Safe and Ecological Speed Control for Heavy-Duty Vehicles on Long–Steep Downhill and Sharp-Curved Roads
Abstract
:1. Introduction
2. Control Structure
- (1)
- Road condition sensors and communication devices installed along both high-risk roads and their approaching sections. Road condition sensors monitor the friction coefficient of road surface in real-time by infrared spectral analysis technology, which is free from dependence on information of weather and temperature around the sensors. Communication devices provide information on road design and surface conditions for connected heavy-duty vehicles (CHDVs) named “Roadside units”. List format hanging 0.75.
- (2)
- Communication devices installed on CHDVs to enable communication between multiple vehicles or between vehicles and roadside units called “Vehicle-loaded units”.
- (3)
- Sensors installed on CHDVs to obtain the state of their preceding unconnected vehicles.
3. Mathematical Formulation
- (1)
- The optimal speed profile is adopted by the CHDV as the desired speed and can be overruled by the car-following behavior to guarantee safety.
- (2)
- The desired speed of conventional human-driven vehicles equals the 85th percentile speed of all heavy-duty vehicles that have safely driven through the high-risk roads; all the human-driven vehicles run at the desired speed unless impeded by the preceding vehicle.
- (3)
- The friction coefficient of road surface is accurately monitored by road condition sensors, and the measured values are not affected by traffic flow on the road. The wind speed equals 0 km/h.
3.1. Optimal Controller for Connected Heavy-Duty Vehicles
3.1.1. State Explanation
3.1.2. Cost Function
3.1.3. Conditions and Constraints
3.1.4. Brake Drum Temperature Rise Model
3.1.5. Lateral Stability Model
3.1.6. Solution Based on Pontryagin’s Minimum Principle
3.1.7. Iterative PMP Algorithm to Solve the Optimal Control
- Step 1: Initialize the co-state , .
- Step 2: Start the iterative solving process with the iteration number .
- Step 3: Solve Equation (43) forward in time subject to the initial conditions and constraints for state using co-state . The downhill gradient and curve radius are updated according to the vehicle’s actual position.
- Step 4: Solve Equation (42) backwards in time for co-state with .
- Step 5: Update the co-state with the weight factor that can smooth the co-state updating process, .
- Step 6: If the error , then stop the iteration; otherwise, set and loop back to step 3. is the pre-set error threshold.
3.2. Predictor for Conventional Human-Driven Vehicles
- (1)
- When the predicted conventional vehicle is driving on the approach sections connected to high-risk roads, it will prefer to gradually decelerate to a desired speed before entering said high-risk roads. The desired speed of the predicted vehicle equals its initial speed at the entrance point, . The speed and location of its virtual preceding vehicle are
- (2)
- When both the predicted conventional vehicle and its virtual preceding vehicle are traveling on high-risk roads, the predicted vehicle will maintain a stable net distance from the virtual preceding vehicle. The desired speed of the predicted vehicle is the 85th percentile speed of all heavy-duty vehicles, . The speed and location of its virtual preceding vehicle are
- (3)
- When the predicted conventional vehicle is driving on high-risk roads, and its virtual preceding vehicle is traveling on the departure section, the predicted vehicle will gradually increase speed until leaving the high-risk roads. The desired speed of the predicted vehicle remains equal to the 85th percentile speed of all heavy-duty vehicles. The speed and location of the virtual preceding vehicle can be calculated as
4. Simulation and Evaluation
4.1. Simulation Platform and Scenarios
- (1)
- MATLAB/Simulink is the master control program and is responsible for optimizing the speed profiles of the CHDVs, predicting the speed profiles of the conventional human-driven vehicles, and communicating between TruckSim and VISSIM. The optimal controller for CHDVs and the predictor for conventional human-driven vehicles of the proposed speed control system are only implemented in MATLAB/Simulink. The input of the optimal controller and predictor are information on acceleration, speed and location of CHDVs and conventional human-driven vehicles transmitted from VISSIM.
