Selecting an optimal model for forecasting the volumes of railway goods transportation
- Authors: Rudakov K.V.1, Strizhov V.V.1, Kashirin D.O.1, Kuznetsov M.P.2, Motrenko A.P.2, Stenina M.M.2
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Affiliations:
- Dorodnicyn Computing Centre
- Moscow Institute of Physics and Technology
- Issue: Vol 78, No 1 (2017)
- Pages: 75-87
- Section: System Analysis and Operations Research
- URL: https://journal-vniispk.ru/0005-1179/article/view/150516
- DOI: https://doi.org/10.1134/S0005117917010064
- ID: 150516
Cite item
Abstract
Consideration was given to selection of an optimal model of short-term forecasting of the volumes of railway transport from the historical and exogenous time series. The historical data carry information about the transportation volumes of various goods between pairs of stations. It was assumed that the result of selecting an optimal model depends on the level of aggregation in the types of goods, departure and destination points, and time. Considered were the models of vector autoregression, integrated model of the autoregressive moving average, and a nonparametric model of histogram forecasting. Criteria for comparison of the forecasts on the basis of distances between the errors of model forecasts were proposed. They are used to analyze the models with the aim of determining the admissible requests for forecast, the actual forecast depth included.
About the authors
K. V. Rudakov
Dorodnicyn Computing Centre
Author for correspondence.
Email: rudakov@ccas.ru
Russian Federation, Moscow
V. V. Strizhov
Dorodnicyn Computing Centre
Email: rudakov@ccas.ru
Russian Federation, Moscow
D. O. Kashirin
Dorodnicyn Computing Centre
Email: rudakov@ccas.ru
Russian Federation, Moscow
M. P. Kuznetsov
Moscow Institute of Physics and Technology
Email: rudakov@ccas.ru
Russian Federation, Dolgoprudnyi
A. P. Motrenko
Moscow Institute of Physics and Technology
Email: rudakov@ccas.ru
Russian Federation, Dolgoprudnyi
M. M. Stenina
Moscow Institute of Physics and Technology
Email: rudakov@ccas.ru
Russian Federation, Dolgoprudnyi
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