首页> 外文期刊>IEEE Transactions on Vehicular Technology >Modeling of vehicle dynamics from real vehicle measurements using a neural network with two-stage hybrid learning for accurate long-term prediction
【24h】

Modeling of vehicle dynamics from real vehicle measurements using a neural network with two-stage hybrid learning for accurate long-term prediction

机译:使用具有两阶段混合学习功能的神经网络从真实车辆测量中对车辆动力学建模,以进行准确的长期预测

获取原文
获取原文并翻译 | 示例
       

摘要

This paper describes a neural network (NN) model of a real vehicle and the associated hybrid learning scheme. The NN vehicle models the actual vehicle dynamic behavior with the architecture of a real-time recurrent network. The NN was trained to predict the next state of the vehicle, given the current vehicle state, the current input steering angle of the front wheel, and the vehicle's speed. A hybrid training scheme for the network has been proposed, which consists of two phases: open-loop training for stabilization of the NN weight learning and closed-loop training for long-term prediction of the vehicle behavior. The open-loop training is necessary to avoid learning instability at initial stages. The closed-loop training then follows in such a way that the NN correctly predicts the vehicle's next state in a recursive mode. The outcome is that the model can correctly generate the vehicle trajectory, given the initial state and the steering and speed sequence of the vehicle. Furthermore, after this training procedure, it not only learns the vehicle's lateral dynamics along the trained trajectories, but can also generalize to similar trajectories. This modeling technique has been successfully applied to model the actual dynamics of a Daewoo Leganza vehicle. It is an intelligent vehicle that is fully autonomous in that steering, braking, and accelerating were all done via computer control. The training data were taken from a four-vehicle platoon demonstration in which four vehicles were automatically controlled in a convoy mode.
机译:本文描述了真实车辆的神经网络(NN)模型以及相关的混合学习方案。 NN车辆使用实时循环网络的架构对实际的车辆动态行为进行建模。给定当前的车辆状态,当前的前轮输入转向角和车辆的速度,对NN进行训练以预测车辆的下一个状态。已经提出了一种用于网络的混合训练方案,该方案包括两个阶段:用于稳定NN权重学习的开环训练和用于车辆行为的长期预测的闭环训练。开环训练对于避免初始阶段的学习不稳定是必要的。然后进行闭环训练,使得NN以递归模式正确预测车辆的下一个状态。结果是,在给定初始状态以及车辆的转向和速度序列的情况下,该模型可以正确生成车辆轨迹。此外,在此训练过程之后,它不仅可以沿着训练的轨迹学习车辆的横向动力学,而且还可以推广到相似的轨迹。此建模技术已成功应用于建模Daewoo Leganza车辆的实际动力学。这是一款完全自主的智能汽车,其转向,制动和加速都通过计算机控制完成。训练数据取自四车排演示,其中四辆车以车队模式自动控制。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号