A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas

Low temperatures and icing in winter are significant factors that severely affect highway safety and traffic mobility. To enhance the precision and reliability of real-time winter road surface temperature (RST) prediction, a short-term prediction model is developed that harnesses both feature select...

Full description

Saved in:
Bibliographic Details
Main Authors: Zhang, Meng, Guo, Hua, Li, Jing-Yang, Li, Li, Zhu, Feng
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2025
Subjects:
Online Access:https://hdl.handle.net/10356/182118
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-182118
record_format dspace
spelling sg-ntu-dr.10356-1821182025-01-10T15:35:18Z A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas Zhang, Meng Guo, Hua Li, Jing-Yang Li, Li Zhu, Feng School of Civil and Environmental Engineering Engineering Intelligent transportation system Road surface temperature prediction Low temperatures and icing in winter are significant factors that severely affect highway safety and traffic mobility. To enhance the precision and reliability of real-time winter road surface temperature (RST) prediction, a short-term prediction model is developed that harnesses both feature selection and deep learning. Leveraging meteorological data from a mountain highway in Yunnan, China, the key environmental variables affecting road surface temperature were first extracted using a random forest (RF) model for feature selection. These features were then combined with RST data to construct multiple groups of input variable combinations for the prediction model. A short-term prediction model with a 10-minute update frequency was built using a long short-term memory neural network (LSTM), namely RF-LSTM. The best input variable combination and preset parameters for the prediction model were determined through comparative testing with prevalent machine learning models, and the transferability of the prediction model was verified. The results showed that the best input variable combination for the RF-LSTM prediction model was road surface temperature and air temperature. The model recognised that the short-term RST was affected by long and short-term memory characteristics within a two-hour timeframe. When compared to the RF model, backpropagation (BP) neural network model and the standard LSTM model, the proposed model reduces prediction errors by 59.15%, 31.10% and 20.26%, respectively, while the prediction accuracy is 99.13% within an error margin of ±0.5℃. On the verification dataset, the proposed model maintains its time transferability with an average prediction absolute error of 0.0478. In all, the proposed model not only achieves a higher level of precision in real-time RST predictions but also ensures a more consistent and reliable performance under the challenging conditions of high altitude and mountainous terrain, offering enhanced support for traffic safety and road maintenance decision-making. Published version This work was jointly supported by the National Key Research and Development Program of China (2019YFB1600100), the Science and Technology Innovation Program of the Department of Transportation, Yunnan Province (No. 2023-83-01) and the Science and Technology Program of Yunnan Science Research Institute of Communication Co., Ltd (No. JKYZLX-2023-12). 2025-01-08T07:18:25Z 2025-01-08T07:18:25Z 2024 Journal Article Zhang, M., Guo, H., Li, J., Li, L. & Zhu, F. (2024). A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas. Promet - Traffic & Transportation, 36(5), 958-972. https://dx.doi.org/10.7307/ptt.v36i5.541 0353-5320 https://hdl.handle.net/10356/182118 10.7307/ptt.v36i5.541 2-s2.0-85210162015 5 36 958 972 en Promet - Traffic & Transportation © 2024 Meng ZHANG, Hua GUO, Jing-yang LI, Li LI, Feng ZHU. This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Intelligent transportation system
Road surface temperature prediction
spellingShingle Engineering
Intelligent transportation system
Road surface temperature prediction
Zhang, Meng
Guo, Hua
Li, Jing-Yang
Li, Li
Zhu, Feng
A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
description Low temperatures and icing in winter are significant factors that severely affect highway safety and traffic mobility. To enhance the precision and reliability of real-time winter road surface temperature (RST) prediction, a short-term prediction model is developed that harnesses both feature selection and deep learning. Leveraging meteorological data from a mountain highway in Yunnan, China, the key environmental variables affecting road surface temperature were first extracted using a random forest (RF) model for feature selection. These features were then combined with RST data to construct multiple groups of input variable combinations for the prediction model. A short-term prediction model with a 10-minute update frequency was built using a long short-term memory neural network (LSTM), namely RF-LSTM. The best input variable combination and preset parameters for the prediction model were determined through comparative testing with prevalent machine learning models, and the transferability of the prediction model was verified. The results showed that the best input variable combination for the RF-LSTM prediction model was road surface temperature and air temperature. The model recognised that the short-term RST was affected by long and short-term memory characteristics within a two-hour timeframe. When compared to the RF model, backpropagation (BP) neural network model and the standard LSTM model, the proposed model reduces prediction errors by 59.15%, 31.10% and 20.26%, respectively, while the prediction accuracy is 99.13% within an error margin of ±0.5℃. On the verification dataset, the proposed model maintains its time transferability with an average prediction absolute error of 0.0478. In all, the proposed model not only achieves a higher level of precision in real-time RST predictions but also ensures a more consistent and reliable performance under the challenging conditions of high altitude and mountainous terrain, offering enhanced support for traffic safety and road maintenance decision-making.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Zhang, Meng
Guo, Hua
Li, Jing-Yang
Li, Li
Zhu, Feng
format Article
author Zhang, Meng
Guo, Hua
Li, Jing-Yang
Li, Li
Zhu, Feng
author_sort Zhang, Meng
title A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
title_short A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
title_full A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
title_fullStr A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
title_full_unstemmed A deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
title_sort deep learning approach for enhanced real-time prediction of winter road surface temperatures in high-altitude mountain areas
publishDate 2025
url https://hdl.handle.net/10356/182118
_version_ 1821237118030053376