How Should One Fit Channel Measurements to Fading Distributions for Performance Analysis?
Accurate channel modeling plays a pivotal role in optimizing communication systems, especially as new frequency bands come into play in next-generation networks. In this regard, fitting field measurements to stochastic models is crucial for capturing the key propagation features and to map these to...
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Zusammenfassung: | Accurate channel modeling plays a pivotal role in optimizing communication
systems, especially as new frequency bands come into play in next-generation
networks. In this regard, fitting field measurements to stochastic models is
crucial for capturing the key propagation features and to map these to
achievable system performances. In this work, we shed light onto what's the
most appropriate alternative for channel fitting, when the ultimate goal is
performance analysis. Results show that average-error metrics should be used
with caution, since they can largely fail to predict outage probability
measures. We show that supremum-error fitting metrics with tail awareness are
more robust to estimate both ergodic and outage performance measures, even when
they yield a larger average-error fitting. |
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DOI: | 10.48550/arxiv.2412.03274 |