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Prediction Study on Anti-Slide Control of Railway Vehicle Ba...

Prediction Study on Anti-Slide Control of Railway Vehicle Based on RBF Neural Networks

作     者:Lijun Yang Jimin Zhang 

作者单位:College of Automotive Engineering Tongji University Railway &Urban Mass Transit Research Institute Tongji University 

会议名称:《2012 International Conference on Solid State Devices and Materials Science(SSDMS 2012)》

会议日期:2012年

学科分类:08[工学] 082304[工学-载运工具运用工程] 080204[工学-车辆工程] 0802[工学-机械工程] 0823[工学-交通运输工程] 

关 键 词:Railway vehicle Brake anti-slide control RBF neural network K-means clustering algorithm Multi-step prediction 

摘      要:While railway vehicle braking, Anti-slide control system will detect operating status of each wheel-sets e.g. speed difference and deceleration etc. Once the detected value on some wheel-set is over pre-defined threshold, brake effort on such wheel-set will be adjusted automatically to avoid blocking. Such method takes effect on guarantee safety operation of vehicle and avoid wheel-set flatness, however it cannot adapt itself to the rail adhesion variation. While wheel-sets slide, the operating status is chaotic time series with certain law, and can be predicted with the law and experiment data in certain time. The predicted values can be used as the input reference signals of vehicle anti-slide control system, to judge and control the slide status of wheel-sets. In this article, the RBF neural networks is taken to predict wheel-set slide status in multi-step with weight vector adjusted based on online self-adaptive algorithm, and the center & normalizing parameters of active function of the hidden unit of RBF neural networks’ hidden layer computed with K-means clustering algorithm. With multi-step prediction simulation, the predicted signal with appropriate precision can be used by anti-slide system to trace actively and adjust wheel-set slide tendency, so as to adapt to wheel-rail adhesion variation and reduce the risk of wheel-set blocking.

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