面向环境感知的汽车FMCW雷达传感器建模与仿真

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Arsalan Haider;Abdulkadir Eryildirim;Marcell Pigniczki;Lukas Haas;Birgit Schlager;Thomas Zeh;David Nickel;Alexander W. Koch
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引用次数: 0

摘要

调频连续波(FMCW)无线电探测和测距(RADAR)传感器已成为自动驾驶系统(ADS)不可或缺的技术,因为它们在恶劣天气条件下的可靠性,以及同时测量物体距离、相对径向速度、方位角和仰角的能力。由于安全、成本和时间的限制,汽车行业越来越多地考虑基于模拟的自动驾驶汽车测试。这就提出了对提供接近现实结果的虚拟环境感知传感器的需求。本文提出了一种基于光线跟踪、高保真、工具无关的基带FMCW雷达传感器模型的设计和结构。雷达传感器模型采用标准化功能模型接口(FMI)和开放仿真接口(OSI)开发,并集成到商业软件的联合仿真环境中,以证明其互换性。RADAR FMU模型采用多输入多输出(MIMO)二维线性间隔虚拟天线阵列、接收天线上距离-多普勒图(rdm)的非相干集成(NCI)、恒定虚警率(CFAR)来获得临时目标检测列表,以及基于密度的带噪声应用空间聚类(DBSCAN)来提供每个目标的单个检测。所提出的雷达FMU模型还包括雷达传感器特有的损伤,如发射天线的相位噪声(PN)、射频(RF)群延迟、相位不平衡(PI)、混频器非线性(包括三阶互调积(IM3))和接收天线的噪声系数(NF)。此外,本工作提出了一种在原始数据级别(距离图(RM)和RDM)和目标检测列表级别合理验证雷达传感器模型的方法。将仿真结果与实际传感器测量结果进行比较,验证了传感器特异性损伤的建模。平均绝对百分比误差(MAPE)度量用于量化模拟与实际传感器测量值之间的差异。结果表明,要使仿真结果接近真实传感器,必须考虑雷达传感器完整的信号处理工具链和传感器特有的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Simulation of Automotive FMCW RADAR Sensor for Environmental Perception
Frequency-modulated continuous wave (FMCW) radio detection and ranging (RADAR) sensors have become indispensable technologies for automated driving systems (ADS) due to their reliability in adverse weather conditions and their ability to simultaneously measure the distance to objects, relative radial velocity, and azimuth and elevation angles. The automotive industry has increasingly considered simulation-based testing of autonomous vehicles due to safety, cost, and time constraints. This raises the need for virtual environmental perception sensors that provide results close to reality. This work presents the design and structure of a ray-tracing-based, high-fidelity, tool-independent baseband FMCW RADAR sensor model. The RADAR sensor model is developed using the standardized functional mock-up interface (FMI) and open simulation interface (OSI) and is integrated into the co-simulation environment of commercial software to demonstrate its exchangeability. The RADAR FMU model incorporates a multiple input and multiple output (MIMO) 2D linear spacing virtual antenna array, non-coherent integration (NCI) of range-Doppler maps (RDMs) over receiver antennas, a constant false alarm rate (CFAR) to obtain an interim object detection list, and density-based spatial clustering of applications with noise (DBSCAN) to provide a single detection per object. The presented RADAR FMU model also includes RADAR sensor-specific impairments such as phase noise (PN), radio frequency (RF) group delay, phase imbalance (PI) of transmitter antennas, mixer non-linearity including third-order intermodulation products (IM3), and noise figure (NF) of receiver antennas. Additionally, this work presents a methodology for plausibly verifying the RADAR sensor model at the raw data level (range map (RM) and RDM) and object detection list level. The simulation results are compared with real sensor measurements to validate the modeling of sensor-specific impairments. The mean absolute percentage error (MAPE) metric is used to quantify the difference between the simulation and real sensor measurements. The results demonstrate that the complete signal processing toolchain and sensor-specific impairments of the RADAR sensor must be considered to achieve simulation results that closely resemble those of the real sensor.
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