- (2)
- VISSIM establishes the test roads and conducts a microscopic traffic simulation on high-risk roads using its own microscopic car-following model called “Wiedemann 74”. To ensure the realness of the simulation results output from VISSIM, the Wiedemann 74 car-following model is calibrated according to the Highway Capacity Manual 2010, the base saturation flow rate of single lane equals 1830 veh/h. The Wiedemann 74 car-following model could simulate complex vehicle interactions realistically on a microscopic level, and thereby verify the accuracy of predictor in module 2 improved from IDM car-following model. The optimal speed advisory transmitted from MATLAB/Simulink is written to the corresponding CHDV as the “Desired Speed”. Then, the motion profiles of the CHDVs and conventional human-driven vehicles generated in VISSIM are sent to the optimal controller and predictor in MATLAB/Simulink, and are transmitted to TruckSim as the control input for the vehicles through MATLAB/Simulink.
- (3)
- TruckSim constructs a dynamics model of heavy-duty vehicles and configures the CHDVs or conventional human-driven vehicles to run according to the corresponding speed profiles obtained from VISSIM. To ensure the realness of the simulation results output from VISSIM, the dynamics model of heavy-duty vehicles is calibrated by field test data of a heavy-duty vehicle called “Sinotruk HOWO”.
4.2. Simulation Results
4.2.1. Brake Stability
4.2.2. Lateral Stability
4.2.3. Fuel Economy
4.2.4. Mobility
5. Conclusions and Future Research
- (1)
- The brake thermal benefits of CHDVs range from 1.07% to 15.50%, and their brake drums maintain a safe temperature. The brake thermal benefits of HD2Vs range from 1.06% to 7.22%. These variations are caused by the MPR of CHDVs and the downhill gradient. The optimal gradient is 3.5%.
- (2)
- The lateral slip angles and the lateral load transfer rates of heavy-duty vehicles in controlled scenarios, including CHDVs and HD2Vs, are much lower than those in the baseline scenarios. The lateral slip angles and the lateral load transfer rates of the CHDVs in the controlled scenarios are within a safe range. The inhibition effect on the lateral slip angle and the lateral load transfer rate of the HD2Vs increase with the congestion level of road traffic.
- (3)
- The fuel consumption benefits range from 2.08% to 8.15% when the heavy-duty vehicles are driving on downhill roads and range from 1.34% to 15.49% on curved roads. These variations are caused by the MPR of CHDVs, the curve radius, and the congestion level. The benefits increase as the MPR of CHDVs and the congestion level increase.
- (4)
- Significant negative impacts on throughput by up to 4.97% were observed on curved roads, but this adverse effect of the proposed control system is at least 3.27% lower than that of most similar controllers without the consideration of all traffic and the stochastic driving behaviors of human-driven vehicles.
- (5)
- The brake thermal benefits, fuel consumption benefits, and control effects on the lateral slip and load transfer show increasing trends with the MPR of CHDVs. Significant benefits can be obtained as long as there are few CHDVs. Thus, the proposed speed control system has great feasibility for future implementation in the real world.
- (6)
- The fuel consumption benefits, control effects on lateral slip, and load transfer under high congestion levels are much greater that those under low congestion levels. The proposed control system offers better control over the entire traffic flow under high congestion levels.
- (7)
- The optimal downhill gradient for the proposed speed controller is 2.5~4.5%, and the optimal curve radius is 50~70 m. All benefits and control effects are at high levels under these conditions.
Author Contributions
Funding
Conflicts of Interest
Appendix A
Notation | Meaning |
---|---|
Location of the heavy-duty vehicle at t time, (m) | |
Speed of the heavy-duty vehicle at t time, (m/s) | |
Longitudinal speed of the heavy-duty vehicle at t time, (m/s) | |
Lateral speed of the heavy-duty vehicle at t time, (m/s) | |
Location of the virtual preceding vehicle of the predicted vehicle at t time in Module 2, (m) | |
Speed of the virtual preceding vehicle of the predicted vehicle at t time in Module 2, (m/s) | |
