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Sliding Mode Observer and Long-Range-Prediction-Based, Fault-Tolerant Control of a Steer-By-Wire-Equipped Vehicle

机译:滑模观测器和基于远程预测的,容错控制转向绕线的车辆

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This paper presents a nonlinear observer and long-range-prediction-based analytical redundancy for a Steer-By-Wire (SBW) system. A Sliding Mode Observer was designed to estimate the vehicle steering angle by using the combined linear vehicle model, SBW system, and the yaw rate. The estimated steering angle along with the current input was used to predict the steering angle at various prediction horizons via a long-range-prediction method. This analytical redundancy methodology was utilized to reduce the total number of redundant road-wheel angle (RWA) sensors, while maintaining a high level of reliability. The Fault Detection, Isolation and Accommodation (FDIA) algorithm was developed using a majority voting scheme, which was then used to detect faulty sensor(s) in order to maintain safe driveability. The proposed observer-prediction-based FDIA algorithms as well as the linearized vehicle model were modeled in MATLAB-SIMULINK. Three different fault types were used to evaluate the effectiveness of the proposed algorithms: transient, persistent, and incipient faults. Simulation results show that the faulty sensor detection time decreases with the increase of prediction horizon illustrating advantages of the predictive analytical redundancy-based algorithms against single point failures for all fault types.
机译:本文提出了一种非线性观察者和基于远程预测的基于远程预测的用于转向线(SBW)系统的分析冗余。通过使用组合的线性车辆模型,SBW系统和横摆率,设计了滑动模式观察者来估计车辆转向角度。估计的转向角以及电流输入用于通过远程预测方法预测各种预测视野的转向角。这种分析冗余方法用于减少冗余道路角(RWA)传感器的总数,同时保持高水平的可靠性。使用大多数投票方案开发了故障检测,隔离和容纳(FDIA)算法,然后使用该算法来检测故障传感器以保持安全可驱动性。基于观察者预测的FDIA算法以及线性化车型模型在Matlab-Simulink中进行了建模。使用三种不同的故障类型来评估所提出的算法的有效性:瞬态,持久性和初始故障。仿真结果表明,由于预测地平线的增加,仿真传感器检测时间随着预测分析冗余的算法而对所有故障类型的单点故障的算法的优势增加降低。

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