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Steering Control for Autonomous Vehicles Using PID Control with Gradient Descent Tuning and Behavioral Cloning

机译:具有梯度下降调整和行为克隆的PID控制的自动驾驶汽车转向控制

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In this paper we implement and evaluate two ways of controlling the steering angle of an autonomous vehicle, PID control with manual tuning followed by gradient descent algorithm tuning-which is able to enhance the performance through self-adjusting the controller parameters-and using supervised machine learning through the end-to-end deep learning for self-driving car which implement Convolutional Neural Network (CNN) to predict the steering angle for a given instance of a track. The verification testing went through two phases: software simulation using python for first run testing and C++ for simulation followed by track testing with a vehicle prototype. The proposed PID steering control system exhibits more stable steering commands-less oscillations-which makes it better than CNN Behavioral cloning control model. However, CNN Behavioral Cloning model may show better results after many several hours of training.
机译:在本文中,我们实现并评估了两种控制无人驾驶汽车转向角的方法,即先手动调整PID,然后进行梯度下降算法调整(可通过自调整控制器参数来提高性能)以及使用受监督的机器进行PID控制。通过端到端深度学习自动驾驶汽车进行学习,该技术实现了卷积神经网络(CNN)来预测给定轨道实例的转向角。验证测试分为两个阶段:使用python进行的软件仿真进行首次运行测试,使用C ++进行仿真,然后通过车辆原型进行轨迹测试。提出的PID转向控制系统表现出更稳定的转向命令,没有振荡,这使其比CNN行为克隆控制模型更好。但是,经过数小时的训练,CNN行为克隆模型可能会显示出更好的结果。

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