Accurate physical modeling of vehicle dynamics requires extensive a priori knowledge of the studied vehicle. In contrast, data-driven modeling approaches require only a set of data that are a good account of the vehicle's driving envelope. In this brief, we compare, for the first time, the prediction capabilities of both approaches applied to a large-scale real-world driving data set. The data set contains several cornering maneuvers, acceleration, and deceleration stages and was collected over public roads. Linear and nonlinear physical models were identified through nonlinear optimization of their unknown parameters. Closed-form subspace identification methods were used to initialize the estimate of a linear state-space model, and the ini...
Trends show that on board vehicle technology is becoming increasingly complex and that this will con...
International audienceA new model-free setting and the corresponding "intelligent" P and PD controll...
This paper presents a controller dedicated to the lateral and longitudinal vehicle dynamics control ...
Mathematical modelling of vehicle dynamics is essential for the development of autonomous cars. Many...
Mathematical models of vehicle dynamics will form essential components of future autonomous vehicles...
Set-membership identification of a Linear Parameter Varying (LPV) model describing the vehicle later...
Developing automatic driving solutions and driver support systems requires accurate vehicle specific...
This paper presents an alternative modelling technique known as system identification to represent l...
Many of the published driver models concentrate on algorithms which achieve accurate path following ...
This paper discusses the feasibility of data captured in a long-term Naturalistic Driving Study (NDS...
Prediction and estimation of states are of great importance for vehicle control and safety. The conv...
The lateral dynamics of a road vehicle is studied through the development of a mathematical model. T...
Abstract—This paper presents the model identification and the velocity control of an autonomous car....
Autonomous driving has the potential to revolutionize mobility and transportation by reducing road a...
This Ph.D. thesis presents a framework for characterizing drivers by estimating a set of parameters ...
Trends show that on board vehicle technology is becoming increasingly complex and that this will con...
International audienceA new model-free setting and the corresponding "intelligent" P and PD controll...
This paper presents a controller dedicated to the lateral and longitudinal vehicle dynamics control ...
Mathematical modelling of vehicle dynamics is essential for the development of autonomous cars. Many...
Mathematical models of vehicle dynamics will form essential components of future autonomous vehicles...
Set-membership identification of a Linear Parameter Varying (LPV) model describing the vehicle later...
Developing automatic driving solutions and driver support systems requires accurate vehicle specific...
This paper presents an alternative modelling technique known as system identification to represent l...
Many of the published driver models concentrate on algorithms which achieve accurate path following ...
This paper discusses the feasibility of data captured in a long-term Naturalistic Driving Study (NDS...
Prediction and estimation of states are of great importance for vehicle control and safety. The conv...
The lateral dynamics of a road vehicle is studied through the development of a mathematical model. T...
Abstract—This paper presents the model identification and the velocity control of an autonomous car....
Autonomous driving has the potential to revolutionize mobility and transportation by reducing road a...
This Ph.D. thesis presents a framework for characterizing drivers by estimating a set of parameters ...
Trends show that on board vehicle technology is becoming increasingly complex and that this will con...
International audienceA new model-free setting and the corresponding "intelligent" P and PD controll...
This paper presents a controller dedicated to the lateral and longitudinal vehicle dynamics control ...