Research on Longitudinal Active Collision Avoidance of Autonomous Emergency Braking Pedestrian System (AEB-P)
Abstract
:1. Introduction
- (1)
- The AEB-P system has the functional requirements to prevent the occurrence of pedestrian collision accidents, and ensure and protect the safety of pedestrians. The architecture of the AEB-P system was proposed, and the basic functions and logical relationships of each module of the system were explained. Based on the research of collision time (TTC), the braking safety distance, and other related theoretical systems, the AEB-P system early warning model was established, which defines the driving safety level and the working area of the AEB-P warning system.
- (2)
- Taking an E-class front-mounted SUV model as a research object, the upper-layer fuzzy neural network controller of the AEB-P system was designed. The longitudinal collision avoidance data of the experienced drivers were used as training data in the BP (backpropagation) neural network training. Based on the pedestrian avoidance test specification, relevant pedestrian test scenarios were established using Carsim software. The joint simulation model of the AEB-P system developed by using both Carsim and Simulink was designed to verify the correctness of the proposed AEB-P system control strategy.
2. AEB-P System Architecture
- The AEB-P system should be designed such that to protect pedestrian safety as the highest priority. Under the non-extreme conditions, there should be no collision with pedestrians.
- The AEB-P system should be more human-oriented, taking into account the psychological and physiological responses of pedestrians, and should not cause excessive panic or scare pedestrians during the emergency braking.
- The AEB-P system should have the basic features of good functional safety, adaptability, and good robustness. In addition, the driving environment should be accurately judged, the collision risk degree should be accurately estimated, and the driver’s normal operation should not be disturbed.
- The AEB-P system should reflect the experienced driver braking behavior and should have the ability to adaptively adjust the braking force based on changes in the danger level. It should also minimize the emergency braking process, mitigating discomfort and tension in the car occupants.
- The AEB-P system should have self-learning and self-adaptive ability based on rich driving experience, that is, the ability to collect and store driver’s driving information and adapt to different driver’s driving habits.
- The AEB-P system should have a collision avoidance warning function. Before the automatic intervention of emergency braking, it should be led by a driver to remind him of a potential danger of pedestrian collision.
- The AEB-P system should meet the standards of the test regulations.
3. AEB-P System Model
3.1. AEB-P System Dynamic Modeling
3.2. Inverse Dynamic Modeling of AEB-P System
3.3. Establishment of AEB-P Early Warning System
3.3.1. Driving Information Acquisition and Related Calculation Processing
3.3.2. Risk Assessment Model Establishment
3.3.3. Classification of Pedestrian Collision Hazard Level and Analysis of Braking Process
3.4. Division of AEB-P System Operating Area
4. AEB-P System Controller Design
4.1. AEB-P System Upper Controller Design
4.1.1. Establishment of AEB-P Fuzzy Control System
- If is Z0 and is Z0, is N1;
- If is Z0 and is N1, is N5;
- If is Z0 and is N2, is N7;
- …
- If is Z0 and is N11, is N9;
- If is P1 and is Z0, is Z0;
- If is P1 and is N1, is N2;
- …
- If is P8 and is N9, is N6;
- If is P8 and is N10, is N7;
- If is P8 and is N11, is N8;
- …
- If is P8 and is N9, is N6;
- If is P8 and is N10, is N7;
- If is P8 and is N11, is N8.
