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首页> 外文期刊>Journal of Systems and Control Engineering >A data-driven predictive controller combined with the vector autoregressive with exogenous input model and the propagator estimation method for vehicle lateral stabilization
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A data-driven predictive controller combined with the vector autoregressive with exogenous input model and the propagator estimation method for vehicle lateral stabilization

机译:数据驱动的预测控制器与具有外源输入模型的矢量自回归和用于车辆横向稳定的传播估计方法

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摘要

A general predictive controller based on the subspace model identification method is proposed for vehicle stabilization. Traditional predictive controllers are always developed based on the principle model of vehicles, which inevitably suffers from parameter uncertainty and poor adaptability. In contrast to that, the proposed subspace-based general predictive controller is realized by a data-driven process and presents good adaptability in vehicle stability control. Inspired by subspace-based predictor construction, the keys of the predictive controller are as follows: (1) system model identification according to the model structure of the control object by input and output data; (2) output prediction of the system by the identified model; and (3) optimal control law designed by combining the linear–quadratic–Gaussian index with the predictive output. The main problem in the controller development lies in the recursive estimation of relevant matrices, which is limited by the subspace model identification theory. The implementation of the vector autoregressive with exogenous input model and the propagator method in subspace identification algorithm effectively solves the problem of estimation accuracy and calculation efficiency. Combined with a linear–quadratic–Gaussian index function, the predictive law for vehicle stability control is derived in detail. Finally, based on the vehicle model validated by standard road test, the effectiveness and robustness of the predictive controller are proved through the numerical simulations of various maneuvers under different road adhesive conditions.
机译:提出了一种基于子空间模型识别方法的一般预测控制器,用于车辆稳定性。传统的预测控制器始终根据车辆的原理模型开发,这不可避免地患有参数不确定性和适应性差。与此相反,基于子空间的一般预测控制器通过数据驱动的过程实现,并且在车辆稳定性控制方面具有良好的适应性。灵感来自基于子空间的预测仪结构,预测控制器的键如下:(1)根据输入和输出数据的控制对象的模型结构的系统模型识别; (2)所识别模型的系统输出预测; (3)通过将线性二次高斯指数与预测输出组合来设计的最佳控制定律。控制器开发中的主要问题在于相关矩阵的递归估计,其受子空间模型识别理论的限制。子空间识别算法中具有外源性输入模型的矢量自回归和传播方法的实现有效解决了估计精度和计算效率的问题。结合线性 - 二次高斯指数函数,详细推导了车辆稳定性控制的预测法。最后,基于标准道路测试验证的车型,通过不同道路粘合条件下的各种机动的数值模拟证明了预测控制器的有效性和稳健性。

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