Device-to-Device mmWave Communication in the Presence of Interference and Hardware Distortion Noises

The residual hardware impairments originating from transceiver hardware such as phase noise, amplifier non-linearity, in-phase, and quadrature imbalances create distortion noises generating a mismatch between an intended and a received signal. This letter investigates the outage probability performance of a device-to-device communication-assisted millimeter wave (mmWave) network by considering interference and practical hardware distortion noises. Note that all channels are modeled as independent and non-identically distributed Nakagami- $m$ fading channels, which is a suitable assumption for mmWave communication according to recent research. Numerical results are corroborated by Monte Carlo simulations.

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