Endowed with automation and connectivity, Connected and Automated Vehicles are meant to be a revolutionary promoter for Cooperative Driving Automation. Nevertheless, CAVs need high-fidelity perception information on their surroundings, which is available but costly to collect from various onboard sensors as well as vehicle-to-everything (V2X) communications. Therefore, authentic perception information based on high-fidelity sensors via a cost-effective platform is crucial for enabling CDA-related research, e.g., cooperative decision-making or control. Most state-of-the-art traffic simulation studies for CAVs rely on situation-awareness information by directly calling on intrinsic attributes of the objects, which impedes the reliability and fidelity of the assessment of CDA algorithms. In this study, a \textit{Cyber Mobility Mirror (CMM)} Co-Simulation Platform is designed for enabling CDA by providing authentic perception information. The \textit{CMM} Co-Simulation Platform can emulate the real world with a high-fidelity sensor perception system and a cyber world with a real-time rebuilding system acting as a "\textit{Mirror}" of the real-world environment. Concretely, the real-world simulator is mainly in charge of simulating the traffic environment, sensors, as well as the authentic perception process. The mirror-world simulator is responsible for rebuilding objects and providing their information as intrinsic attributes of the simulator to support the development and evaluation of CDA algorithms. To illustrate the functionality of the proposed co-simulation platform, a roadside LiDAR-based vehicle perception system for enabling CDA is prototyped as a study case. Specific traffic environments and CDA tasks are designed for experiments whose results are demonstrated and analyzed to show the performance of the platform.
翻译:通过自动化和连通,连接和自动化车辆是合作驱动自动化的革命性推动者。然而,CAV公司需要从各种机载传感器和车辆到普及(V2X)通信收集高纤维感知信息,但从各种机载传感器和车辆到无障碍(V2X)通信收集信息的成本很高。因此,通过具有成本效益的平台,基于高纤维感知传感器的真实感知信息对于促进与CDA有关的研究至关重要,例如合作决策或控制。对于CAV公司的大多数最先进的交通模拟研究依靠的是了解情况的信息,直接呼吁目标的内在属性,这妨碍了对CDA算法的评估的可靠性和真实性。在这个研究中,基于高纤维感知觉感知(例如,合作决策或控制)。