Abstract
Short-term traffic speed prediction is vital for proactive traffic control, and is one of the integral components of an intelligent transportation system (ITS). Accurate prediction of short-term travel speed has numerous applications for traffic monitoring, route planning, as well as helping to relieve traffic congestion. Previous studies have attempted to approach this problem using statistical and conventional artificial intelligence (AI) methods without accounting for influence of data collection time-horizons. However, statistical methods have received widespread criticism concerning prediction accuracy performance, while traditional AI approaches have too shallow architecture to capture non-linear stochastics variations in traffic flow. Hence, this study aims to explore prediction of short-term traffic speed at multiple time-ahead intervals using data collected from loop detectors. A fast forest quantile regression (FFQR) via hyperparameters optimization was introduced for predicting short-term traffic speed prediction. FFQR is an ensemble machine learning model that combines several regression trees to improve speed prediction accuracy. The accuracy of short-term traffic speed prediction was compared using the FFQR model at different data collection time-horizons. Prediction results demonstrated the adequacy and robustness of the proposed approach under different scenarios. It was concluded that prediction performance of FFQR was significantly enhanced and robust, particularly at time intervals larger than 5 min. The findings also revealed that speed prediction error (in terms of quantiles loss) ranged between 0.58 and 1.18.
Highlights
With rapid growth in car ownership, traffic congestion has become one of the most critical social concerns in urban metropolitans around the world
Accurate traffic prediction is an integral component of advanced travelers information system (AITS) in intelligent transportation system (ITS)
The objective of this study was to predict short-term travel speed under different time-horizons, which is extremely essential for travel route planning, real-time proactive traffic control, and management in ITS
Summary
With rapid growth in car ownership, traffic congestion has become one of the most critical social concerns in urban metropolitans around the world. In addition to information about existing traffic conditions, accurate knowledge about traffic state parameters (traffic flow, density, speed) in subsequent short time intervals is vital for deciding on a potential control and management strategy. Accurate traffic prediction is an integral component of advanced travelers information system (AITS) in intelligent transportation system (ITS) It has numerous applications such as route planning, navigation, dynamic traffic assignment, congestion estimation, and other mobility services [10,11]. It is essential to study the influence of varying time-horizons for the collection of data on travel speed prediction. Given the variability in travel speed under recurrent and non-recurrent traffic conditions, the objective of current research study is to make better speed predictions under multiple traffic data collection time-horizons, that would assist in alleviating congestion in the city of Beijing.
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