2018
DOI: 10.1177/0954409718765053
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Use of artificial neural networks for the prediction of time-dependent air speed variation in metro stations

Abstract: In this study, the time-dependent, induced air speeds at critical sections of underground metro stations are assessed using a novel one-dimensional data-driven approach. For this purpose, three artificial neural networks are used, each trained for the most basic configuration of a single train moving in a single tunnel. The first two are trained to provide the maximum and time averaged values of the induced air speeds while the train is moving inside the approach tunnel or the station. The third one is used to… Show more

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Cited by 3 publications
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