STCNN: A spatio-temporal convolutional neural network for long-term traffic prediction

Z He, CY Chow, JD Zhang - 2019 20th IEEE international …, 2019 - ieeexplore.ieee.org
… -term prediction is still limited. To this end, this paper focuses on solving the problem of
long-term traffic predictions. Existing traffic prediction models mainly include datadriven statistical …

Long-term traffic prediction based on lstm encoder-decoder architecture

Z Wang, X Su, Z Ding - IEEE Transactions on Intelligent …, 2020 - ieeexplore.ieee.org
… Therefore, we design a calibration layer to slightly adjust the prediction results. The goal of
this research is to develop an effective long-term traffic flow forecasting method, which we call …

[HTML][HTML] Deep-learning-based real-time road traffic prediction using long-term evolution access data

B Ji, EJ Hong - Sensors, 2019 - mdpi.com
… that road traffic speed information will be completely different from actual road traffic speeds.
… obtain more accurate predictions of traffic speeds on the road by using long-term evolution (…

[PDF][PDF] LSGCN: Long short-term traffic prediction with graph convolutional networks.

R Huang, C Huang, Y Liu, G Dai, W Kong - IJCAI, 2020 - researchgate.net
… As shown in Table 2, LSGCN performs well in both longterm and short-term prediction for …
ly in the long-term prediction of PeMSD4, both long-term prediction and short-term prediction of …

Short-term traffic prediction using long short-term memory neural networks

Z Abbas, A Al-Shishtawy… - … congress on big …, 2018 - ieeexplore.ieee.org
… In this work, we propose different models for short-term traffic prediction. For every model we
discuss the parameters that include: 1) The number of sensors a model covers for prediction

Quantifying the uncertainty in long-term traffic prediction based on PI-ConvLSTM network

Y Li, S Chai, G Wang, X Zhang… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
… a traffic prediction method based on a deep neural network for daily long-term traffic
prediction by considering the relationship between external factors and traffic flow [13]. Recently, …

Long-term mobile traffic forecasting using deep spatio-temporal neural networks

C Zhang, P Patras - Proceedings of the Eighteenth ACM International …, 2018 - dl.acm.org
… The results obtained demonstrate that, once trained, our solutions provide high-accuracy
long-term (10-hour long) traffic predictions, while operating with short observation intervals (2 …

Short-term traffic prediction using deep learning long short-term memory: Taxonomy, applications, challenges, and future trends

A Khan, MM Fouda, DT Do, A Almaleh… - IEEE Access, 2023 - ieeexplore.ieee.org
… the short-term road traffic forecast algorithms based on the long-short term memory (LSTM) …
for processing input data features towards a final traffic forecast. The operational strategies of …

Daily long-term traffic flow forecasting based on a deep neural network

L Qu, W Li, W Li, D Ma, Y Wang - Expert Systems with applications, 2019 - Elsevier
… This paper presents a traffic prediction method for … prediction method for daily long-term
traffic flow was presented based on mining the relationship between contextual factors and traffic

A joint temporal-spatial ensemble model for short-term traffic prediction

G Zheng, WK Chai, V Katos, M Walton - Neurocomputing, 2021 - Elsevier
… of short-term traffic flow prediction since accurate prediction of short-term traffic flow facilitates
timely traffic … The non-linearity of traffic data is most evident at longer term period when the …