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The Best of Both Worlds: Hybrid Data-Driven and Model-Based Vehicular Network Simulation

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arxiv 2008.07096 v1 pith:Z4UDHCWC submitted 2020-08-17 cs.NI eess.SP

The Best of Both Worlds: Hybrid Data-Driven and Model-Based Vehicular Network Simulation

classification cs.NI eess.SP
keywords simulationnetworkrealworldbehavioranalysisdatadata-driven
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The analysis of the end-to-end behavior of novel mobile communication methods in concrete evaluation scenarios frequently results in a methodological dilemma: Real world measurement campaigns are highly time-consuming and lack of a controllable environment, the derivation of analytical models is often not possible due to the immense system complexity, system-level network simulations imply simplifications that result in significant derivations to the real world observations. In this paper, we present a hybrid simulation approach which brings together model-based mobility simulation, multi-dimensional Radio Environmental Maps (REMs) for efficient maintenance of radio propagation data, and Data-driven Network Simulation (DDNS) for fast and accurate analysis of the end-to-end behavior of mobile networks. For the validation, we analyze an opportunistic vehicular data transfer use-case and compare the proposed method to real world measurements and a corresponding simulation setup in Network Simulator 3 (ns-3). In comparison to the latter, the proposed method is not only able to better mimic the real world behavior, it also achieves a 300 times higher computational efficiency.

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