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Gradient descent based classification of road induced disturbances for active suspension systems

机译:基于梯度下降的道路诱导干扰为主动悬架系统的分类

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摘要

Active suspensions are designed to meet conflicting performance requirements such as ride comfort and safety. Achievable ride comfort performance without reaching the limits of road holding and suspension bottoming, is limited by the road disturbance roughness level. In order to obtain best ride comfort performance against different road induced disturbances, it is essential to switch among different controllers according to road roughness level. In this study, a classification algorithm based on logistic regression trained by gradient descent was presented to switch the controller with respect to road disturbance values. The classification algorithm with logistic regression model is trained by the road disturbance data provided by standards. A disturbance observer to estimate the road induced disturbance is designed, then a sigmoid activation function was proposed to change the controller by using only the road disturbance data. The suggested algorithm was tested on the road induced disturbance produced by observer. It was proved that the algorithm without complexity classified the road induced disturbance with the one hyperplane reducing the overfitting condition in training process. As a result, the proposed algorithm can be efficiently used to detect the controller switching instants in real time application.
机译:主动悬浮液旨在满足相互冲突的性能要求,如乘坐舒适和安全性。可实现的乘坐舒适性能而不达到道路持有和悬架底层的限制,受到道路干扰粗糙度水平的限制。为了获得对不同道路诱导干扰的最佳舒适性能,必须根据道路粗糙度水平在不同的控制器之间切换。在该研究中,提出了一种基于梯度下降训练的逻辑回归的分类算法,以改进控制器相对于道路干扰值。具有Logistic回归模型的分类算法由标准提供的道路干扰数据训练。设计了估计道路诱导干扰的干扰观察者,然后提出了一种仅使用道路干扰数据来改变控制器的符切激活功能。通过观察者生产的道路诱导干扰测试了建议的算法。事实证明,没有复杂性的算法对道路引起的扰动进行了一种训练过程中的一种过平片。结果,可以有效地使用所提出的算法来实时应用中检测控制器切换时刻。

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