Data-based fault-tolerant control of high-speed trains with traction/braking notch nonlinearities and actuator failures.

Qi Song, Yong-Duan Song
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引用次数: 118

Abstract

This paper investigates the position and velocity tracking control problem of high-speed trains with multiple vehicles connected through couplers. A dynamic model reflecting nonlinear and elastic impacts between adjacent vehicles as well as traction/braking nonlinearities and actuation faults is derived. Neuroadaptive fault-tolerant control algorithms are developed to account for various factors such as input nonlinearities, actuator failures, and uncertain impacts of in-train forces in the system simultaneously. The resultant control scheme is essentially independent of system model and is primarily data-driven because with the appropriate input-output data, the proposed control algorithms are capable of automatically generating the intermediate control parameters, neuro-weights, and the compensation signals, literally producing the traction/braking force based upon input and response data only--the whole process does not require precise information on system model or system parameter, nor human intervention. The effectiveness of the proposed approach is also confirmed through numerical simulations.

基于数据的高速列车牵引/制动缺口非线性和执行器故障容错控制。
研究了多车联轴器连接高速列车的位置和速度跟踪控制问题。建立了反映相邻车辆间非线性和弹性碰撞、牵引/制动非线性和驱动故障的动力学模型。神经自适应容错控制算法的开发是为了同时考虑各种因素,如输入非线性、执行器故障和系统中列车力的不确定影响。由此产生的控制方案基本上独立于系统模型,主要是数据驱动的,因为有了适当的输入输出数据,所提出的控制算法能够自动生成中间控制参数、神经权重和补偿信号,实际上仅根据输入和响应数据产生牵引力/制动力——整个过程不需要系统模型或系统参数的精确信息。也不是人为干预。通过数值模拟验证了该方法的有效性。
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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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
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2
审稿时长
8.7 months
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