Distance gap between the predicted vehicle and its virtual preceding vehicle at t time in Module 2, (m) | |
Speed difference between the predicted vehicle and its virtual preceding vehicle at t time in Module 2, (m/s) | |
Acceleration of the heavy-duty vehicle at t time, (m/s2) | |
Longitudinal acceleration of the heavy-duty vehicle at t time, (m/s2) | |
Lateral acceleration of the heavy-duty vehicle at t time, (m/s2) | |
Yaw rate of the heavy-duty vehicle at t time, (rad/s) | |
Desired yaw rate of the heavy-duty vehicle at t time, (rad/s) | |
Thermal energy generated by the brake drums of the heavy-duty vehicle from 0 time to t time, (J) | |
Roll angle of the vehicle at the center of gravity at t time, (rad) | |
Energy generated by the brake and non-brake forces of the heavy-duty vehicle from 0 time to t time, (J) | |
Kinetic energy of the heavy-duty vehicle at t time, (J) | |
Gravitational potential energy of the heavy-duty vehicle at t time, (J) | |
Energy of the engine braking from 0 time to t time, (J) | |
Energy generated by the rolling resistance of all tires from 0 time to t time, (J) | |
Energy generated by the aerodynamic drag of the vehicle from 0 time to t time, (J) | |
Thermal energy dissipated by the convective heat transfer of the brake drum i from 0 time to t time, (J) | |
Thermal energy dissipated by the radiative heat transfer of the brake drum i from 0 time to t time, (J) | |
Thermal energy generated by the rolling resistance at the tire of wheel k and road surface, (J) | |
Thermal energy generation rate of the drum-brakes of the heavy-duty vehicle at t time, (J/s) | |
Thermal energy dissipation rate of the drum-brakes of the heavy-duty vehicle at t time, (J/s) | |
Net thermal energy generation rate of the drum-brakes of the heavy-duty vehicle at t time, (J/s) | |
Torque of engine braking at t time, (N·m) | |
Instantaneous fuel consumption rate of the heavy-duty vehicle at t time, (ml/t) | |
Lateral load transfer ratio of the heavy-duty vehicle at t time | |
Curve radius at location , (m) | |
Aerodynamic drag of the vehicle at time, (N) | |
Vertical load of left front wheel of the heavy-duty vehicle at t time, (N) | |
Vertical load of right front wheel of the heavy-duty vehicle at t time, (N) | |
Vertical load of left rear wheel of the heavy-duty vehicle at t time, (N) | |
Vertical load of right rear wheel of the heavy-duty vehicle at t time, (N) | |
External surface temperature of the brake drum i at time, (°C) | |
Ambient air temperature of the brake drum i at time, (°C) | |
Thermodynamic temperature of the brake drum i at time, (K) | |
Thermodynamic temperature of ambient air surrounding the brake drum i at time, (K) | |
Terminal cost of the optimal problem in Module 1 | |
Running cost of the optimal problem in Module 1 | |
Engine speed of the heavy-duty vehicle at t time, (rpm) | |
Relative speed of air and vehicle at time, (m/s) | |
Rolling resistance of the ith wheel, (N) | |
Maximum yaw rate of the heavy-duty vehicle, (rad/s) | |
Initial speed of the heavy-duty vehicle when it enters the control area, (m/s) | |
Desired speed of the heavy-duty vehicle, (m/s) | |
85th percentile speed of all heavy-duty vehicles that have safely driven through the downhill/curved section, (m/s) | |
Legal speed limit of heavy-duty vehicles on high-risk roads, (m/s) | |
Maximum acceleration of the heavy-duty vehicle, (m/s2) | |
Minimum acceleration (maximum deceleration) of the heavy-duty vehicle, (m/s2) | |
Desired deceleration of the heavy-duty vehicle, (m/s2) | |
Maximum jerk of the heavy-duty vehicle, (m/s3) | |
Minimum jerk of the heavy-duty vehicle, (m/s3) | |
Desired jerk of the virtual preceding vehicle of the predicted vehicle in Module 2, (m/s3) | |
Maximum lateral load transfer ratioat t time | |
Minimum lateral load transfer ratio of the heavy-duty vehicle at t time | |
Ratio of engine speed and vehicle speed | |
Maximum temperature of the brake drum, (°C) | |
Mass of the heavy-duty vehicle, (kg) | |
Mass of brake drum i, (kg) | |
Windward area of the vehicle, (m2) | |
External surface area of the brake drum i, (m2) | |
Radius of the vehicle wheels, (m) | |
Coefficient of the torque formula for engine braking | |