4.1.2. Training of Fuzzy Neural Network Model
4.2. AEB-P System Lower Controller Design
5. AEB-P System Joint Simulation Analysis
5.1. AEB-P System Pedestrian Collision Avoidance Test Conditions
5.2. AEB-P System Pedestrian Test Scenario Construction
5.3. Analysis of Joint Simulation Results of AEB-P System
5.3.1. CVFA-25Pedestrian Test Scenario
5.3.2. CVFA-50Pedestrian Test Scenario
5.3.3. CVNA-25 Near-End Pedestrian Test Scenario
5.3.4. CVNA-75 Near-End Pedestrian Test Scenario
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Vehicle Parameter | Value | Unit |
---|---|---|
Engine rated power | 125 | kw |
Maximum engine torque | 251 | N·m |
Vehicle curb quality | 1615 | kg |
Air resistance coefficient | 0.32 | / |
Frontal area | 2.73 | m2 |
Rolling friction coefficient | 0.004 | / |
Wheelbase | 2750 | mm |
Tread | 1615 | mm |
The center of gravity to the center of the front wheel | 1107 | mm |
Height of gravitational center | 780 | mm |
Main reducer reduction ratio | 3.48 | / |
Tire rolling radius | 0.3588 | mm |
Powertrain transmission efficiency | 0.9 | / |
Crankshaft moment of inertia | 0.16 | kg·m2 |
Engine idle speed | 750 | r/min |
Transmission shift time | 0.5 | S |
Transmission 1 speed ratio | 3.917 | / |
Transmission 2 speed ratio | 2.042 | / |
Transmission 3 speed ratio | 1.257 | / |
Transmission 4 speed ratio | 0.909 | / |
Transmission 5 speed ratio | 0.902 | / |
Transmission 6 speed ratio | 0.773 | / |
Transmission reverse speed ratio | −4.298 | / |
Unsprung mass of front suspension | 122.8 | kg |
Unsprung mass of rear suspension | 111 | kg |
Wheel slip ratio with ABS (anti-lock brake system) system | 10~30 | % |
Brake disc quality | 9.65 | kg |
Brake pedal lever ratio | 3.6 | / |
Master cylinder diameter | 25.4 | mm |
Brake disk specific heat capacity at 0 celsius degree | 1.0425 | kJ/kg·°C |
The pressure generated by unit flow in brake caliper hydraulic cylinder | 4.10 × 10−6 | MPa/(mm3/s) |
Time delay for starting boost | 0.001 | S |
Closed time delay | 0.001 | S |
Tire size | 265/75R16 | mm |
Tire stiffness | 502 | N/mm |
Tire vertical load | 11,500 | N |
Tire maximum load | 100,000 | N |
Effective rolling radius | 393 | mm |
Free radius | 402 | mm |
Vehicle Speed (km/h) | TTC Value Range (s) | Security Level |
---|---|---|
20 | 0~1 | III |
1~2.5 | II | |
>2.5 | I | |
30 | 0~1.1 | III |
1.1~2.6 | II | |
>2.6 | I | |
40 | 0~1.3 | III |
1.3~2.8 | II | |
>2.8 | I | |
50 | 0~1.5 | III |
1.5~3 | II | |
>3 | I | |
60 | 0~1.8 | III |
1.8~3.3 | II | |
>3.3 | I |
Z0 | P1 | P2 | P3 | P4 | P5 | P6 | P7 | P8 | ||
---|---|---|---|---|---|---|---|---|---|---|
0 | 0.5 | 1 | 1.5 | 2 | 2.67 | 3.43 | 4.27 | 5 | ||
0.33 | 0.37 | 0.35 | 0.3 | 0.41 | 0.5 | 0.66 | 0.55 | 0.54 | ||
0.35 | 0.33 | 0.34 | 0.37 | 0.42 | 0.58 | 0.71 | 0.66 | 0.62 |
N11 | N10 | N9 | N8 | N7 | N6 | N5 | N4 | N3 | N2 | N1 | Z0 | ||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
−8 | −6.9 | −6 | −5.1 | −4 | −3.2 | −2.5 | −2 | −1.5 | −1 | −0.5 | 0 | ||
