Jhih-Heng Yan, Jia-Shiang Tseng, Sheng-Chen Tsai, K. Feng
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A Neural Network Based Joint CFO-SCO Equalization for OFDM-RoF in Multi-Band Mobile Fronthaul
A neural-network based machine learning joint CFO-SCO equalizer is proposed for 5G multi-service mobile fronthaul. Up-to 100 ppm CFO and 100 ppm SCO are compensated without conventional synchronization on time or frequency domain.