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Automotive Observers based on Multibody Models and the Extended Kalman Filter

机译:基于多体模型和扩展卡尔曼滤波器的汽车观察者

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This work is part of a project aimed to develop automotive real-time observers based on detailed multibody models and the extended Kalman filter (EKF). In previous works, a four-bar mechanism was studied to get insight into the problem. Regarding the formulation of the equations of motion, it was concluded that the state-space reduction method known as matrix-R is the most suitable one for this application. Regarding the sensors, it was shown that better stability, accuracy and efficiency are obtained as the sensored magnitude is a lower derivative and when it is a generalized coordinate of the problem. In the present work, the automotive problem has been already addressed, through the selection of a Volkswagen Passat as a case-study. A model of the car containing fourteen degrees of freedom has been developed. The observer algorithm that combines the equations of motion and the integrator has been reformulated so that duplication of the problem size is avoided, in order to improve efficiency. A maneuver of acceleration from rest and double lane change has been defined, and tests have been run for the "prototype", the "model" and the "observer", all the three computational, with the model having 100 kg more than the prototype. Results have shown that good convergence is obtained, but the computational cost is high, still far from real-time performance.
机译:这项工作是一个项目的一部分,该项目旨在基于详细的多体模型和扩展的卡尔曼滤波器(EKF)开发汽车实时观察器。在以前的工作中,研究了一种四杆机构来深入了解该问题。关于运动方程的表述,可以得出结论,称为矩阵R的状态空间缩减方法是最适合此应用的方法。关于传感器,显示出更好的稳定性,准确性和效率,因为感测的幅度是较低的导数,而当它是问题的广义坐标时。在目前的工作中,通过选择大众帕萨特作为案例研究已经解决了汽车问题。已经开发出包含十四个自由度的汽车模型。重新组合了运动方程和积分器的观察者算法,从而避免了问题大小的重复,从而提高了效率。已经定义了从静止和双车道变更加速的机动性,并且已经对“原型”,“模型”和“观察者”进行了测试,这三个都是通过计算得出的,该模型比原型重100公斤。结果表明获得了很好的收敛性,但是计算成本很高,仍然离实时性能还差得很远。

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