On-Board Road Friction Estimation Technique for Autonomous Driving Vehicle-Following Maneuvers
Abstract
:1. Introduction
2. Related Work
3. Problem Statement and Control Architecture
4. In-Vehicle Road-Grip Estimation
4.1. From Vehicle Sensors to Tires’ State
- The road is modelled completely flat with eventual banking and local geometrical effects (i.e., potholes, kerbs, micro- and macro- roughness) absent.
- The tire is modelled only in terms of its kinematic-dynamic transfer function without taking into account its eventual transient dynamics. Furthermore, the multi-physical effects, as thermal or wear abrasive and degradation influences, have not been taken into account at the current stage.
- Since the vehicle is involved in analyses concerning only the longitudinal dynamic maneuvers and considering the vehicle body symmetry hypotheses, the steering angle signal is assumed to be always zero and, therefore, it is not employed within the modelling and the estimation of the vehicle state.
- The vehicle is described only in terms of its intrinsic global geometric and mass-inertia parameters. The longitudinal load transfer is considered taking into account the position of the vehicle body centre of gravity.
- The vertical load distribution on each axle is evaluated starting from the static load data, load transfers due to the geometric position of the vehicle body centre of gravity within the xz plane and the aerodynamic force. The estimation of the tangential interaction forces, due an intrinsic non-linearity of each tire system, need an additional convergence algorithm for a correct partition of the global longitudinal force, located at the centre of gravity, into its two contributes based on the front and on the rear axles. Indeed, starting from the vertical loads calculated at each axle the convergence algorithm evaluates the above longitudinal forces, consistent with the vertical loads applied, the kinematics evaluated and the intrinsic dynamic characteristics of a pre-calibrated tire (neglecting the tires’ transient behavior at the current stage).
- The suspensions and steering system kinematics and compliances have been taking into account by acquiring the invariable KC curves by means of physical bench testor as an output of simulations performed by means of a multibody model.
- Wheels’ angular velocity (rad/s).
- Longitudinal velocity evaluated at the vehicle’s centre of gravity (m/s).
- Longitudinal acceleration evaluated at the vehicle’s centre of gravity (m/s2).
- Throttle position (%).
- Braking position (%).
- Axles’ slip ratio (-).
- Axles’ vertical interaction force (N).
- Axles’ longitudinal interaction force (N).
- Axles’ actual friction coefficient (-).
4.2. On-Board Estimation of Actual and Potential Friction
- Once the actual friction coefficient (point 1) has been calculated (17), the equivalent grip for the reference tire-road (point 2) can be evaluated:
- Furthermore, starting from the tire model parameters calibrated on a reference road surface, the model is able to provide a valuable output in terms of the maximum longitudinal force, achievable for the same conditions of vertical load, wheel alignment and vehicle longitudinal speed, at the optimal value of the slip ratio (point 3 in Figure 4):
- The potential friction coefficient (point 4) is obtainable, using the proportionality criterion already adopted for the point 2, assuming the linearity of the tire behavior within the working conditions of the vehicle, as follows:
5. Design of the Road-Grip Aware Control Modules
5.1. Predictive ACC Design
5.2. Autonomous Emergency Brake
5.3. Anti-Lock Braking System
6. Co-Simulation Platform
- MATLAB/Simulink platform, a widely used framework to model dynamical systems and to design control architectures. Indeed, through an easy to use of its graphical interface, it is possible to develop controllers according to the well-known Model-based Control Design approach. The vehicle dynamics model, implemented in the MATLAB/Simulink environment and employed for the evaluation of the control logic performance in vehicle-following maneuvers, is an efficient 15 degrees of freedom lumped-parameter full vehicle model (LPFVM), described in [60] with a MF-based tire model [54]. The LPFVM is based on a set of Ordinary Differential Equations (ODEs) governing the dynamic equilibrium of the vehicle chassis, including three translational and three rotational equilibrium conditions, and of each wheel, comprising a translational equilibrium along the vertical direction and a rotational equilibrium around the spindle axis. Furthermore, the braking actuation is achieved through a standard hydraulic system made of a master cylinder, a reservoir, a pump and two valves for each wheels which are used to build braking pressure. Details on its model, and the related parameters, can be found in [61] and references therein.
- SUMO (Simulation of Urban MObility), an open-source road traffic simulation package, enabling the user to model entities such as vehicles, traffic lights, road networks, vehicle routing. Each entity is simulated microscopically, meaning that it is possible to control each of them singularly, while the whole scenario is emulated by its internal engine built upon realistic driving models.
- Friction estimator module, allowing the on-board estimation of the current tire-road interaction state and the potential friction value.
