학술논문

An Optimum Signal Detection Approach to the Joint ML Estimation of Timing Offset, Carrier Frequency and Phase Offset for Coherent Optical OFDM
Document Type
Periodical
Source
Journal of Lightwave Technology J. Lightwave Technol. Lightwave Technology, Journal of. 39(6):1629-1644 Mar, 2021
Subject
Communication, Networking and Broadcast Technologies
Photonics and Electrooptics
OFDM
Maximum likelihood estimation
Signal to noise ratio
Estimation
Timing
Frequency estimation
Synchronization
Carrier frequency offset
carrier phase offset
matched filter
maximum likelihood estimation
orthogonal frequency-division multiplexing (OFDM)
timing offset
Language
ISSN
0733-8724
1558-2213
Abstract
Coherent orthogonal frequency-division multiplexing (OFDM) is one of the prime digital modulation techniques for present and future generations of wireless and optical communications. Accurate synchronization is the main obstacle to the implementation of a reliable OFDM receiver. We propose here a joint maximum likelihood (ML) estimator for the timing offset (TO), carrier frequency offset (CFO), and carrier phase offset (CPO) for coherent optical OFDM (CO-OFDM) motivated by the theory of ML signal detection. Our approach starts conceptually with the idea of first computing $L$ replicas of the original OFDM spectrum, where $L$ is a power of two and is assumed sufficiently large. This is done by padding $(L-1)N$ zeros to the end of the $N$ received noisy OFDM samples, where $N$ is the number of OFDM subcarriers. By computing the $LN$-point discrete Fourier transform (DFT) of these $LN$ time samples, we get $L$ replicas of the DFT of the original OFDM spectrum, where each replica corresponds to the DFT for one hypothesized value of the CFO and the set of possible CFO values is $\lbrace l/L\rbrace _{l=0}^{L-1}$. We select the most probable replica by choosing the one that is at the minimum Euclidean distance from the original OFDM spectrum, which leads to a matched-filtering (MF) operation in the frequency domain in either a blind or a data-aided manner. Building on this MF concept, we then develop a joint ML estimator of the TO and CPO for each hypothesized value of the CFO. The novelty here is that the TO and the CPO are estimated efficiently as the frequency and phase of a complex sinusoid observed in noise, via either a time-domain or a frequency-domain approach. The resulting joint CFO, CPO, and TO estimator is simpler than existing estimators, both conceptually and in implementation. A much simpler sequential approach in which we first decide on the CFO and then perform a joint TO and CPO estimation is also proposed. The performance loss of this sequential approach compared to the optimum joint approach is small at high signal-to-noise ratio (SNR). We obtain the performance of all our estimators via simulations, and show that they perform better when compared with the existing well-known estimators. Finally, we derive the Cramér–Rao lower bounds (CRLB) on the performance of our estimators, and show via simulations that our estimators for high SNR attain these performance lower bounds.