Stochastic optimal control for autonomous driving applications via polynomial chaos expansions

P. Listov, Johannes Schwarz, Colin N. Jones
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Abstract

Model‐based methods in autonomous driving and advanced driving assistance gain importance in research and development due to their potential to contribute to higher road safety. Parameters of vehicle models, however, are hard to identify precisely or they can change quickly depending on the driving conditions. In this paper, we address the problem of safe trajectory planning under parametric model uncertainties motivated by automotive applications. We use the generalized polynomial chaos expansions for efficient nonlinear uncertainty propagation and distributionally robust inequalities for chance constraints approximation. Inspired by the tube‐based model predictive control, an ancillary feedback controller is used to control the deviations of stochastic modes from the nominal solution, and therefore, decrease the variance. Our approach allows reducing conservatism related to nonlinear uncertainty propagation while guaranteeing constraints satisfaction with a high probability. The performance is demonstrated on the example of a trajectory optimization problem for a simplified vehicle model with uncertain parameters.
基于多项式混沌展开的自动驾驶随机最优控制
基于模型的自动驾驶和高级驾驶辅助方法在研究和开发中越来越重要,因为它们有可能有助于提高道路安全性。然而,车辆模型的参数很难精确识别,或者会随着驾驶条件的变化而迅速变化。本文研究了汽车应用中参数模型不确定性下的安全轨迹规划问题。我们用广义多项式混沌展开来求解有效的非线性不确定性传播,用分布鲁棒不等式来求解机会约束近似。受基于管的模型预测控制的启发,使用辅助反馈控制器来控制随机模式与标称解的偏差,从而减小方差。我们的方法可以减少与非线性不确定性传播相关的保守性,同时保证高概率地满足约束。通过一个参数不确定的简化车辆模型的轨迹优化问题,验证了该方法的有效性。
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