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Neural Network Autoregressive With Exogenous Input Assisted Multi-Constraint Nonlinear Predictive Control of Autonomous Vehicles

机译:自主车辆的外源输入辅助多约束非线性预测控制的神经网络自回归

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摘要

This paper focuses on the controller design for path-tracking problem of autonomous ground vehicles (AGVs) by employing a multi-constraint nonlinear predictive control (NMPC) schema. It is aimed to improve the transient performance of the vehicle and to consider a rollover prevention criterion in the proposed method. The path-tracking problem is transformed into the yaw stabilization issue, and a feedback control law with input saturation is developed to decrease the steady-state errors. Furthermore, the yaw-rate signal is generated for the desired path-tracking performance. The major contributions of the present paper are, first, developing a neural network autoregressive with exogenous input system to assist in obtaining an accurate and explicit model in order to contribute to the control of the system over the prediction horizon; second, describing a Frenet-Serret differential geometry based path-following agenda and developing AGV dynamic model by incorporating the vehicle vertical mode of motion to prevent vehicle rollover during critical maneuvers, and finally, achieving an enhanced yaw stabilization and transient tracking performance considering saturated input signal by employing the proposed system identification algorithm. The effectiveness of the proposed control system is verified by comparing with the traditional NMPC method by employing a high fidelity CarSim/MATLAB framework.
机译:本文着重于通过采用多约束非线性预测控制(NMPC)方案来解决自主地面车辆(AGV)的路径跟踪问题的控制器设计。目的在于改善车辆的瞬态性能,并在所提出的方法中考虑防倾倒标准。将路径跟踪问题转化为偏航稳定问题,并开发了具有输入饱和的反馈控制律以减少稳态误差。此外,产生用于期望的路径跟踪性能的横摆率信号。本文的主要贡献是,首先,开发一种具有外源输入系统的自回归神经网络,以帮助获得准确而明确的模型,从而有助于在预测范围内对系统进行控制。其次,描述基于Frenet-Serret微分几何的路径跟踪议程,并通过合并车辆垂直运动模式以防止关键操纵期间的车辆侧翻来开发AGV动态模型,最后,在饱和输入的情况下实现增强的横摆稳定性和瞬态跟踪性能信号采用建议的系统识别算法。通过使用高保真CarSim / MATLAB框架与传统NMPC方法进行比较,验证了所提出控制系统的有效性。

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