7. Performance Analysis
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
Advanced Driver Assistance System | |
Model Predictive Control | |
Adaprive Cruise Control | |
Autonomous Emergency Braking | |
Linear Quadratic Regulator | |
Time To Collision | |
Proportional-Integral-Derivative | |
Society of Automotive Engineers | |
Anti-lock Braking System | |
Tire Road Interaction Characterization and Knowledge | |
Magic Formula | |
Electronic Control Units | |
Controller Area Network | |
Global Positioning System | |
Sliding Mode Control | |
Model In the Loop | |
Simulation of Urban MObility | |
Lumped-Parameter Full Vehicle Model | |
Finite element Methods | |
Center of Gravity | |
v | longitudinal velocity evaluated at the c.o.g. |
a | longitudinal acceleration |
wheel speed | |
inclination angle | |
longitudinal velocity evaluated at the contact point | |
spindle velocity | |
m | vehicle mass |
g | acceleration of gravity |
distance c.o.g. - front axle | |
distance c.o.g. - rear axle | |
L | wheelbase |
air density | |
h | height c.o.g. |
longitudinal drag coefficient | |
lift coefficient | |
moment of inertia about the wheel axis of rotation | |
wheel moment of inertia | |
rolling radius | |
master section | |
static load - front axle | |
static load - rear axle | |
load transfer | |
aerodynamic down force | |
inertial force | |
longitudinal force | |
longitudinal force evaluated on a reference road surface | |
normal force | |
actual friction coefficient estimated | |
actual friction coefficient estimated on a reference road surface | |
potential friction coefficient estimated | |
slip ratio | |
e | distance error to the desired |
braking torque | |
d | distance lead to ego vehicle |
ACC desired distance | |
minimum spacing | |
headway time | |
leading vehicle acceleration | |
leading vehicle velocity | |
driveline time constant | |
u | control input |
J | ACC cost function |
Q | ACC output weight |
r | ACC incremental control effort weight |
ACC control horizon | |
ACC prediction horizon | |
ACC sampling time | |
AEB deceleration command | |
sliding surface | |
switching control gain | |
warning critical distance | |
braking critical distance | |
safety index |
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Parameter | Description | Value |
---|---|---|
m | vehicle mass | 1521 [kg] |
chassis moment of inertia | 2875 [kg · m] | |
distance c.o.g.-front axle | 1.2 [m] | |
distance c.o.g.-rear axle | 1.6 [m] | |
longitudinal drag coefficient | 0.28 | |
wheel moment of inertia | 1 [kg · m] | |
wheel radius | 0.315 [m] | |
h | height c.o.g. | 0.54 [m] |
driveline constant | 0.05 [s] | |
headway time | 1.1 [s] | |
minimum spacing | 2 [m] | |
ACC sampling time | 0.1 [s] | |
ACC prediction horizon | 15 | |
ACC control horizon | 15 | |
ACC minimum control | −0.1 [m/s] | |
ACC maximum control | 0.1 [m/s] | |
ACC spacing tracking weight | 2 | |
ACC velocity tracking weight | 5 | |
ACC acceleration weight | 20 | |
ACC control effort weight | 20 | |
r | ACC incremental control effort weight | 20 |
Scenario | min TTC | min | min d(t) |
---|---|---|---|
Vehicle following with estimation | 2.02 | −0.15 | 10.30 |
Vehicle following w/o estimation | 0 | −1.08 | 0 |
Stop&Go with estimation | 2.73 | 1.22 | 3.20 |
Stop&Go w/o estimation | 2.13 | 0.48 | 2.70 |
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Santini, S.; Albarella, N.; Arricale, V.M.; Brancati, R.; Sakhnevych, A. On-Board Road Friction Estimation Technique for Autonomous Driving Vehicle-Following Maneuvers. Appl. Sci. 2021, 11, 2197. https://doi.org/10.3390/app11052197
Santini S, Albarella N, Arricale VM, Brancati R, Sakhnevych A. On-Board Road Friction Estimation Technique for Autonomous Driving Vehicle-Following Maneuvers. Applied Sciences. 2021; 11(5):2197. https://doi.org/10.3390/app11052197
Chicago/Turabian StyleSantini, Stefania, Nicola Albarella, Vincenzo Maria Arricale, Renato Brancati, and Aleksandr Sakhnevych. 2021. "On-Board Road Friction Estimation Technique for Autonomous Driving Vehicle-Following Maneuvers" Applied Sciences 11, no. 5: 2197. https://doi.org/10.3390/app11052197
APA StyleSantini, S., Albarella, N., Arricale, V. M., Brancati, R., & Sakhnevych, A. (2021). On-Board Road Friction Estimation Technique for Autonomous Driving Vehicle-Following Maneuvers. Applied Sciences, 11(5), 2197. https://doi.org/10.3390/app11052197