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A new linear parametrization for peak friction coefficient estimation in real time

机译:用于实时峰值摩擦系数估计的新线性参数化

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The correct estimation of the friction coefficient in automotive applications is of paramount importance in the design of effective vehicle safety systems. In this article a new parametrization for estimating the peak friction coefficient, in the tire-road interface, is presented. The proposed parametrization is based on a feedforward neural network (FFNN), trained by the Extreme Learning Machine (ELM) method. Unlike traditional learning techniques for FFNN, typically based on backpropagation and inappropriate for real time implementation, the ELM provides a learning process based on random assignment in the weights between input and the hidden layer. With this approach, the network training becomes much faster, and the unknown parameters can be identified through simple and robust regression methods, such as the Recursive Least Squares. Simulation results, obtained with the CarSim program, demonstrate a good performance of the proposed parametrization; compared with previous methods described in the literature, the proposed method reduces the estimation errors using a model with a lower number of parameters.
机译:在有效的汽车安全系统的设计中,正确估算汽车应用中的摩擦系数至关重要。在本文中,提出了一种新的参数化方法,用于估计轮胎-道路界面中的峰值摩擦系数。拟议的参数化是基于前馈神经网络(FFNN),并通过极限学习机(ELM)方法进行训练。与通常基于反向传播且不适用于实时实现的FFNN传统学习技术不同,ELM提供了基于输入与隐藏层之间权重的随机分配的学习过程。使用这种方法,网络训练变得更快,并且可以通过简单而可靠的回归方法(例如递归最小二乘)来识别未知参数。通过CarSim程序获得的仿真结果证明了所提出的参数化的良好性能。与文献中描述的先前方法相比,所提出的方法使用参数数量较少的模型来减少估计误差。

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