0.8 | −0.85 | 0.77 | 0.8 | 0.59 | 0.52 | 0.43 | 0.3 | 0.33 | 0.35 | 0.31 | 0.36 | ||
0.7 | 0.79 | 0.7 | 0.79 | 0.59 | 0.53 | 0.4 | 0.33 | 0.35 | 0.36 | 0.39 | 0.28 |
N9 | N8 | N7 | N6 | N5 | N4 | N3 | N2 | N1 | Z0 | ||
---|---|---|---|---|---|---|---|---|---|---|---|
−1 | −0.9 | −0.8 | −0.7 | −0.6 | −0.5 | −0.4 | −0.3 | −0.16 | 0 | ||
0.06 | 0.08 | 0.06 | 0.08 | 0.05 | 0.07 | 0.08 | 0.08 | 0.1 | 0.12 | ||
0.06 | 0.08 | 0.06 | 0.08 | 0.07 | 0.07 | 0.07 | 0.08 | 0.11 | 0.11 |
Z0 | N1 | N2 | N3 | N4 | N5 | N6 | N7 | N8 | N9 | N10 | N11 | |
Z0 | N1 | N5 | N7 | N8 | N9 | N9 | N9 | N9 | N9 | N9 | N9 | N9 |
P1 | Z0 | N2 | N2 | N3 | N5 | N7 | N7 | N9 | N9 | N9 | N9 | N9 |
P2 | Z0 | N1 | N1 | N3 | N3 | N4 | N5 | N7 | N7 | N7 | N7 | N9 |
P3 | Z0 | N1 | N1 | N2 | N2 | N3 | N4 | N5 | N6 | N6 | N7 | N8 |
P4 | Z0 | Z0 | N1 | N1 | N2 | N2 | N3 | N4 | N5 | N5 | N6 | N7 |
P5 | Z0 | Z0 | Z0 | N1 | N1 | N1 | N2 | N3 | N3 | N5 | N5 | N6 |
P6 | Z0 | Z0 | Z0 | Z0 | N1 | N1 | N1 | N3 | N3 | N5 | N5 | N6 |
P7 | Z0 | Z0 | Z0 | Z0 | Z0 | Z0 | Z0 | N2 | N2 | N4 | N5 | N5 |
P8 | Z0 | Z0 | Z0 | Z0 | Z0 | Z0 | Z0 | N1 | N2 | N6 | N7 | N8 |
0 | −1 | −2 | −3 | −3.5 | −4 | −4.5 | −5 | −5.5 | −6 | −7 | −8 | |
0 | −0.16 | −0.8 | −0.97 | −0.97 | −0.97 | −0.98 | −0.98 | −0.98 | −0.98 | −0.98 | −0.98 | −0.98 |
0.5 | −0.16 | −0.3 | −0.6 | −0.6 | −0.81 | −0.89 | −0.89 | −0.97 | −0.97 | −0.97 | −0.97 | −0.97 |
1 | −0.06 | −0.16 | −0.4 | −0.4 | −0.67 | −0.81 | −0.81 | −0.81 | −0.85 | −0.97 | −0.97 | −0.97 |
1.5 | −0.04 | −0.16 | −0.3 | −0.3 | −0.53 | −0.67 | −0.67 | −0.7 | −0.7 | −0.7 | −0.81 | −0.98 |
2 | −0.04 | −0.16 | −0.3 | −0.3 | −0.43 | −0.56 | −0.56 | −0.6 | −0.64 | −0.7 | −0.8 | −0.9 |
2.5 | −0.04 | −0.05 | −0.16 | −0.16 | −0.32 | −0.46 | −0.46 | −0.5 | −0.54 | −0.6 | −0.7 | −0.81 |
3 | −0.06 | −0.06 | −0.16 | −0.16 | −0.26 | −0.45 | −0.45 | −0.45 | −0.5 | −0.58 | −0.7 | −0.81 |
3.5 | −0.04 | −0.04 | −0.16 | −0.16 | −0.21 | −0.40 | −0.4 | −0.4 | −0.47 | −0.6 | −0.7 | −0.81 |
4 | −0.04 | −0.04 | −0.07 | −0.07 | −0.15 | −0.31 | −0.31 | −0.3 | −0.39 | −0.58 | −0.61 | −0.71 |
4.5 | −0.04 | −0.04 | −0.04 | −0.04 | −0.14 | −0.25 | −0.25 | −0.3 | −0.4 | −0.57 | −0.60 | −0.69 |
5 | −0.04 | −0.04 | −0.04 | −0.04 | −0.1 | −0.23 | −0.23 | −0.3 | −0.36 | −0.49 | −0.6 | −0.6 |
Vehicle Speed (km/h) | |||
---|---|---|---|
20 | 4 | 100 | 0 |
30 | 4 | 20 | 0 |
40 | 4 | 30 | 0 |
50 | 4 | 35 | 0 |
60 | 4 | 25 | 0 |
Test Scenario | Pedestrian Speed (km/h) | Vehicle Speed (km/h) |
---|---|---|
CVFA (Car-to-VRU Farside Adult)-25 | 6.5 | 20–60 |
CVFA-50 | 6.5 | 20–60 |
CVNA (Car-to-VRU Farside Adult)-25 | 5 | 20–60 |
CVNA-75 | 5 | 20–60 |
Initial Vehicle Speed (km/h) | Longitudinal Initial Distance of the Vehicle Relative to the Pedestrian (m) | Pedestrian Walking Speed (km/h) |
---|---|---|
20 | 12.446 | 6.5 |
30 | 18.669 | 6.5 |
40 | 24.890 | 6.5 |
50 | 31.115 | 6.5 |
60 | 37.338 | 6.5 |
Initial Vehicle Speed (km/h) | Longitudinal Initial Distance of a Vehicle Relative to a Pedestrian(m) | Pedestrian Walking Speed (km/h) |
---|---|---|
