智能时代的汽车控制
doi: 10.16383/j.aas.c190329
Automotive Control in Intelligent Era
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摘要: 自动驾驶是汽车产业发展的重要里程碑. 汽车驾驶自动化一直都在进行, 其发展进程是对驾驶人认知感知、决策规划和执行控制等各个重要环节的逐步增强或最终替代. 智能时代下, 大数据分析、泛在计算、泛在传感和人工智能等颠覆性技术为汽车驾驶自动化向着高级别迈进提供了新的机遇. 控制技术是智能时代汽车自动化进程中的基石, 更多的信息在先进控制技术的赋能下将衍生出更多的新功能与新系统, 从而实现汽车安全性、经济性以及舒适性等各个方面的提升. 本文对智能时代的汽车控制进行综述, 首先回顾汽车自动化的发展进程, 然后探讨汽车自动化进程中面临的问题, 最后梳理出一些未来智能汽车控制发展趋势与关键技术.
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关键词:
- 汽车控制 /
- 驾驶自动化 /
- 智能时代 /
- 网联自动驾驶汽车 /
- 协同控制
Abstract: Autonomous driving is recognized as the milestone of automotive industry. The purpose of the continuous evolution of vehicular automation is to enhance or replace human-driver's maneuvers in terms of perception, decision-making and execution. With the advent of featured emerging technologies, such as big data, cloud computation, connectivity and artificial intelligence, vehicles are becoming more and more intelligent, leading to unprecedented opportunities to be promoted towards higher level automation. Being as the cornerstone in the process of vehicular automation in intelligent era, control technologies enable the development of new vehicular systems and extended functionalities to offer improved safety, fuel economy, mobility and comfort. This paper provides an overview of the state of the art on intelligent and automated vehicle in control-domain. First, a brief history of vehicle automation is reviewed. Then, key challenges in the development of the automotive control are discussed. Finally, promising technologies and future research trends in intelligent era are identified.-
Key words:
- Automotive control /
- automated driving /
- intelligent era /
- connected and automated vehicle /
- coordinated control
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图 1 汽车自动化分级
Fig. 1 Levels of automotive automation
图 2 汽车驾驶控制系统框图
Fig. 2 Diagram of automated vehicle control system
图 3 车辆极限工况示意图 (侧向 − 纵向)
Fig. 3 Schematics of extreme driving condition (lateral-longitudinal)
图 4 开放道路复杂场景的驾驶自主决策与规划技术
Fig. 4 The technology of decision-making and planning in open road with complex scenario
图 5 智能网联环境下的智能节能与减排技术框图
Fig. 5 Connectivity for improved fuel economy and reduced emission
图 6 预测安全控制框架示意图
Fig. 6 Schematics of predictive safety control concept
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