2020
DOI: 10.3390/app11010315
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Traffic Information Enrichment: Creating Long-Term Traffic Speed Prediction Ensemble Model for Better Navigation through Waypoints

Abstract: Traffic speed prediction for a selected road segment from a short-term and long-term perspective is among the fundamental issues of intelligent transportation systems (ITS). During the course of the past two decades, many artefacts (e.g., models) have been designed dealing with traffic speed prediction. However, no satisfactory solution has been found for the issue of a long-term prediction for days and weeks using the vast spatial and temporal data. This article aims to introduce a long-term traffic speed pre… Show more

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Cited by 6 publications
(4 citation statements)
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References 48 publications
(67 reference statements)
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“…Simunek et al proposed a long-term traffic speed prediction ensemble model [18] using country-scale historic traffic data from Czech Republic roads. Their model combined parametric and nonparametric approaches in order to acquire a good-quality prediction that can enrich available real-time traffic information.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Simunek et al proposed a long-term traffic speed prediction ensemble model [18] using country-scale historic traffic data from Czech Republic roads. Their model combined parametric and nonparametric approaches in order to acquire a good-quality prediction that can enrich available real-time traffic information.…”
Section: Related Workmentioning
confidence: 99%
“…Table 2 summarizes the information about the related work documented in terms of the dataset used, the processing techniques that were used and the learning process objective. This analysis allows to perceive different forecasting objective [13,15,21,22], works that did not sufficiently detail the dataset used or the conditions of use [17,19] or were developed for very different road models [14,18], so our option was to test several deep learning methods in order to evaluate them in terms of accuracy and efficiency.…”
Section: Related Workmentioning
confidence: 99%
“…Uvedený modul je využit při predikci dopravního provozu na jednotlivých úsecích v mapě. Za tímto účelem byl vytvořen model pro dlouhodobou předpověď rychlosti provozu pro lepší navigaci přes průjezdní body, který byl představen v článku (Šimůnek & Smutný, 2021). Data pro tento model zahrnují údaje o dopravním provozu a údaje o počasí 4 v České republice z 20 504 silničních úsecích (37 002 km silnic).…”
Section: Problémová Situaceunclassified
“…Vacationers and residents have different travel patterns, and their impact on the overall traffic differs from day to day and it varies depending on the time of year. Although there is a vast amount of work on data analysis and traffic forecasting studies published, namely, [4][5][6][7][8][9][10][11][12][13], datasets are not in the public domain. Publicly available dataset repositories such as OpenDataMonitor, Kaggle, and MDPI Data, allow one to find several datasets related with traffic accidents, but none representing highway traffic, especially Portuguese traffic, behavior.…”
Section: Introductionmentioning
confidence: 99%