Coefficient of roll angle formula | |
Coefficient of rolling resistance | |
Coefficient of aerodynamic drag | |
Specific Heat Capacity of the brake drum, (J/(kg·K)) | |
Distance from the center of gravity to front axle, (m) | |
Distance from the center of gravity to rear axle, (m) | |
Track width of the heavy-duty vehicle, (m) | |
Minimum desired net distance between the predicted vehicle and its virtual preceding vehicle in Module 2, (m) | |
Rolling stiffness of the front suspension, (N/m) | |
Rolling stiffness of the rear suspension, (N/m) | |
Height of the center of gravity, (m) | |
Height from the center of gravity to roll center O, (m) | |
Coefficient of convection heat transfer | |
Gravitational acceleration, (m/s2) | |
Length of high-risk roads, (m) | |
Length of flat and straight section connected to high-risk roads, (m) | |
Travel distance of the vehicle, (m) | |
Index of wheel | |
The number of vehicle wheels | |
Initial time when the heavy-duty vehicle reaches the entrance point of the control area, (s) | |
Time when the heavy-duty vehicle reaches the top of the downhill road or the beginning of the sharp-curved road, (s) | |
Terminal time when heavy-duty vehicle pulls out of the control area, (s) | |
Terminal time when preceding vehicle pulls out of the control area, (s) | |
Expected terminal time of the heavy-duty vehicle, (s) | |
Pre-set headway of two consecutive vehicles, (s) | |
Safe time headway between the predicted vehicle and its virtual preceding vehicle in Module 2, (s) | |
Gradient of downhill, (rad) | |
Bank angle of sharp curve, (rad) | |
Empirical coefficient, (W/(m⋅°C)) | |
Emissivity coefficient of the brake drum | |
Stefan-Boltzmann Constant, (W/m2K4) | |
Tire–road friction coefficient | |
Thermal energy distribution coefficient of the brake drum i | |
Load of the ith wheel, (N) | |
Coefficient for the steering angle estimation of the front wheels | |
Air density, (Kg/m3) | |
Acceleration exponent of the IDM car-following model | |
Parameters of the fuel consumption and emissions model | |
Weighting factor for brake safety of the vehicle, (m2·s−3·J−1) | |
Weighting factor for yaw stability of the vehicle, (m2·s−2·rad−2) | |
Weighting factor for roll stability of the vehicle, (m2·s−4) | |
Weighting factor for fuel efficiency of the vehicle’s power system, (m3·mL−1·s−4) |
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Category | Parameters | Value |
---|---|---|
Simulation platform | Length of approach section (m) | 120 |
Gradient of downhill road (%) | 2, 2.5, 3, 3.5, 4, 4.5, 5, 5.5, 6 | |
Radius of curved road (m) | 40, 45, 50, 55, 60, 65, 70 | |
Congestion level | 0.3, 0.8 | |
MPR of connected vehicles | 20, 30, 40, 50, 60, 70, 80 | |
Warming time of VISSIM (s) | 120 | |
Optimal controller for connected heavy-duty vehicles | Legal speed limit (km/h) | 50 |
Maximum acceleration (m/s2) | 3.5 | |
Minimum acceleration (m/s2) | −4 | |
Maximum jerk (m/s2) | 10 | |
Minimum jerk (m/s2) | 0 | |
Pre-set headway (s) | 5 | |
Weighting factors () | (1,10,100,100,100,1) | |
Predictor for conventional human-driven vehicles | Acceleration exponent | 4 |
Minimum desired net distance (m) | 7 | |
Desired speed (km/h) | 50 | |
Minimum speed (km/h) | 0 | |
Safe time headway (s) | 5 | |
Desired deceleration (m/s2) | −2.0 |
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Jiang, H.; Zhou, W.; Liu, C.; Zhang, G.; Hu, M. Safe and Ecological Speed Control for Heavy-Duty Vehicles on Long–Steep Downhill and Sharp-Curved Roads. Sustainability 2020, 12, 6813. https://doi.org/10.3390/su12176813
Jiang H, Zhou W, Liu C, Zhang G, Hu M. Safe and Ecological Speed Control for Heavy-Duty Vehicles on Long–Steep Downhill and Sharp-Curved Roads. Sustainability. 2020; 12(17):6813. https://doi.org/10.3390/su12176813
Chicago/Turabian StyleJiang, Huifu, Wei Zhou, Chang Liu, Guosheng Zhang, and Meng Hu. 2020. "Safe and Ecological Speed Control for Heavy-Duty Vehicles on Long–Steep Downhill and Sharp-Curved Roads" Sustainability 12, no. 17: 6813. https://doi.org/10.3390/su12176813
APA StyleJiang, H., Zhou, W., Liu, C., Zhang, G., & Hu, M. (2020). Safe and Ecological Speed Control for Heavy-Duty Vehicles on Long–Steep Downhill and Sharp-Curved Roads. Sustainability, 12(17), 6813. https://doi.org/10.3390/su12176813