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Electric Vehicle Model Parameter Estimation with Combined Least Squares and Gradient Descent Method

机译:最小二乘和梯度下降法相结合的电动汽车模型参数估计

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Energy management algorithms have a crucial role in electric vehicles due to their limited driving range. For an energy management algorithm to be effective, we should model the vehicle as accurately as possible. That is, not only the structure of the model should be accurate, but also the parameters of the model should be accurate. In this work, we take the model of an electric vehicle and tune three parameters in it based on trip data, namely, vehicle mass, air drag coefficient, and rolling resistance coefficient. We do this by using Least Squares method to set the initial guess and then by optimizing the parameters using Gradient Descent. To the best of our knowledge, this is the first work that simultaneously estimates these three parameters. Our work is also unique in the sense that it combines Least Squares and Gradient Descent.
机译:能量管理算法由于其有限的行驶范围而在电动汽车中起着至关重要的作用。为了使能量管理算法有效,我们应该尽可能准确地对车辆建模。即,不仅模型的结构应该准确,而且模型的参数也应该准确。在这项工作中,我们采用了电动汽车的模型,并根据行程数据对其中的三个参数进行了调整,即车辆质量,空气阻力系数和滚动阻力系数。为此,我们使用最小二乘法设置初始猜测值,然后使用梯度下降优化参数。据我们所知,这是同时估算这三个参数的第一项工作。从最小二乘和梯度下降的角度出发,我们的作品也是独一无二的。

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