首页> 外文期刊>Journal of Sensors >Online Accurate Estimation of the Wheel-Rail Adhesion Coefficient and Optimal Adhesion Antiskid Control of Heavy-Haul Electric Locomotives Based on Asymmetric Barrier Lyapunov Function
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Online Accurate Estimation of the Wheel-Rail Adhesion Coefficient and Optimal Adhesion Antiskid Control of Heavy-Haul Electric Locomotives Based on Asymmetric Barrier Lyapunov Function

机译:基于不对称障碍Lyapunov函数的重载电力机车轮轨附着系数在线精确估计及最优附着防滑控制

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This paper proposes a new scheme of online accurate estimation of wheel-rail adhesion coefficient and optimal adhesion antiskid control of heavy-haul electric locomotives (HHEL) based on sliding mode and asymmetric barrier Lyapunov function (ABLF) theory. To achieve optimal adhesion control of the HHEL, it is necessary to precisely estimate the wheel-rail adhesion coefficient. However, the adhesion coefficient is difficult to be measured with a conventional physical sensor. The first novelty of this paper is to design a smart adhesion coefficient sensor based on sliding mode observer (SMO). The perception of the adhesion coefficient is transformed into the observation of load torque of the traction motors, and the wheel-rail adhesion coefficient is further calculated by using the load torque observed value. The HHEL achieves maximum traction from operating in the optimal adhesion point. However, wheel skidding is most likely to occur at this point. According to the changing trend of the adhesive coefficient characteristic curve, the operating state of a locomotive can be divided into two regions the stable and skid regions. The second novelty of this paper is the adaptation of ABLF to guarantee that the HHEL operated at a stable region and the optimal adhesion antiskid control of HHEL is achieved. Finally, the simulation and experimental results verify the feasibility and effectiveness of the proposed method.
机译:提出了一种基于滑模和不对称障碍Lyapunov函数(ABLF)理论的在线精确估计重轨电力机车轮轨附着系数和最优附着防滑控制的新方案。为了实现HHEL的最佳附着力控制,必须精确估计轮轨附着力系数。但是,难以通过常规的物理传感器来测量粘附系数。本文的第一个新颖之处是设计一种基于滑模观察器(SMO)的智能粘附系数传感器。附着系数的感知被转换成对牵引电动机的负载转矩的观察,并且通过使用负载转矩观测值进一步计算轮轨附着系数。 HHEL在最佳粘附点下运行可获得最大牵引力。但是,此时极有可能发生打滑。根据粘着系数特性曲线的变化趋势,可将机车的运行状态分为稳定区和防滑区两个区域。本文的第二个新颖之处是对ABLF的修改,以确保HHEL在稳定的区域操作,并实现了HHEL的最佳附着防滑控制。最后,仿真和实验结果验证了该方法的可行性和有效性。

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