基于驾驶态势模型的卡车侧翻预测方法

M. Bouteldja, V. Cerezo
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引用次数: 1

摘要

提出了一种基于简单驾驶情景模型的货车侧翻预测方法。传统的侧翻预测方法一般采用整车模型。然而,由于模型参数的不确定性,在某些情况下无法触发侧翻情况,这对卡车驾驶员的安全构成了严重威胁。多模型方法(每一种驾驶情况都用一个简化模型表示)可以降低卡车模型的复杂性,同时也可以关注请求的动态。无论考虑何种情况,都采用滑模观测技术重构未知动态状态。计算得到的信息可以根据一个准则来检测车辆的侧翻危险情况。通过仿真对该方法的性能进行了评价。仿真结果与商用卡车动力学模拟器(PROSPER)进行了比较。
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An advanced methodology for truck rollover prediction based on driving situation model
This paper proposes a new method for truck rollover prediction based on simple driving situation models. The traditional methods for rollover prediction generally use complete truck models. Nevertheless, rollover situations are not tripped in some cases because of uncertainties on the model parameters, which entail serious safety threat for trucks drivers. The multi-model approach (every driving situation is represented by a simplified model) can be an alternative to reduce the complexity of truck models and at the same time to focus on the request dynamics. Whatever the situation considered, the unknown dynamic state is reconstructed by using sliding mode observation technique. The computed information leads to detect rollover risky situation on the basis of a criterion. The performance of the method developed is evaluated by simulation. The simulation results are compared to a commercial simulator of truck dynamic (PROSPER).
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