Data-Driven Ballistic Coefficient Learning For Future State Prediction Of High-Speed Vehicles

2016 19TH INTERNATIONAL CONFERENCE ON INFORMATION FUSION (FUSION)(2016)

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摘要
This paper describes a methodology to predict a future state of unknown high-speed vehicles by applying machine learning techniques. Traditionally, the state estimation of highspeed vehicles is carried out by the variations of Kalman filters, but such state estimation is limited to the temporal moment of the observation. Therefore, the future state of high-speed vehicles has been obtained through a number of predictive iterations with a dynamics equation. This dynamic equation requires a key parameter, i.e. ballistic coefficient, and this coefficient were merely fixed or modeled as another dynamics model in the past. The novelty of this paper lies on the utilization of machine learning models, i.e. Gaussian process regression and support vector regression, to predict the future ballistic coefficient. Our simulation experiments show that there is a reduction in the position error and the ballistic coefficient error when the machine learning models were used.
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关键词
data-driven ballistic coefficient learning,state prediction,high-speed vehicles,machine learning techniques,state estimation,Kalman filters,predictive iterations,dynamic equation,Gaussian process regression,support vector regression,position error,ballistic coefficient error
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