Wheel-rail adhesion control model by integrating neural network and direct torque control during traction under low adhesion

Zhangpeng Ni, Wu Bing, Guangwen Xiao, Shen Quan, Linquan Yao
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Abstract

In the realm of train traction, achieving optimal utilization of wheel-rail adhesion is of utmost importance. The motor’s efficiency plays a significant role in this process. However, there has been limited research on adhesion optimization for motor control in recent years. Therefore, this paper proposes a neural network controller based on the Levenberg–Marquardt (LM) algorithm to improve adaptive regulation ability. This approach integrates the direct torque control (DTC) method, which utilizes a three-phase asynchronous motor to output torque and speed. By integrating these techniques, we mitigate the significant slip occurrence during complex low-adhesion scenarios. MATLAB/Simulink simulations are conducted using three different rails: dry, greasy, and wet, each with distinct characteristics. The obtained results demonstrate that the proposed strategy optimizes adhesion utilization while mitigating excessive slip, and exhibits excellent robustness and self-regulation capabilities throughout the adhesion optimization process.
低附着力牵引过程中神经网络与直接扭矩控制相结合的轮轨附着力控制模型
在列车牵引领域,实现轮轨附着力的最佳利用至关重要。电机的效率在这一过程中发挥着重要作用。然而,近年来针对电机控制的附着力优化研究十分有限。因此,本文提出了一种基于 Levenberg-Marquardt (LM) 算法的神经网络控制器,以提高自适应调节能力。这种方法整合了直接转矩控制(DTC)方法,利用三相异步电机输出转矩和速度。通过整合这些技术,我们减轻了在复杂的低附着力情况下出现的显著滑移。我们使用三种不同的轨道进行了 MATLAB/Simulink 仿真:干燥、油腻和潮湿,每种轨道都具有不同的特性。结果表明,所提出的策略既能优化附着力利用率,又能减少过度滑移,并且在整个附着力优化过程中表现出卓越的鲁棒性和自我调节能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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