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首页> 外文期刊>Transportation Research Part B: Methodological >A distributionally robust stochastic optimization-based model predictive control with distributionally robust chance constraints for cooperative adaptive cruise control under uncertain traffic conditions
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A distributionally robust stochastic optimization-based model predictive control with distributionally robust chance constraints for cooperative adaptive cruise control under uncertain traffic conditions

机译:基于经常稳健的随机优化的模型预测控制,具有不确定交通条件下合作自适应巡航控制的分布鲁棒机会约束

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摘要

Motivated by connected and automated vehicle (CAV) technologies, this paper proposes a data-driven optimization-based Model Predictive Control (MPC) modeling framework for the Cooperative Adaptive Cruise Control (CACC) of a string of CAVs under uncertain traffic conditions. The proposed data-driven optimization-based MPC modeling framework aims to improve the stability, robustness, and safety of longitudinal cooperative automated driving involving a string of CAVs under uncertain traffic conditions using Vehicle-to-Vehicle (V2V) data. Based on an online learning-based driving dynamics prediction model, we predict the uncertain driving states of the vehicles preceding the controlled CAVs. With the predicted driving states of the preceding vehicles, we solve a constrained Finite-Horizon Optimal Control problem to predict the uncertain driving states of the controlled CAVs. To obtain the optimal acceleration or deceleration commands for the CAVs under uncertainties, we formulate a Distributionally Robust Stochastic Optimization (DRSO) model (i.e. a special case of data-driven optimization models under moment bounds) with a Distributionally Robust Chance Constraint (DRCC). The predicted uncertain driving states of the immediately preceding vehicles and the controlled CAVs will be utilized in the safety constraint and the reference driving states of the DRSO-DRCC model. To solve the minimax program of the DRSO-DRCC model, we reformulate the relaxed dual problem as a Semidefinite Program (SDP) of the original DRSO-DRCC model based on the strong duality theory and the Semidefinite Relaxation technique. In addition, we propose two methods for solving the relaxed SDP problem. We use Next Generation Simulation (NGSIM) data to demonstrate the proposed model in numerical experiments. The experimental results and analyses demonstrate that the proposed model can obtain string-stable, robust, and safe longitudinal cooperative automated driving control of CAVs by proper settings, including the driving-dynamics prediction model, prediction horizon lengths, and time headways. Computational analyses are conducted to validate the efficiency of the proposed methods for solving the DRSO-DRCC model for real-time automated driving applications within proper settings. (C) 2020 Elsevier Ltd. All rights reserved.
机译:通过连接和自动化的车辆(CAV)技术的动机,本文提出了一种基于数据驱动的优化的模型预测控制(MPC)建模框架,用于在不确定的交通条件下的一串CAV的协同自适应巡航控制(CACC)。所提出的基于数据驱动的优化的MPC建模框架旨在提高纵向协作自动化驾驶的稳定性,稳健性和安全性,其涉及使用车辆到车辆(V2V)数据的不确定交通条件下的脉冲串。基于基于在线学习的驾驶动态预测模型,我们预测了受控脉冲前的车辆的不确定驱动状态。利用先前车辆的预测驱动状态,我们解决了约束的有限范围最佳控制问题,以预测受控骑士的不确定驱动状态。为了在不确定性下获得脉冲的最佳加速度或减速命令,我们配备了分布稳健的随机优化(DRSO)模型(即,在界限下的数据驱动优化模型的特殊情况),具有分布鲁棒的机会约束(DRCC)。将在DRSO-DRCC模型的安全约束和参考驱动状态下使用紧接在前的车辆和受控脉冲的预测不确定驱动状态。为了解决DRSO-DRCC模型的MIMIMAX程序,我们基于强大的二元理论和半纤维宽度技术为原始DRSO-DRCC模型的SEMIDITEFINITE程序(SDP)重构了轻松的双重问题。此外,我们提出了两种解决轻松的SDP问题的方法。我们使用下一代模拟(NGSIM)数据来展示数值实验中提出的模型。实验结果和分析表明,所提出的模型可以通过适当的设置获得脉冲稳定,稳健,安全的纵向协作自动化驱动控制,包括驱动动力学预测模型,预测地平线长度和时间头部。进行计算分析以验证所提出的方法求解DRSO-DRCC模型,以在适当的设置中实时自动化驾驶应用程序。 (c)2020 elestvier有限公司保留所有权利。

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