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Linear System Identification of Longitudinal Vehicle Dynamics Versus Nonlinear Physical Modelling

机译:纵向车辆动力学与非线性物理建模的线性系统辨识

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Mathematical modelling of vehicle dynamics is essential for the development of autonomous cars. Many of the vehicle models that are used for control design in cars are based on nonlinear physical models. However, it is not clear, especially for the case of longitudinal dynamics, whether such nonlinear models are necessary or simpler models can be used. In this paper, we identify a linear data-driven model of longitudinal vehicle dynamics and compare it to a nonlinear physically derived model. The linear model was identified in continuous-time state-space form using a prediction error method. The identification data were obtained from a Lancia Delta car, over 53 km of normal driving on public roads. The selected linear model was first order with requested torque, brake and road gradient as inputs and car velocity as output. The key results were that 1. the linear model was accurate, with a variance accounted for (VAF) metric of VAF=96.5%, and 2. the identified linear model was also superior in accuracy to the nonlinear physical model, VAF=77.4%. The implication of these results, therefore, is that for longitudinal dynamics, in normal driving conditions, a first order linear model is sufficient to describe the vehicle dynamics. This is advantageous for control design, state estimation and real-time implementation, e.g. in predictive control.
机译:车辆动力学的数学模型对于自动驾驶汽车的开发至关重要。用于汽车控制设计的许多汽车模型都基于非线性物理模型。但是,尚不清楚,特别是对于纵向动力学情况,是否需要这样的非线性模型还是可以使用更简单的模型。在本文中,我们确定了纵向车辆动力学的线性数据驱动模型,并将其与非线性物理导出模型进行了比较。使用预测误差方法以连续时间状态空间形式识别线性模型。识别数据是从Lancia Delta汽车获得的,该汽车在公共道路上正常行驶超过53公里。所选的线性模型是一阶的,其中要求的扭矩,制动和道路坡度为输入,轿厢速度为输出。关键结果是:1。线性模型准确,方差占VAF的(VAF)度量为96.5%; 2。所识别的线性模型的准确性也优于非线性物理模型,VAF = 77.4% 。因此,这些结果的含义是,对于纵向动力学,在正常驾驶条件下,一阶线性模型足以描述车辆动力学。这对于控制设计,状态估计和实时实现是有利的,例如。在预测控制中。

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