Input Distribution Optimization in OFDM Dual-Function Radar-Communication Systems
Yumeng Zhang,Sundar Aditya,Bruno Clerckx +2 more
- 11 May 2023
TL;DR: In this article , the authors focus on minimizing the outlier probability (OP) in dual-function radar-communication (DFRC) systems, where radar and communications are performed simultaneously with a common signal.
read more
Abstract: Orthogonal frequency division multiplexing (OFDM) has been widely adopted in dual-function radar-communication (DFRC) systems, where radar and communications are performed simultaneously with a common signal. However, with random communication symbols (CS) in DFRC, the transmit signal has a random ambiguity function that affects the radar's range-velocity estimation performance, whose influence is remained uncovered. Hence, this paper focuses on minimizing the outlier probability (OP) -- the probability of incorrectly estimating a target's range-velocity bin -- in OFDM DFRC w.r.t the CS probability distribution (i.e., the \emph{input distribution}). Conditioned on the CSs, the OP only depends on the CS magnitudes. Hence, we consider the following two schemes for the above optimization: CSs with (1) constant magnitude (phase shift keying input), and (2) random magnitude (Gaussian input). For (1), the problem reduces to the familiar power allocation design across OFDM's subcarriers and symbols, with uniform power allocation across subcarriers and a \emph{windowed} power allocation across symbols being near-optimal. For (2), the mean and variance of the Gaussian distribution at each subcarrier is optimized, with an additional communication constraint to avoid the zero-variance solution where no CSs are carried. We observe that subcarriers with strong communication channels feature strong variance (i.e., favour communications) while the others are characterized by a strong mean (favouring radar). However, the overall power allocation (i.e., the sum of mean and variance) across the OFDM subcarriers and symbols is similar to (1). Simulations show that CSs with random magnitudes degrade the sensing performance, but can be compensated significantly with the proposed input distribution optimization.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Integrated Sensing and Communication System via Dual-Domain Waveform Superposition
Dario Tagliaferri,Marouan Mizmizi,Silvia Mura,Francesco Linsalata,Davide Scazzoli,Damiano Badini,Maurizio Magarini,Umberto Spagnolini +7 more
TL;DR: In this article , the authors proposed a dual-domain waveform design approach that superposes onto the frequency-time domain both the legacy orthogonal frequency division multiplexing (OFDM) signal and a sensing one, purposely designed in the delay-Doppler domain.
Multi-functional OFDM Signal Design for Integrated Sensing, Communications, and Power Transfer
Yumeng Zhang,Sundar Aditya,Bruno Clerckx +2 more
TL;DR: This work investigates integrated sensing, communications and powering (ISCAP), through the design of a wideband OFDM signal to power a sensor while simultaneously performing target-sensing and communication, and proposes an optimized input distribution that balances the three functions.
OFDM Achieves the Lowest Ranging Sidelobe Under Random ISAC Signaling
Fan Liu,Ying Zhang,Yifeng Xiong,Shuangyang Li,Weijie Yuan,Feifei Gao,Jin Shi,Giuseppe Caire +7 more
- 09 Jul 2024
TL;DR: This paper proves that OFDM achieves the lowest ranging sidelobe under random ISAC signaling, outperforming other communication-centric waveforms, including QAM and PSK, in terms of both periodic and aperiodic auto-correlation functions.
Random ISAC Signals Deserve Dedicated Precoding
Shih-Jung Lu,Fan Liu,Fuwang Dong,Yifeng Xiong,Jie Xu,Ya-Feng Liu,Shi Jin +6 more
TL;DR: A new sensing performance metric is defined, namely, ergodic linear minimum mean square error (ELMMSE), which characterizes the estimation error averaged over random ISAC signals, and a data-dependent precoding (DDP) scheme to minimize the ELMMSE in sensing-only scenarios is investigated, which attains the optimized performance at the cost of high implementation overhead.
References
Fundamentals of statistical signal processing: estimation theory
TL;DR: The Fundamentals of Statistical Signal Processing: Estimation Theory as mentioned in this paper is a seminal work in the field of statistical signal processing, and it has been used extensively in many applications.
A technique for orthogonal frequency division multiplexing frequency offset correction
TL;DR: It is shown, and confirmed by simulation, that to maintain signal-to-interference ratios of 20 dB or greater for the OFDM carriers, offset is limited to 4% or less of the intercarrier spacing.
2.6K
Spatial Diversity in Radars—Models and Detection Performance
E. Fishler,Alexander M. Haimovich,Rick S. Blum,Leonard J. Cimini,Dmitry Chizhik,Reinaldo A. Valenzuela +5 more
TL;DR: The optimal detector in the Neyman–Pearson sense is developed and analyzed for the statistical MIMO radar and it is shown that the optimal detector consists of noncoherent processing of the receiver sensors' outputs and that for cases of practical interest, detection performance is superior to that obtained through coherent processing.
1.6K
Joint Radar and Communication Design: Applications, State-of-the-Art, and the Road Ahead
TL;DR: A novel scheme for joint target search and communication channel estimation, which relies on omni-directional pilot signals generated by the HAD structure, is proposed, which is possible to recover the target echoes and mitigate the resulting interference to the UE signals, even when the radar and communication signals share the same signal-to-noise ratio (SNR).