Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section

This paper reports a method for predicting the expected time of arrival (ETA) of a cargo dispatch taking into consideration determining the duration at which a freight train travels along a railroad section where trains move not complying with a departure schedule. A characteristic feature of railro...

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Main Authors: Andrii Prokhorchenko, Artem Panchenko, Larysa Parkhomenko, Halina Nesterenko, Mykhailo Muzykin, Halyna Prokhorchenko, Alina Kolisnyk
Format: Article
Language:English
Published: PC Technology Center 2019-06-01
Series:Eastern-European Journal of Enterprise Technologies
Subjects:
Online Access:http://journals.uran.ua/eejet/article/view/170174
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spelling doaj-f48041f7e555425db78b7e547cfa6b422020-11-25T00:58:15ZengPC Technology CenterEastern-European Journal of Enterprise Technologies1729-37741729-40612019-06-0133 (99)303810.15587/1729-4061.2019.170174170174Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway sectionAndrii Prokhorchenko0Artem Panchenko1Larysa Parkhomenko2Halina Nesterenko3Mykhailo Muzykin4Halyna Prokhorchenko5Alina Kolisnyk6Ukrainian State University of Railway Transport Feuerbach sq., 7, Kharkiv, Ukraine, 61050V. N. Karazin Kharkiv National University Svobody sq., 4, Kharkiv, Ukraine, 61022Ukrainian State University of Railway Transport Feuerbach sq., 7, Kharkiv, Ukraine, 61050Dnipro National University of Railway Transport named after academician V. Lazaryan Lazariana str., 2, Dnipro, Ukraine, 49010Dnipro National University of Railway Transport named after academician V. Lazaryan Lazariana str., 2, Dnipro, Ukraine, 49010Ukrainian State University of Railway Transport Feuerbach sq., 7, Kharkiv, Ukraine, 61050Ukrainian State University of Railway Transport Feuerbach sq., 7, Kharkiv, Ukraine, 61050This paper reports a method for predicting the expected time of arrival (ETA) of a cargo dispatch taking into consideration determining the duration at which a freight train travels along a railroad section where trains move not complying with a departure schedule. A characteristic feature of railroads with such a traffic system is the difficulty in predicting the stages of a transportation process, which necessitates the development of effective methods of forecasting. Based on correlation analysis, we have determined the dependence of the general macro-characteristics of train flow and individual parameters of a freight train on the duration of its movement along a section. It has been proposed to represent the dependence of predicted duration of train movement along a railroad section on the following factors: traffic intensity and density along a section, the proportion of passenger trains in total train flows, the length of a train and its gross weight. All experimental studies are based on actual data on the operation of the distance Osnova-Lyubotyn at the railroad network AO Ukrzaliznytsya. Based on a comparative analysis, using the indicators for accuracy and adequacy of several regression methods to predict ETA of cargo dispatch, we have chosen the regression model based on an artificial neural network MLP. To derive the MLP structure, a cross-validation method has been applied, which implies the validation of a mathematical model reliability based on the criteria of accuracy MAE and adequacy ‒ F-test. The structure of MLP has been obtained, which consists of five hidden layers. We predicted the time that it would take for a train to travel in facing direction along the Osnova-Lyubotyn section. For a given projection, the value for MAE was 0.0845, which is a rather high accuracy for this type of problems, and confirms the effectiveness of MLP application to solve the task on predicting a cargo dispatch ETA. The current study provides a possibility to design in the future an automated system for predicting a cargo dispatch ETA for a mixed-traffic railroad system in which freight trains depart not complying with a regulatory schedule.http://journals.uran.ua/eejet/article/view/170174railroad networkexpected time of arrivalartificial neural network
collection DOAJ
language English
format Article
sources DOAJ
author Andrii Prokhorchenko
Artem Panchenko
Larysa Parkhomenko
Halina Nesterenko
Mykhailo Muzykin
Halyna Prokhorchenko
Alina Kolisnyk
spellingShingle Andrii Prokhorchenko
Artem Panchenko
Larysa Parkhomenko
Halina Nesterenko
Mykhailo Muzykin
Halyna Prokhorchenko
Alina Kolisnyk
Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
Eastern-European Journal of Enterprise Technologies
railroad network
expected time of arrival
artificial neural network
author_facet Andrii Prokhorchenko
Artem Panchenko
Larysa Parkhomenko
Halina Nesterenko
Mykhailo Muzykin
Halyna Prokhorchenko
Alina Kolisnyk
author_sort Andrii Prokhorchenko
title Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
title_short Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
title_full Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
title_fullStr Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
title_full_unstemmed Forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
title_sort forecasting the estimated time of arrival for a cargo dispatch delivered by a freight train along a railway section
publisher PC Technology Center
series Eastern-European Journal of Enterprise Technologies
issn 1729-3774
1729-4061
publishDate 2019-06-01
description This paper reports a method for predicting the expected time of arrival (ETA) of a cargo dispatch taking into consideration determining the duration at which a freight train travels along a railroad section where trains move not complying with a departure schedule. A characteristic feature of railroads with such a traffic system is the difficulty in predicting the stages of a transportation process, which necessitates the development of effective methods of forecasting. Based on correlation analysis, we have determined the dependence of the general macro-characteristics of train flow and individual parameters of a freight train on the duration of its movement along a section. It has been proposed to represent the dependence of predicted duration of train movement along a railroad section on the following factors: traffic intensity and density along a section, the proportion of passenger trains in total train flows, the length of a train and its gross weight. All experimental studies are based on actual data on the operation of the distance Osnova-Lyubotyn at the railroad network AO Ukrzaliznytsya. Based on a comparative analysis, using the indicators for accuracy and adequacy of several regression methods to predict ETA of cargo dispatch, we have chosen the regression model based on an artificial neural network MLP. To derive the MLP structure, a cross-validation method has been applied, which implies the validation of a mathematical model reliability based on the criteria of accuracy MAE and adequacy ‒ F-test. The structure of MLP has been obtained, which consists of five hidden layers. We predicted the time that it would take for a train to travel in facing direction along the Osnova-Lyubotyn section. For a given projection, the value for MAE was 0.0845, which is a rather high accuracy for this type of problems, and confirms the effectiveness of MLP application to solve the task on predicting a cargo dispatch ETA. The current study provides a possibility to design in the future an automated system for predicting a cargo dispatch ETA for a mixed-traffic railroad system in which freight trains depart not complying with a regulatory schedule.
topic railroad network
expected time of arrival
artificial neural network
url http://journals.uran.ua/eejet/article/view/170174
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