首页> 外文会议>Intelligent Transportation Systems, 2001. Proceedings. 2001 IEEE >Collision avoidance system for fixed obstacles-fuzzy controller network for robot driving of an autonomous vehicle
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Collision avoidance system for fixed obstacles-fuzzy controller network for robot driving of an autonomous vehicle

机译:固定障碍物的防撞系统-自动驾驶机器人的模糊控制网络

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A Collision Avoidance System (CAS), which overrules the driver in a critical situation, by steering and/or braking has to be better and more reliable than the driver himself. The driving maneuver is complex and difficult to calculate by traditional mathematical models. Therefore, an ACC car with extended sensors for object detection and a human driver were taken in order to get the data how the driver avoids the Collision with a fixed object in the driving lane. Afterwards, this data was used in order to develop a fuzzy controller network of full collision avoidance for fixed objects. The effectiveness and the robustness of the more than 300 rules of the Fuzzy Controller Network were tested by using the same ACC car, but driven by a robot on the driver seat. The result of these tests are presented in this paper.
机译:通过转向和/或制动在临界情况下将驾驶员重估驱动器的碰撞避免系统(CAS)必须比驾驶员更好,更可靠。通过传统的数学模型,驾驶机动复杂且难以计算。因此,采取了具有用于物体检测和人类驾驶员的扩展传感器的ACC汽车,以获取驾驶员如何避免在驱动通道中与固定物体碰撞的数据。之后,使用该数据来开发用于固定对象的完全碰撞避免的模糊控制器网络。使用相同的ACC汽车测试了300多个模糊控制器网络规则的有效性和稳健性,但是由驾驶员座椅上的机器人驱动。本文提出了这些测试的结果。

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