车辆质量估算的纵向、纵向和横向数据有效组合

Younesse El Mrhasli, B. Monsuez, X. Mouton
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引用次数: 0

摘要

车辆质量的实时信息在一些应用中很有价值,主要是主动安全系统设计和能耗优化。这项工作描述了一种在静态和动态条件下进行质量估计的新策略。首先,当车辆启动时,通过观察安装在后部的一个悬架偏转传感器的变化来给出初始估计。然后,根据条件和过滤的纵向和横向运动对估计进行细化。在本研究中,我们建议将这些提取的事件用于两种不同的算法,即递归最小二乘法和先验递归贝叶斯推理。那就是用确定性和统计意义来表达结果。模拟和实验测试都表明,我们的方法包含了文献中各种工作的优点,特别是对电阻负载的鲁棒性,快速收敛和最小的仪器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Combination of Vertical, Longitudinal and Lateral Data for Vehicle Mass Estimation
Real-time knowledge of the vehicle mass is valuable for several applications, mainly: active safety systems design and energy consumption optimization. This work describes a novel strategy for mass estimation in static and dynamic conditions. First, when the vehicle is powered-up, an initial estimation is given by observing the variations of one suspension deflection sensor mounted on the rear. Then, the estimation is refined based on conditioned and filtered longitudinal and lateral motions. In this study, we suggest using these extracted events on two different algorithms, namely: the recursive least squares and the prior-recursive Bayesian inference. That is to express the results in a deterministic and statistical sense. Both simulations and experimental tests show that our approach encompasses the benefits of various works in the literature, preeminently, robustness to resistive loads, fast convergence, and minimal instrumentation.
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