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Mass estimation of ground vehicles based on longitudinal dynamics using IMU and CAN-bus data

机译:基于IMU和CAN总线数据的纵向动态的地面车辆的大规模估计

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This paper considers the problem of real-time estimation of ground vehicle mass, based on longitudinal dynamics. Compared to previous contributions, this work relies on basic data from the vehicle controller area network bus. This allows for application to a very broad range of vehicles, by not using vehicle specific parameters such as current gear indicator and engine torque. The current gear ratio is predicted based on the engine and vehicle speeds. The engine torque is modelled by the mass air flow rate of the engine. The road gradient is estimated with an inertial measurement unit, with fusion of gyroscope and accelerometer using a complementary filter. To handle prolonged dynamic conditions affecting the performance of the filter, compensation of external accelerations is made by use of the vehicle speed from the controller area network bus. The mass is estimated with a recursive least squares filter with forgetting factor. The model is validated experimentally with data obtained from test drives with two different petrol powered passenger cars, equipped with a manual transmission and dual clutch automatic transmission respectively. The test drives consist of various driving conditions with different vehicle loads. The resulting mass estimates are generally good for both vehicles with variations within ±5% of the actual masses.
机译:本文考虑了基于纵向动态的地面车辆质量实时估计问题。与以前的贡献相比,这项工作依赖于车辆控制器区域网络总线的基本数据。这允许应用于非常广泛的车辆,而不是使用诸如电流档指示器和发动机扭矩的车辆特定参数。基于发动机和车辆速度来预测电流齿轮比。发动机扭矩由发动机的质量空气流速建模。使用互补滤波器估计道路梯度,具有惯性测量单元,陀螺仪和加速度计的融合。为了处理影响过滤器性能的长时间动态条件,通过从控制器区域网络总线使用车速来进行外部加速度的补偿。用递归最小二乘滤波器估计肿块,具有遗忘因子。该模型通过通过两种不同的汽油动力乘用车从测试驱动器获得的数据进行了实验验证,分别配备有手动变速箱和双离合器自动变速箱。测试驱动器包括具有不同车载负载的各种驾驶条件。所得到的质量估计通常适用于在实际质量的±5%的±5%内的变化。

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