Abstract
Short-term prediction models for an ego-vehicle's speed contributes to the improvement of vehicle safety, driveability, and fuel economy. To achieve these desired outcomes, an accurate forward speed prediction model and its successful implementation in a real system is a prerequisite. This paper compares six velocity prediction models based on two types of data-driven models, a Markov chain and a Recurrent Neural Network (RNN), by implementing them in an embedded system to evaluate their prediction accuracy and execution time. The inputs to each model are the driving information acquired on a specific route, such as internal vehicle information, relative speed and distance to the vehicle in the front of the ego-vehicle, and ego-vehicle's location estimated by the GPS signal along with the B-spline roadway model. The proposed prediction models predict the velocity profile of the ego-vehicle up to the prediction horizon of 150 m. The parameters of the proposed models have been optimized using Hyper-parameter Optimization via Radial basis function and Dynamic coordinate search. By applying real driving data, the Markov chain-based models show slightly lower prediction accuracy but shorter execution time than those of the RNN-based models.
Highlights
Many studies related to speed prediction have been conducted in the field of transportation research to predict the average traffic speed of multiple vehicles passing through selected road segments
For successful implementation in embedded systems, we comparatively investigate the execution time and the ego-vehicle speed prediction accuracy of six data-driven prediction models that are commonly adopted for short-term velocity prediction
RESULT AND DISCUSSION In this study, we propose six velocity prediction models based on two types, Markov chain and Recurrent Neural Network (RNN)
Summary
Many studies related to speed prediction have been conducted in the field of transportation research to predict the average traffic speed of multiple vehicles passing through selected road segments. J. Shin et al.: Comparative Study of Markov Chain With RNN for Short Term Velocity Prediction Implemented on an Embedded System and past data with future information without explicitly addressing physical models [2], [13]–[15]. Among these ANN models, the Recurrent Neural Network (RNN) combines feedback loops with neural networks to achieve preferable capability on dynamic behavior with sequential dependencies This RNN model structure allows effective estimation of the future state profiles through historical traffic information measured by various sensors. The Markov chain and RNN-based models are constantly being studied for short-term speed prediction, study of their implementation in embedded systems has rarely been conducted. For successful implementation in embedded systems, we comparatively investigate the execution time and the ego-vehicle speed prediction accuracy of six data-driven prediction models that are commonly adopted for short-term. The conclusion is presented at the end of this paper
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