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A novel model-based heuristic for energy-optimal motion planning for automated driving

机译:一种基于模型的新颖启发式算法,用于自动驾驶的能量最优运动计划

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Predictive motion planning is the key to achieve energy-efficient driving, which is one of the main benefits of automated driving. Researchers have been studying the planning of velocity trajectories, a simpler form of motion planning, for over a decade now and many different methods are available. Dynamic programming has shown to be the most common choice due to its numerical background and ability to include nonlinear constraints and models. Although planning of an optimal trajectory is done in a systematic way, dynamic programming does not use any knowledge about the considered problem to guide the exploration and therefore explores all possible trajectories.A?is a search algorithm which enables using knowledge about the problem to guide the exploration to the most promising solutions first. Knowledge has to be represented in a form of a heuristic function, which gives an optimistic estimate of cost for transitioning to the final state, which is not a straightforward task. This paper presents a novel heuristics incorporating air drag and auxiliary power as well as operational costs of the vehicle, besides kinetic and potential energy and rolling resistance known in the literature. Furthermore, optimal cruising velocity, which depends on vehicle aerodynamic properties and auxiliary power, is derived. Results are compared for different variants of heuristic functions and dynamic programming as well.
机译:预测性运动计划是实现节能驾驶的关键,这是自动驾驶的主要优点之一。十多年来,研究人员一直在研究速度轨迹的规划(一种简单的运动规划形式),并且可以使用许多不同的方法。由于动态编程的数值背景以及包含非线性约束和模型的能力,因此它已被证明是最常见的选择。尽管最优轨迹的规划是系统地进行的,但动态规划不会使用任何有关所考虑问题的知识来指导探索,因此将探索所有可能的轨迹。A?是一种搜索算法,可以使用有关问题的知识来指导首先探索最有希望的解决方案。知识必须以一种启发式函数的形式表示,该函数可以乐观地估计过渡到最终状态所需的成本,这并不是一项简单的任务。本文介绍了一种新颖的启发式方法,除了动量和势能以及滚动阻力外,还结合了空气阻力和辅助动力以及车辆的运营成本。此外,得出了最佳巡航速度,该速度取决于车辆的空气动力学特性和辅助动力。比较启发式函数和动态编程的不同变体的结果。

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