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arxiv: 1402.7136 · v1 · pith:JWXBGTSWnew · submitted 2014-02-28 · 💻 cs.SY · cs.NE· cs.SY

Neural Network Approach to Railway Stand Lateral Skew Control

classification 💻 cs.SY cs.NEcs.SY
keywords neuralcontrolrailwaystandexperimentallateralskewapproach
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The paper presents a study of an adaptive approach to lateral skew control for an experimental railway stand. The preliminary experiments with the real experimental railway stand and simulations with its 3-D mechanical model, indicates difficulties of model-based control of the device. Thus, use of neural networks for identification and control of lateral skew shall be investigated. This paper focuses on real-data based modeling of the railway stand by various neural network models, i.e; linear neural unit and quadratic neural unit architectures. Furthermore, training methods of these neural architectures as such, real-time-recurrent-learning and a variation of back-propagation-through-time are examined, accompanied by a discussion of the produced experimental results.

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