20 | 13.846 | 6.5 |
30 | 20.7692 | 6.5 |
40 | 27.692 | 6.5 |
50 | 34.6153 | 6.5 |
60 | 41.5383 | 6.5 |
Initial Vehicle Speed (km/h) | Longitudinal Initial Distance of the Vehicle Relative to the Pedestrian (m) | Pedestrian Walking Speed (km/h) |
---|---|---|
20 | 10.18 | 5 |
30 | 15.27 | 5 |
40 | 20.36 | 5 |
50 | 25.45 | 5 |
60 | 30.54 | 5 |
Initial Vehicle Speed (km/h) | Longitudinal Initial Distance of the Vehicle Relative to the Pedestrian (m) | Pedestrian Walking Speed (km/h) |
---|---|---|
20 | 13.82 | 5 |
30 | 20.73 | 5 |
40 | 27.64 | 5 |
50 | 34.55 | 5 |
60 | 41.46 | 5 |
Speed (km/h) | Testing Scenario | Pedestrian Speed (km/h) | Alarm Duration (s) | Brake Duration (s) | Braking Distance (m) | False, Missed Alarms | Maximum Brake Deceleration (m/s2) | Brake-Stop Relative Distance (m) | Collision Occurred |
---|---|---|---|---|---|---|---|---|---|
20 | CVFA-25 | 6.5 | 1.25 | 1.75 | 3.48 | 0 | −4.5 | 2.08 | NO |
CVFA-50 | 6.5 | 1.5 | 1.5 | 3.46 | 0 | −4.6 | 2.08 | NO | |
CVNA-25 | 5 | 0.83 | 1.55 | 3.47 | 0 | −4.5 | 2.08 | NO | |
CVNA-75 | 5 | 1.5 | 1.5 | 3.47 | 0 | −4.62 | 2.1 | NO | |
30 | CVFA-25 | 6.5 | 1.1 | 2.04 | 7.14 | 0 | −5.9 | 2.17 | NO |
CVFA-50 | 6.5 | 1.36 | 1.97 | 7.16 | 0 | −6.1 | 2.18 | NO | |
CVNA-25 | 5 | 0.74 | 2.11 | 7.1 | 0 | −6.19 | 2.14 | NO | |
CVNA-75 | 5 | 1.34 | 2.06 | 7.15 | 0 | −6 | 2.18 | NO | |
40 | CVFA-25 | 6.5 | 1 | 2.65 | 11.86 | 0 | −6 | 2.608 | NO |
CVFA-50 | 6.5 | 1.2 | 2.67 | 11.86 | 0 | −6.1 | 2.65 | NO | |
CVNA-25 | 5 | 0.53 | 2.52 | 11.84 | 0 | −6.11 | 2.6 | NO | |
CVNA-75 | 5 | 1.19 | 2.58 | 11.88 | 0 | −6.1 | 2.61 | NO | |
50 | CVFA-25 | 6.5 | 0.74 | 3.07 | 17.94 | 0 | −6 | 2.9 | NO |
CVFA-50 | 6.5 | 0.97 | 3.08 | 17.99 | 0 | −5.97 | 2.86 | NO | |
CVNA-25 | 5 | 0.34 | 12 | 18.03 | 0 | −6.02 | 2.86 | NO | |
CVNA-75 | 5 | 0.97 | 3.06 | 18.05 | 0 | −6.1 | 2.9 | NO | |
60 | CVFA-25 | 6.5 | 3.6 | 3.6 | 26.67 | 0 | −6 | 3.3 | NO |
CVFA-50 | 6.5 | 3.6 | 3.6 | 26.66 | 0 | −6 | 3.3 | NO | |
CVNA-25 | 5 | 3.78 | 3.78 | 27.24 | 0 | −6 | 3.3 | NO | |
CVNA-75 | 5 | 3.77 | 3.77 | 26.74 | 0 | −6 | 3.3 | NO |
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Yang, W.; Zhang, X.; Lei, Q.; Cheng, X. Research on Longitudinal Active Collision Avoidance of Autonomous Emergency Braking Pedestrian System (AEB-P). Sensors 2019, 19, 4671. https://doi.org/10.3390/s19214671
Yang W, Zhang X, Lei Q, Cheng X. Research on Longitudinal Active Collision Avoidance of Autonomous Emergency Braking Pedestrian System (AEB-P). Sensors. 2019; 19(21):4671. https://doi.org/10.3390/s19214671
Chicago/Turabian StyleYang, Wei, Xiang Zhang, Qian Lei, and Xin Cheng. 2019. "Research on Longitudinal Active Collision Avoidance of Autonomous Emergency Braking Pedestrian System (AEB-P)" Sensors 19, no. 21: 4671. https://doi.org/10.3390/s19214671
APA StyleYang, W., Zhang, X., Lei, Q., & Cheng, X. (2019). Research on Longitudinal Active Collision Avoidance of Autonomous Emergency Braking Pedestrian System (AEB-P). Sensors, 19(21), 4671. https://doi.org/10.3390/s19214671