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Learning-Based Risk-Averse Model Predictive Control for Adaptive Cruise Control with Stochastic Driver Models ?

机译:基于学习的风险厌恶模型预测控制,用于随机驱动器模型的自适应巡航控制

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We propose a learning-based, distributionally robust model predictive control approach towards the design of adaptive cruise control (ACC) systems. We model the preceding vehicle as an autonomous stochastic system, using a hybrid model with continuous dynamics and discrete, Markovian inputs. We estimate the (unknown) transition probabilities of this model empirically using observed mode transitions and simultaneously determine sets of probability vectors (ambiguity sets) around these estimates, that contain the true transition probabilities with high confidence. We then solve a risk-averse optimal control problem that assumes the worst-case distributions in these sets. We furthermore derive a robust terminal constraint set and use it to establish recursive feasibility of the resulting MPC scheme. We validate the theoretical results and demonstrate desirable properties of the scheme through closed-loop simulations.
机译:我们提出了一种基于学习的分布稳健的模型预测控制方法,朝着自适应巡航控制(ACC)系统的设计。我们使用具有连续动态和离散的Markovian投入的混合模型将前方车辆作为自主随机系统模型。我们估计经验使用观察模式转换和同时确定这些估计围绕这些估计的概率向量(模棱两可集合)的(未知)转换概率,其包含高度置信度的真正转换概率。然后,我们解决了一个风险厌恶最佳控制问题,假设这些集合中的最坏情况分布。我们进一步推出了一个强大的终端约束设置并使用它来建立所产生的MPC方案的递归可行性。我们通过闭环模拟验证理论结果并证明了方案的理想性质。

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