Predictive Model Based Low-Speed Adaptive Cruise Control for Autonomous Vehicles

O. Alankuş, Elif Toy Aziziaghdam, Kaan Cakin
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Abstract

European Union confirmed the “Vision Zero” objective in June 2019, as to achieve zero deaths and serious injuries by 2050. This can only be attained through connected and autonomous vehicles integrated into intelligent transport systems and a sustainable mobility system. This requires a cost-effective, fast,and efficient development process for advanced connected and autonomous vehicle functions. In this article, a methodology to develop low-speed Adaptive Cruise Control (ACC), which is one of the most important functions of an autonomous vehicle, is explained. Vehicle tracking at slow speeds is a problem especially for conventional vehicles with high levels of nonlinearities in the powertrain system. As a part of a university-industry collaboration project “SAE level 3 autonomous bus development”, a flexible and realistic discrete plant model including longitudinal vehicle and powertrain model has been developed and discrete low-speed ACC is designed. The plant model aims to perform detailed and realistic software tests of autonomous features, which interfaces with the vehicle controllers. OKAN_UTAS autocorrectedmulti-parameter longitudinal model is integrated. For engine modeling via shaft dynamometer the 3D map of the engine is reproduced. The transmission characteristics were prepared through the road tests. To increase the reliability of the developed functions, Software in the Loop (SIL) and Model in the Loop (MIL) simulations were conducted before the on-road vehicle tests. Finally, C code with the MISRA C standard of ACC is generated and embedded into a real-time platform. The plant model, ACC design, and Model in the Loop test results are presented.
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基于预测模型的自动驾驶汽车低速自适应巡航控制
欧盟于2019年6月确认了“零愿景”目标,即到2050年实现零死亡和零重伤。这只能通过连接和自动驾驶车辆集成到智能交通系统和可持续移动系统中来实现。这需要一个经济、快速、高效的开发过程,以实现先进的联网和自动驾驶汽车功能。本文介绍了自动驾驶汽车最重要的功能之一——低速自适应巡航控制(ACC)的开发方法。车辆在低速下的跟踪是一个问题,特别是对于动力系统高度非线性的传统车辆。作为“SAE 3级自动驾驶客车开发”校企合作项目的一部分,开发了一种灵活、现实的离散工厂模型,包括纵向车辆模型和动力系统模型,并设计了离散低速ACC。工厂模型旨在对自动驾驶功能进行详细和现实的软件测试,这些功能与车辆控制器接口。整合OKAN_UTAS自校正多参数纵向模型。发动机建模通过轴测功机的三维地图的发动机是再现。通过道路试验制备了传动特性。为了提高所开发功能的可靠性,在道路车辆试验之前进行了环中软件(SIL)和环中模型(MIL)仿真。最后,根据ACC的MISRA C标准生成C代码,并将其嵌入到实时平台中。介绍了工厂模型、ACC设计和模型在环试验结果。
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