The control for aggressive driving of autonomous cars is challenging due to the presence of significant tyre slip. Data-driven and mechanism-based methods for the modeling and control of autonomous cars under aggressive driving conditions are limited in data efficiency and adaptability respectively. This paper is an attempt toward the fusion of the two classes of methods. By means of a modular design that is consisted of mechanism-based and data-driven components, and aware of the two-timescale phenomenon in the car model, our approach effectively improves over previous methods in terms of data efficiency, ability of transfer and final performance. The hybrid mechanism-and-data-driven approach is verified on TORCS (The Open Racing Car Simulator). Experiment results demonstrate the benefit of our approach over purely mechanism-based and purely data-driven methods.
翻译:由于存在大量轮胎滑坡,对自动驾驶汽车积极驾驶的控制具有挑战性,在数据效率和适应性方面,数据驱动和机制型自主驾驶汽车建模和控制方法分别在数据效率和数据驱动条件下有限,本文件试图将这两类方法合并在一起,通过模块设计,由基于机制和数据驱动的组件组成,并意识到汽车模型的两时制现象,我们的方法在数据效率、传输能力和最终性能方面比以往方法有效改进。混合机制和数据驱动方法在托盘CS(开放赛车模拟器)上得到验证。实验结果表明,我们的方法对纯粹基于机制和纯数据驱动的方法有好处。