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Moreover, the obtained results show that the heuristic AC detector is immune to phase noise, and thus, it outperforms the coherent detector in scenarios where the system is subject to considerable phase noise.
Front-end noise suppression enables our systems to deliver robust performance in up to -10 dB car noise
AC noise may therefore compromise the reliability of insulation in HVDC networks.

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