智能汽车多模式驾驶非线性特性仿真与实验研究

Fugui Wu, Mohammed Wasim Bhatt
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引用次数: 1

摘要

为研究智能车辆多模式驾驶的非线性特性仿真与实验,在研究不同主动制动形式的车辆动力学基础上,结合路况、行驶工况和制动机械结构的联合仿真,提出了一种改进的神经网络PID控制器,以实现巡航车辆的安全和主动制动要求。在现有研究的基础上,本文提出了结合PID控制的四层神经网络,与传统的PID控制器和BP神经网络相比,可以更好地控制制动,提高了后续车型的安全性、效率和稳定性。根据CAR SIM软件的动画仿真论证,可以确定改进的神经网络PID控制器在机械系统中可以实现巡航车辆的安全和主动制动要求,并且比传统的BP神经网络PID控制器更准确、更高效。现有毫米波雷达的相关参数由雷达传感器设定,远距离水平探测距离为正负10度。雷达安装在前保险杠纵轴上,高度442[公式:见文]mm。根据Car SIM预先设定的雷达传感器模块参数,传感器可以独立采集和传输相关数据,也可以针对相同的变量参数与其他传感器合作,以提高精度,避免由于某个传感器失效而导致的异常误差。与传统的PID控制器和BP神经网络相比,四层神经网络与PID控制相结合可以更好地进行制动控制,提高后续车辆的安全性、效率和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation and Experimental Study of Nonlinear Characteristics for Multi-mode Driving of Intelligent Vehicles
To study the nonlinear characteristics simulation and experiment of multimode driving of intelligent vehicle, an improved neural network PID controller is proposed to realize the safe and active braking requirements of cruise vehicles, according to the study of vehicle dynamics of different active braking forms and the joint simulation of road condition, driving condition, and braking mechanical structure. On the basis of the current research, the four-layer neural network combined with PID control is proposed in this paper, which can better control the braking compared with the traditional PID controller and BP neural network, safety, efficiency and stability have been improved in the following cars. According to the animation simulation demonstration of CAR SIM software, it can be determined that the improved neural network PID controller in the mechanical system can realize the safety and active braking requirements of cruise vehicle, and it is more accurate and efficient than the traditional BP neural network PID controller. Relevant parameters of the existing millimeter-wave radars are set by the radar sensors, and the long-distance horizontal detection range is plus or minus 10 degrees. The radar is installed on the longitudinal axis of the front bumper and has a height of 442[Formula: see text]mm. According to Car SIM’s preset radar sensor module parameters, the sensors can independently collect and transmit relevant data, it is also possible to cooperate with other sensors for the same variable parameter to increase the accuracy and avoid abnormal errors caused by the failure of a certain sensor. Compared with the traditional PID controller and BP neural network, the combination of four-layer neural network and PID control can carry out better braking control and improve the safety, efficiency, and stability of the following cars.
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