智能电动汽车轨迹规划及其关键技术研究现状综述

Aijuan Li, Yuanshuai Jiang, Xinnian Sun, Huajun Chi, Chuanhu Niu, Gang Liu
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引用次数: 1

摘要

电化学储能技术具有使用方便、响应速度快、配置灵活等特点。目前,智能电动汽车采用的储能技术主要是电化学储能技术。特别是电化学储能技术在智能电动汽车领域的推广,是实现碳中和目标的有效途径。限制智能电动汽车发展和普及的最关键问题之一是动力电池的性能和续航里程;车辆路径规划对动力电池的性能和续驶里程至关重要。改进的路径规划算法可以明显缩短路径长度,减少在起点和终点相同的情况下搜索和规划路径的时间,即增加动力电池的续航里程。在综合分析智能电动汽车对环境信息把握的前提下,将轨迹规划方法分为局部轨迹规划和全局轨迹规划两种。给出了弹道规划方法的主要内容,讨论了所涉及的关键技术,分析了其优缺点。最后,提出了未来智能电动汽车轨迹规划技术的主要发展趋势。
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Research Status of Intelligent Electric Vehicle Trajectory Planning and Its Key Technologies: A Review
Electrochemical energy storage technology has the characteristics of convenient use, fast response, and flexible configuration. At present, the energy storage technology used in smart electric vehicles is mainly electrochemical energy storage technology. In particular, the promotion of electrochemical energy storage technology in the field of smart electric vehicles is an effective way to achieve the goal of carbon neutrality. One of the most critical issues limiting the development and popularity of intelligent electric vehicles is the performance and range of power batteries; vehicle path planning is very important to the performance of power batteries and the driving range. Improved path planning algorithms can obviously shorten the path length and reduce the time of searching and planning a path under the condition of the same starting point and end point, that is, to increase the range of the power battery. On the premise of the comprehensive analysis of the intelligent electric vehicle’s grasp of environmental information, trajectory planning methods are divided into local trajectory planning and global trajectory planning methods. The main content of the trajectory planning method is given, the key technologies involved in the research are discussed, and its advantages and disadvantages are analyzed. Finally, the main development trends of intelligent electric vehicle trajectory planning technology in the future are proposed.
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