STUDY OF METHODS FOR PREDICTING THE RECEIPT OF CONTAINER FLOWS FROM SHIPPERS TO THE RAILWAY TERMINAL STATION
DOI:
https://doi.org/10.30888/2663-5712.2022-16-01-042Keywords:
railway terminal stations, road transport, container flows.Abstract
The paper considers a tool, a neural network of the LTSM architecture, which is quite appropriate to use for forecasting the intensity of random flows, which represent the processes of the arrival of containers at railway terminal stations in the systemMetrics
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