论利用动态神经网络预测侧滑角度

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Raffaele Marotta;Salvatore Strano;Mario Terzo;Ciro Tordela
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引用次数: 0

摘要

随着人们对自动驾驶汽车的兴趣与日俱增,汽车驾驶的安全性也变得越来越重要。对于旨在提高乘客安全的现代控制系统来说,侧倾角是一个关键参数。它直接影响车辆的横向运动和稳定性。特别是,侧倾角过大会导致车辆转向过度或转向不足,从而失去控制,并可能导致事故。因此,有必要在驾驶过程中持续监控这一数据,以便在必要时采取适当措施。直接测量这一数据的传感器既昂贵又难以实现。本文提出了两种估算侧倾角的神经网络。评估了对车辆侧滑角影响最大的量。此外,神经网络还能利用之前的数据进行估算。其中,第一个神经网络使用横向加速度和方向盘角度作为输入,第二个神经网络使用纵向加速度、横向加速度和偏航率作为输入。在刺激侧滑角的操作中进行的实验测试表明,虽然估算器使用的测量值很少,但它们能够准确估算出所关注的量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Prediction of the Sideslip Angle Using Dynamic Neural Networks
With the growing interest in self-driving vehicles, safety in vehicle driving is becoming an increasingly important aspect. The sideslip angle is a key quantity for modern control systems that aim to improve passenger safety. It directly affects the lateral motion and stability of a vehicle. In particular, a large sideslip angle can cause the vehicle to experience oversteer or understeer, which can lead to loss of control and potentially result in an accident. For this reason, it is necessary to constantly monitor this quantity while driving in order to implement appropriate action if necessary. Sensors that directly measure this quantity are expensive and difficult to implement. In this paper, two neural networks to estimate the sideslip angle are proposed. The quantities that most influence the vehicle’s sideslip angle were assessed. Furthermore, the neural networks can exploit data from previous instants of time for estimation purposes. In particular, the first uses lateral acceleration and steering wheel angle as input, the second uses longitudinal acceleration, lateral acceleration and yaw rate. Experimental tests carried out on manoeuvres that stimulate the sideslip angle have shown that, although the estimators use few measures, they are able to accurately estimate the quantity of interest.
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CiteScore
5.40
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