AbstractThe main goal of the current study is to take advantage of advanced numerical and intelligent tools to predict the speed of a vehicle using time series. It is clear that the uncertainty caused by temporal behavior of the driver as well as various external disturbances on the road will affect the vehicle speed, and thus, the vehicle power demands. The prediction of upcoming power demands can be employed by the vehicle powertrain control systems to improve significantly the fuel economy and emission performance. Therefore, it is important to systems design engineers and automotive industrialists to develop efficient numerical tools to overcome the risk of unpredictability associated with the vehicle speed profile on roads. In this stu...
It is possible for routing and navigation applications to provide more accurate and more effective r...
Prediction of short-term future driving conditions can contribute to energy management of plug-in hy...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
AbstractThe main goal of the current study is to take advantage of advanced numerical and intelligen...
Accurate previews of the preceding vehicle's future trajectories are essential for automated driving...
Accurate previews of the preceding vehicle's future trajectories are essential for automated driving...
Driving style and external factors such as traffic density have a significant influence on the vehic...
Driving style and external factors such as traffic density have a significant influence on the vehic...
Time series as data in the machine learning research area has been dominated by prediction and forec...
Time series as data in the machine learning research area has been dominated by prediction and forec...
International audienceDuring the past ten years, worldwide efforts have been pursuing anambitious po...
Prediction of short-term future driving conditions can contribute to energy management of plug-in hy...
Vehicle speed prediction can obtain the future driving status of a vehicle in advance, which helps t...
It is possible for routing and navigation applications to provide more accurate and more effective r...
It is possible for routing and navigation applications to provide more accurate and more effective r...
It is possible for routing and navigation applications to provide more accurate and more effective r...
Prediction of short-term future driving conditions can contribute to energy management of plug-in hy...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
AbstractThe main goal of the current study is to take advantage of advanced numerical and intelligen...
Accurate previews of the preceding vehicle's future trajectories are essential for automated driving...
Accurate previews of the preceding vehicle's future trajectories are essential for automated driving...
Driving style and external factors such as traffic density have a significant influence on the vehic...
Driving style and external factors such as traffic density have a significant influence on the vehic...
Time series as data in the machine learning research area has been dominated by prediction and forec...
Time series as data in the machine learning research area has been dominated by prediction and forec...
International audienceDuring the past ten years, worldwide efforts have been pursuing anambitious po...
Prediction of short-term future driving conditions can contribute to energy management of plug-in hy...
Vehicle speed prediction can obtain the future driving status of a vehicle in advance, which helps t...
It is possible for routing and navigation applications to provide more accurate and more effective r...
It is possible for routing and navigation applications to provide more accurate and more effective r...
It is possible for routing and navigation applications to provide more accurate and more effective r...
Prediction of short-term future driving conditions can contribute to energy management of plug-in hy...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...