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Supervisory predictive control for wheel slip prevention and tracking of desired speed profile in electric trains

机译:车轮滑动预防和跟踪电动火车速度轮廓的监控预测控制

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This article presents a supervisory model predictive control system to track the desired speed profile and simultaneously prevent the wheels from slipping in acceleration mode of electrical trains. The proposed control strategy employs field-oriented control (FOC) to control the angular speed of the wheel. Model predictive control (MPC) is used to control the longitudinal velocity of the train to track the desired speed profile and prevent the wheels from slipping by generating the desired angular velocity for the FOC. Since, it is not possible to control the longitudinal velocity and slip ratio independently, a fuzzy supervisor system is proposed to control the train dynamics at the appropriate operating point. A method is presented to estimate train longitudinal velocity and the adhesion coefficient between the wheels and rail surface. These components are vital to implement the proposed method in a real train control system. The closed loop stability of the control system has been studied. Simulations were run under different friction coefficients corresponding to real train parameters to verify the effectiveness of the proposed re-adhesion control system. The simulation results have been compared with the results of other researches to show the feasibility and validity of the presented approach. (C) 2020 Published by Elsevier Ltd on behalf of ISA.
机译:本文介绍了监控模型预测控制系统,以跟踪所需的速度轮廓,并同时防止车轮在电动训火车的加速度模式下滑动。所提出的控制策略采用面向现场的控制(FOC)来控制轮的角速度。模型预测控制(MPC)用于控制列车的纵向速度,以跟踪所需的速度轮廓并通过为FOC产生所需的角速度来防止车轮滑动。由于,不可能独立地控制纵向速度和滑移比,提出了一种模糊的监控系统来控制适当的操作点的列车动态。提出了一种方法来估计车轮和轨道表面之间的火车纵向速度和粘附系数。这些组件在实际列车控制系统中实现所提出的方法至关重要。研究了控制系统的闭环稳定性。在与真正的火车参数相对应的不同摩擦系数下进行模拟,以验证所提出的再粘附控制系统的有效性。将模拟结果与其他研究结果进行了比较,以表明所提出的方法的可行性和有效性。 (c)2020由elsevier有限公司发布的ISA。

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