论文标题
现实赛车模拟的自适应人类驾驶员模型
An Adaptive Human Driver Model for Realistic Race Car Simulations
论文作者
论文摘要
工程高性能赛车需要使用现实世界测试或在环境中的人驾驶员进行直接考虑。除此之外,具有类似人类的赛车模型的离线模拟可以使该车辆开发过程更加有效,但由于各种挑战而难以获得。通过这项工作,我们打算更好地了解赛车驾驶员行为,并根据模仿学习引入自适应的人类竞赛驱动程序模型。使用现有的发现和与专业赛车工程师的访谈,我们确定了基本适应机制,以及驾驶员如何学习在新轨道上优化单圈时间。随后,我们使用这些见解来开发概率驱动器建模方法的概括和适应技术,并使用专业赛车驱动程序和最先进的赛车模拟器的数据对其进行评估。我们表明,我们的框架可以在几乎像人类的表现上在看不见的赛道上创建现实的驾驶线路分布。此外,我们的驾驶员模型可以通过圈速优化其驾驶圈,从而在实现更快的圈速时纠正以前的圈驾驶错误。这项工作有助于对人类驾驶员的更好理解和建模,旨在加快现代车辆开发过程中的模拟方法,并可能支持自动驾驶和赛车技术。
Engineering a high-performance race car requires a direct consideration of the human driver using real-world tests or Human-Driver-in-the-Loop simulations. Apart from that, offline simulations with human-like race driver models could make this vehicle development process more effective and efficient but are hard to obtain due to various challenges. With this work, we intend to provide a better understanding of race driver behavior and introduce an adaptive human race driver model based on imitation learning. Using existing findings and an interview with a professional race engineer, we identify fundamental adaptation mechanisms and how drivers learn to optimize lap time on a new track. Subsequently, we use these insights to develop generalization and adaptation techniques for a recently presented probabilistic driver modeling approach and evaluate it using data from professional race drivers and a state-of-the-art race car simulator. We show that our framework can create realistic driving line distributions on unseen race tracks with almost human-like performance. Moreover, our driver model optimizes its driving lap by lap, correcting driving errors from previous laps while achieving faster lap times. This work contributes to a better understanding and modeling of the human driver, aiming to expedite simulation methods in the modern vehicle development process and potentially supporting automated driving and racing technologies.