MASS: Mobile Autonomous Station Simulation
We propose a set of tools to replay wireless network traffic traces, while preserving the privacy of the original traces. Traces are generated by a user- and context-aware trained generative adversarial network (GAN). The replay allows for realistic traces from any number of users and of any trace d...
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Zusammenfassung: | We propose a set of tools to replay wireless network traffic traces, while
preserving the privacy of the original traces. Traces are generated by a user-
and context-aware trained generative adversarial network (GAN).
The replay allows for realistic traces from any number of users and of any
trace duration to be produced given contextual parameters like the type of
application and the real-time signal strength.
We demonstrate the usefulness of the tools in three replay scenarios: Linux-
and Android-station experiments and NS3 simulations.
We also evaluate the ability of the GAN model to generate traces that retain
key statistical properties of the original traces such as feature correlation,
statistical moments, and novelty. Our results show that we beat both
traditional statistical distribution fitting approaches as well as a
state-of-the-art GAN time series generator across these metrics. The ability of
our GAN model to generate any number of user traces regardless of the number of
users in the original trace also makes our tools more practically applicable
compared to previous GAN approaches.
Furthermore, we present a use case where our tools were employed in a Wi-Fi
research experiment. |
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DOI: | 10.48550/arxiv.2111.09161 |