Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set

Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the randomness of the event. Due to the lack of a solid approach to short-term traffic prediction, the researchers are still working on novel approaches. This study aims to develop an algorithm that dynam...

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Main Author: Erdem Doğan
Format: Article
Language:English
Published: University of Zagreb, Faculty of Transport and Traffic Sciences 2020-02-01
Series:Promet (Zagreb)
Subjects:
Online Access:https://traffic.fpz.hr/index.php/PROMTT/article/view/3154
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spelling doaj-c8c9cc487cd4454b87b6db4204686ff22020-11-25T02:36:59ZengUniversity of Zagreb, Faculty of Transport and Traffic SciencesPromet (Zagreb)0353-53201848-40692020-02-01321657810.7307/ptt.v32i1.31543154Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected SetErdem Doğan0Kırıkkale University, Engineering FacultyForecasting short-term traffic flow using historical data is a difficult goal to achieve due to the randomness of the event. Due to the lack of a solid approach to short-term traffic prediction, the researchers are still working on novel approaches. This study aims to develop an algorithm that dynamically updates the training set of models in order to make more accurate predictions. For this purpose, an algorithm called Periodic Clustering and Prediction (PCP) has been developed for use in short-term traffic forecasting. In this study, PCP was used to improve Artificial Neural Networks (ANN) predictive performance by improving the training set of ANN to predict short-term traffic flow using selected clusters. A large amount of traffic data collected from the US and UK motorways was used to determine the PCP ability to increase the ANN performance. The robustness of the proposed approach was determined by the performance measures used in the literature and the mean prediction errors of PCP were significantly below other approaches. In addition, the studies showed that the percentage errors of PCP predictions decreased in response to increasing traffic flow values. Considering the obtained positive results, this method can be used in real-time traffic control systems and in different areas needed.https://traffic.fpz.hr/index.php/PROMTT/article/view/3154traffic predictiontraining setshort-term predictionk-meansartificial neural networks
collection DOAJ
language English
format Article
sources DOAJ
author Erdem Doğan
spellingShingle Erdem Doğan
Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
Promet (Zagreb)
traffic prediction
training set
short-term prediction
k-means
artificial neural networks
author_facet Erdem Doğan
author_sort Erdem Doğan
title Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
title_short Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
title_full Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
title_fullStr Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
title_full_unstemmed Short-term Traffic Flow Prediction Using Artificial Intelligence with Periodic Clustering and Elected Set
title_sort short-term traffic flow prediction using artificial intelligence with periodic clustering and elected set
publisher University of Zagreb, Faculty of Transport and Traffic Sciences
series Promet (Zagreb)
issn 0353-5320
1848-4069
publishDate 2020-02-01
description Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the randomness of the event. Due to the lack of a solid approach to short-term traffic prediction, the researchers are still working on novel approaches. This study aims to develop an algorithm that dynamically updates the training set of models in order to make more accurate predictions. For this purpose, an algorithm called Periodic Clustering and Prediction (PCP) has been developed for use in short-term traffic forecasting. In this study, PCP was used to improve Artificial Neural Networks (ANN) predictive performance by improving the training set of ANN to predict short-term traffic flow using selected clusters. A large amount of traffic data collected from the US and UK motorways was used to determine the PCP ability to increase the ANN performance. The robustness of the proposed approach was determined by the performance measures used in the literature and the mean prediction errors of PCP were significantly below other approaches. In addition, the studies showed that the percentage errors of PCP predictions decreased in response to increasing traffic flow values. Considering the obtained positive results, this method can be used in real-time traffic control systems and in different areas needed.
topic traffic prediction
training set
short-term prediction
k-means
artificial neural networks
url https://traffic.fpz.hr/index.php/PROMTT/article/view/3154
work_keys_str_mv AT erdemdogan shorttermtrafficflowpredictionusingartificialintelligencewithperiodicclusteringandelectedset
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