In connected vehicular networks, it is vital to have vehicular nodes that are capable of sensing about surrounding environments and exchanging messages with each other for automating and coordinating purpose. Towards this end, integrated sensing and communication (ISAC), combining both sensing and communication systems to jointly utilize their resources and to pursue mutual benefits, emerges as a new cost-effective solution. In ISAC, the hardware and spectrum co-sharing leads to a fundamental tradeoff between sensing and communication performance, which is not well understood except for very simple cases with the same sensing and channel states, and perfect channel state information at the receiver (CSIR). In this paper, a general point-to-point ISAC model is proposed to account for the scenarios that the sensing state is different from but correlated with the channel state, and the CSIR is not necessarily perfect. For the model considered, the optimal tradeoff is characterized by a capacity-distortion function that quantifies the best communication rate for a given sensing distortion constraint requirement. An iterative algorithm is proposed to compute such tradeoff, and a few non-trivial examples are constructed to demonstrate the benefits of ISAC as compared to the separation-based approach.
翻译:在连接的车辆网络中,至关重要的是要有能够感知周围环境并相互交换电文以便实现自动化和协调目的的车辆节点;为此,综合遥感和通信(ISAC)结合遥感和通信系统,共同利用资源并追求互利,成为新的具有成本效益的解决办法;在ISAC中,硬件和频谱共享导致在遥感和通信性能之间发生根本的权衡,除非与同一感测和频道国家发生非常简单的情况,以及接收者提供完美的频道国家信息,否则这一点不能很好地理解;在本文中,提议采用一个一般点对点的ISAC模型,以说明感测状态不同于频道状态,但与频道状态相关,而CSIR不一定完美;在所考虑的模式中,最佳交换的特征是能力扭曲功能,使最佳通信率在给定的感测扭曲限制要求方面出现逆转;建议采用迭代算算法来计算这种交易,并设计出几个非三重的例子,以证明ISAC与分离法相比,具有效益。