首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >A study of a Kalman filter active vehicle suspension system using correlation of front and rear wheel road inputs
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A study of a Kalman filter active vehicle suspension system using correlation of front and rear wheel road inputs

机译:基于前后轮道路输入相关性的卡尔曼滤波主动车辆悬架系统研究

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摘要

Based on a half-vehicle model, an algorithm is proposed for a Kalman filter optimal active vehicle suspension system using the correlation between front and rear wheel road inputs. In this paper, two main issues were investigated, i.e. the estimation accuracy of the Kalman filter for state variables, and the potential improvements from wheelbase preview. Simulations showed good estimations from the state observer. However, if the wheelbase preview algorithm is incorporated, the estimation accuracy for the additional states significantly decreases as vehicle speed and the corresponding measurement noises increase. Significant benefits from wheelbase preview were further proved, and the available performance improvements of the rear wheel station could be up to 35 per cent. Because of the feasibility and effectiveness of the proposed algorithm, and no additional cost for measurements and sensing needs, wheelbase preview can be a promising algorithm for Kalman filter active suspension system designs.
机译:基于半车辆模型,提出了一种利用前后轮输入之间的相关性的卡尔曼滤波器最优主动车辆悬架系统算法。本文研究了两个主要问题,即状态变量的Kalman滤波器的估计精度以及轴距预览的潜在改进。模拟显示了状态观察器的良好估计。但是,如果合并了轴距预览算法,则附加状态的估计精度会随着车速和相应测量噪声的增加而大大降低。进一步证明了轴距预告的显着优势,后轮驻地的可用性能提升可高达35%。由于所提出算法的可行性和有效性,并且没有测量和传感需求的额外成本,轴距预览对于Kalman滤波器主动悬架系统设计而言是一种很有前途的算法。

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