首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >An integrated artificial neural network-unscented Kalman filter vehicle sideslip angle estimation based on inertial measurement unit measurements
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An integrated artificial neural network-unscented Kalman filter vehicle sideslip angle estimation based on inertial measurement unit measurements

机译:基于惯性测量单元测量的基于惯性测量单元测量

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摘要

Vehicle dynamics stability control systems rely on the amount of so-called sideslip angle and yaw rate. As the sideslip angle can be measured directly only with very expensive sensors, its estimation has been widely studied in the literature. Because of the large non-linearities and uncertainties in the dynamics, model-based methods are not a good solution to estimate the sideslip angle. On the contrary, machine learning techniques require large datasets that cover the entire working range for a correct estimation. In this paper, we propose an integrated artificial neural network and unscented Kalman filter observer using only inertial measurement unit measurements, which can work as a standalone sensor. The artificial neural network is trained solely with numerical data obtained with a Vi-Grade model and outputs a pseudo-sideslip angle which is used as input for the unscented Kalman filter. This is based on a kinematic model making the filter completely transparent to model uncertainty. A direct integration with integral damping and integral reset value allows the estimation of the longitudinal velocity of the kinematic model. A modification strategy of the pseudo-sideslip angle is then proposed to improve the convergence of the filter's output. The algorithm is tested on both numerical data and experimental data. The results show the effectiveness of the solution.
机译:车辆动力学稳定控制系统依靠所谓的侧滑角和横摆率的量。由于侧面线角度可以仅用非常昂贵的传感器直接测量,因此在文献中已经广泛研究了其估计。由于动态的大型非线性和不确定性,基于模型的方法不是估计侧滑角的良好解决方案。相反,机器学习技术需要大型数据集,该数据集覆盖整个工作范围以获得正确的估计。在本文中,我们提出了仅使用惯性测量单元测量的综合人工神经网络和Unscented Kalman滤波器观察者,其可以作为独立传感器作为独立传感器。人工神经网络仅采用与VI级模型获得的数值数据训练,并输出伪侧线角,该角度被用作未入的卡尔曼滤波器的输入。这是基于运动模型,使过滤器完全透明地模拟不确定性。与整体阻尼和积分复位值的直接集成允许估计运动模型的纵向速度。然后提出了伪侧坡角度的修改策略以提高滤波器输出的收敛性。该算法在两个数值数据和实验数据上进行测试。结果表明了解决方案的有效性。

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