Fuwang Dong, Fan Liu, Yifeng Xiong, Yuanhao Cui, Wei Wang, Shi Jin
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Second, we present an optimal channel input design for\ndual-functional signaling, which aims to minimize total distortion under the\nconstraints of the MSST and resource budget. We then conceive a two-step\nBlahut-Arimoto (BA)-based optimal search algorithm to numerically solve the\nfunctional optimization problem. Third, in light of the current signaling\nstrategy, we further propose an optimal waveform design for Gaussian signaling\nin multi-input multi-output (MIMO) CAS systems. The associated covariance\nmatrix optimization problem is addressed using a successive convex\napproximation (SCA)-based waveform design algorithm. 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引用次数: 0
摘要
通信辅助传感(CAS)系统有望在不借助额外传感器的情况下为用户提供超视距传感能力。本文主要从信息理论框架、信道输入的最优分布和高斯信号的最优波形设计三个方面研究了双功能信令策略。首先,我们建立了信息理论框架,并开发了专为 CAS 系统定制的修正信源信道分离定理(MSST)。所提出的 MSST 阐明了在传感和通信(S&C)过程的失真指标可分离的情况下,可实现的失真、编码率和通信信道容量之间的关系。其次,我们提出了一种双功能信令的最佳信道输入设计,其目的是在 MSST 和资源预算的约束下最大限度地减少总失真。然后,我们构想了一种基于布拉胡特-阿里莫托(BA)的两步优化搜索算法来数值求解功能优化问题。第三,根据当前的信令策略,我们进一步提出了多输入多输出(MIMO)CAS 系统中高斯信令的最优波形设计。相关的协方差矩阵优化问题使用基于逐次凸逼近(SCA)的波形设计算法来解决。最后,我们提供了数值仿真结果,以证明所提算法的有效性,并展示 S&C 过程之间独特的性能权衡。
Communication-Assisted Sensing Systems: Fundamental Limits and ISAC Waveform Design
The communication-assisted sensing (CAS) systems are expected to endow the
users with beyond-line-of-sight sensing capabilities without the aid of
additional sensors. In this paper, we study the dual-functional signaling
strategy, focusing on three primary aspects, namely, the information-theoretic
framework, the optimal distribution of channel input, and the optimal waveform
design for Gaussian signals. First, we establish the information-theoretic
framework and develop a modified source-channel separation theorem (MSST)
tailored for CAS systems. The proposed MSST elucidates the relationship between
achievable distortion, coding rate, and communication channel capacity in cases
where the distortion metric is separable for sensing and communication (S\&C)
processes. Second, we present an optimal channel input design for
dual-functional signaling, which aims to minimize total distortion under the
constraints of the MSST and resource budget. We then conceive a two-step
Blahut-Arimoto (BA)-based optimal search algorithm to numerically solve the
functional optimization problem. Third, in light of the current signaling
strategy, we further propose an optimal waveform design for Gaussian signaling
in multi-input multi-output (MIMO) CAS systems. The associated covariance
matrix optimization problem is addressed using a successive convex
approximation (SCA)-based waveform design algorithm. Finally, we provide
numerical simulation results to demonstrate the effectiveness of the proposed
algorithms and to show the unique performance tradeoff between S\&C processes.