Abstract
Inclement weather and environmental factors impact traffic operations resulting in travel delays and a reduction in travel time reliability. Precipitation is an example of an environmental factor that affects travel conditions, including traffic speed. While Intelligent Transportation Systems services aim to proactively mitigate congestion on roadways, these services are often not sensitive to weather conditions. This paper investigates the application of high-resolution weather data in improving the performance of proactive transportation management models and proposes short-term speed prediction models that fuse real-time high-resolution weather surveillance radar data with traffic stream data to conduct spatial and temporal prediction of the speed of roadway segments. Extreme gradient boosting weather-aware speed prediction models were developed for a 7-km segment of Interstate 270 in St. Louis, MO, USA. The performance of the weather-aware models was compared with the performance of weather-insensitive speed prediction models that did not take precipitation into account. The results indicated that in the majority of instances, the weather-aware models outperformed the weather-insensitive models. The extreme gradient boosting models were compared with the K-nearest neighbors algorithm and feed-forward neural network models. The extreme gradient boosting model consistently outperformed the other two methods. In addition to speed prediction models, van Aerde speed-flow traffic stream models were developed for rain and no-rain conditions to study the impact of precipitation on the traffic stream across the corridor. Results indicated that the impact of precipitation is not identical across the corridor, which was mirrored in the results obtained from weather-aware speed prediction models.
Subject
Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction
Reference31 articles.
1. Akallouch, M., Akallouch, O., Fardousse, K., Bouhoute, A., and Berrada, I. (2022). Prediction and Privacy Scheme for Traffic Flow Estimation on the Highway Road Network. Information, 13.
2. Sihag, G., Parida, M., and Kumar, P. (2022). Travel Time Prediction for Traveler Information System in Heterogeneous Disordered Traffic Conditions Using GPS Trajectories. Sustainability, 14.
3. Mohammed, O., and Kianfar, J. (2018, January 16–19). A machine learning approach to short-term traffic flow prediction: A case study of interstate 64 in Missouri. Proceedings of the 2018 IEEE International Smart Cities Conference (ISC2), Kansas City, MO, USA.
4. Kianfar, J., and Sun, C. (2013). Operational Analysis of Freeway Variable Speed Limit System: Case Study of Deployment in Missouri, National Academies of Sciences, Engineering, and Medicine. Technical Report.
5. Markov-based time series modeling framework for traffic-network state prediction under various external conditions;J. Transp. Eng. Part A Syst.,2020
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献