Gao Zhenhai, Liu Dayu, Zheng Chengyuan
College of Automotive Engineering and the National Key Laboratory of Automotive Chassis Integration and Bionics, Jilin University, Changchun, 130025, China.
College of Automotive Engineering, Jilin University, Changchun, 130025, China.
Sci Rep. 2025 Aug 9;15(1):29160. doi: 10.1038/s41598-025-12772-3.
To address the challenges of decision optimization and road segment hazard assessment within complex traffic environments, and to enhance the safety and responsiveness of autonomous driving, a Vehicle-to-Everything (V2X) decision framework is proposed. This framework is structured into three modules: vehicle perception, decision-making, and execution. The vehicle perception module integrates sensor fusion techniques to capture real-time environmental data, employing deep neural networks to extract essential information. In the decision-making module, deep reinforcement learning algorithms are applied to optimize decision processes by maximizing expected rewards. Meanwhile, the road segment hazard classification module, utilizing both historical traffic data and real-time perception information, adopts a hazard evaluation model to classify road conditions automatically, providing real-time feedback to guide vehicle decision-making. Furthermore, an autonomous driving cloud control platform is designed, augmenting decision-making capabilities through centralized computing resources, enabling large-scale data analysis, and facilitating collaborative optimization. Experimental evaluations conducted within simulation environments and utilizing the KITTI dataset demonstrate that the proposed V2X decision optimization method substantially outperforms conventional decision algorithms. Vehicle decision accuracy increased by 9.0%, rising from 89.2 to 98.2%. Additionally, the response time of the cloud control system decreased from 178 ms to 127 ms, marking a reduction of 28.7%, which significantly enhances decision efficiency and real-time performance. The introduction of the road segment hazard classification model also results in a hazard assessment accuracy of 99.5%, maintaining over 95% accuracy even in high-density traffic and complex road conditions, thus illustrating strong adaptability. The results highlight the effectiveness of the proposed V2X decision optimization framework and cloud control platform in enhancing the decision quality and safety of autonomous driving systems.
为应对复杂交通环境下决策优化和路段危险评估的挑战,提高自动驾驶的安全性和响应能力,提出了一种车联网(V2X)决策框架。该框架由三个模块组成:车辆感知、决策制定和执行。车辆感知模块集成传感器融合技术以捕获实时环境数据,采用深度神经网络提取关键信息。在决策制定模块中,应用深度强化学习算法通过最大化预期奖励来优化决策过程。同时,路段危险分类模块利用历史交通数据和实时感知信息,采用危险评估模型自动对道路状况进行分类,提供实时反馈以指导车辆决策。此外,设计了一个自动驾驶云控制平台,通过集中计算资源增强决策能力,实现大规模数据分析,并促进协同优化。在模拟环境中利用KITTI数据集进行的实验评估表明,所提出的V2X决策优化方法显著优于传统决策算法。车辆决策准确率提高了9.0%,从89.2%升至98.2%。此外,云控制系统的响应时间从178毫秒降至127毫秒,减少了28.7%,显著提高了决策效率和实时性能。路段危险分类模型的引入还使危险评估准确率达到99.5%,即使在高密度交通和复杂道路条件下也能保持95%以上的准确率,从而显示出强大的适应性。结果突出了所提出的V2X决策优化框架和云控制平台在提高自动驾驶系统决策质量和安全性方面的有效性。