats. Our study also emphasizes the potential of leveraging advanced technologies, such as machine learning, in enhancing forensic capabilities. By providing a comprehensive overview of the current state of router forensics and shedding light on potential future trajectories, this research aims to fortify the cybersecurity community's arsenal against escalating cyber threats, ensuring a more secure and resilient digital ecosystem.
Keywords
router forensics, volatile data analysis, cybersecurity threats, forensic protocols, machine learning in forensics
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Cite this article
Nawaf,M. (2023). Router forensics: Navigating the digital crossroads. Advances in Engineering Innovation,2,31-35.
Data availability
The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.
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