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Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks

Minh-Khanh Vu · Kennesaw State University · 2026

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<p>This paper evaluates the practical capabilities and limitations of a widely used open-source network security stack—pfSense firewall, Snort Intrusion Detection System (IDS), and OpenAppID detectors—in academic cy- bersecurity laboratories and small-to-medium enterprise (SME)-like environments. In a controlled virtual testbed, we measure application-level and feature-level identifi- cation performance for major applications (Facebook, YouTube, Zoom) using the pfSense/Snort/OpenAppID configuration. The stack achieves 97% application-level identification accuracy for these applications in our lab dataset, drawing on a library of 3,374 OpenAppID detectors. However, our experiments reveal a substan- tial feature-level detection gap: specific functions such as Zoom file transfers and Facebook messaging can- not be reliably identified or blocked despite correct application-level classification. These findings clarify the architectural limitations of signature-based inspection on encrypted traffic and pfSense plug-in deployments and provide evidence-based guidance for cybersecurity educa- tors and SME administrators when selecting tools and setting realistic expectations. We argue that achieving fine-grained, feature-specific policy control will require hybrid approaches that combine traditional signatures with advanced machine-learning-based traffic classifica- tion rather than relying on signature-based methods alone.</p>

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APA 7

Vu, M. K. (2026). Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks. https://doi.org/10.62915/2472-2707.1280

MLA

Vu, Minh-Khanh. "Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks." 2026. https://doi.org/10.62915/2472-2707.1280.

Chicago

Vu, Minh-Khanh. 2026. "Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks.". https://doi.org/10.62915/2472-2707.1280.

Harvard

Vu, M. K. 2026, Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks, Kennesaw State University, available at: https://doi.org/10.62915/2472-2707.1280 [Accessed 25 Jun. 2026].

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Título
Application Identification with pfSense, Snort, and OpenAppID in Academic Lab Networks
Autor / colaboradores
Minh-Khanh Vu
Editorial
Kennesaw State University
Año de publicación
2026
ISSN
2472-2707
ISSN
2472-2707
Idioma
eng

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