The integration of sensing and communication (ISAC) is a key enabler for next-generation technologies. With high-frequency bands and large-scale antenna arrays, the Rayleigh distance extends, necessitating near-field (NF) models where waves are spherical. Although NF-ISAC improves both sensing and communication, it also poses challenges such as high data volume and potential privacy risks. To address these, we propose a novel framework: near-field integrated sensing, computing, and semantic communication (NF-ISCSC), which leverages semantic communication to transmit contextual information only, thereby reducing data overhead and improving efficiency. However, semantic communication is sensitive to channel variations, requiring adaptive mechanisms. To this end, fluid antennas (FAs) are introduced to support the NF-ISCSC system, enabling dynamic adaptability to changing channels. The proposed FA-enabled NF-ISCSC framework considers multiple communication users and extended targets comprising several scatterers. A joint optimization problem is formulated to maximize data rate while accounting for sensing quality, computational load, and power budget. Using an alternating optimization (AO) approach, the original problem is divided into three sub-problems: ISAC beamforming, FA positioning, and semantic extraction ratio. Beamforming is optimized using the successive convex approximation method. FA positioning is solved via a projected Broyden-Fletcher-Goldfarb-Shanno (BFGS) algorithm, and the semantic extraction ratio is optimized using bisection search. Simulation results demonstrate that the proposed framework achieves higher data rates and better privacy preservation.
翻译:感知与通信一体化(ISAC)是下一代关键技术的重要使能器。随着高频段和大规模天线阵列的应用,瑞利距离随之扩展,这要求采用波前为球面的近场模型。虽然近场ISAC同时提升了感知与通信性能,但也带来了高数据量和潜在隐私风险等挑战。为解决这些问题,我们提出了一种新颖的框架:近场集成感知、计算与语义通信(NF-ISCSC)。该框架利用语义通信仅传输上下文信息,从而降低数据开销并提升效率。然而,语义通信对信道变化较为敏感,需要自适应机制。为此,我们引入流体天线(FAs)来支持NF-ISCSC系统,使其能够动态适应变化的信道。所提出的FA赋能的NF-ISCSC框架考虑了多个通信用户以及由若干散射体组成的扩展目标。我们构建了一个联合优化问题,在兼顾感知质量、计算负载和功率预算的同时最大化数据速率。采用交替优化(AO)方法,将原问题分解为三个子问题:ISAC波束成形、FA定位和语义提取比率。波束成形通过逐次凸逼近方法进行优化;FA定位问题通过投影Broyden-Fletcher-Goldfarb-Shanno(BFGS)算法求解;语义提取比率则利用二分搜索进行优化。仿真结果表明,所提框架能够实现更高的数据速率和更好的隐私保护效果。