Large-scale deployment of connected vehicles with cooperative awareness technologies increases the demand for vehicle-to-everything (V2X) communication spectrum in 5.9 GHz that is mainly allocated for the exchange of safety messages. To supplement V2X communication and support the high data rates needed by broadband applications, the millimeter-wave (mmWave) automotive radar spectrum at 76-81 GHz can be utilized. For this purpose, joint radar-communication systems have been proposed in the literature to perform both functions using the same waveform and hardware. While multiple-input and multiple-output (MIMO) communication with multiple users enables independent data streaming for high throughput, MIMO radar processing provides high-resolution imaging that is crucial for safety-critical systems. However, employing conventional precoding methods designed for communication generates directional beams that impair MIMO radar imaging and target tracking capabilities during data streaming. In this paper, we propose a MIMO joint automotive radar-communication (JARC) framework based on orthogonal frequency division multiplexing (OFDM) waveform. First, we show that the MIMO-OFDM preamble can be exploited for both MIMO radar processing and estimation of the communication channel. Then, we propose an optimal precoder design method that enables high accuracy target tracking while transmitting independent data streams to multiple receivers. The proposed methods provide high-resolution radar imaging and high throughput capabilities for MIMO JARC networks. Finally, we evaluate the efficacy of the proposed methods through numerical simulations.
翻译:为补充V2X通信,支持宽带应用所需的高数据率,可使用毫米波(mmWave)和76至81千兆赫的汽车雷达频谱,为此,文献中提议采用联合雷达通信系统,使用同样的波形和硬件来履行两种功能。虽然与多个用户的多投和多输出通信能够为高吞吐量进行独立的数据流流,但MIMO雷达处理提供高分辨率成像,这对安全临界系统至关重要。然而,为通信设计的常规预译方法可产生方向光束,损害MIMO雷达成像和数据流过程中的目标跟踪能力。在本文中,我们提议以同一波形和硬件为基础,建立一个联合雷达通信系统(JARC)框架,以履行两种功能。与多个用户的多投影和多输出(MOIMO)通信可促进高分辨率数据流的独立数据流流流。首先,我们表明,IMO-O-ODM为高分辨率数据流提供最佳数据流分析,然后为MIMO数据流提供数据流的高级数据流分析,然后通过MMDDM数据流的高级数据流进行数据流分析。