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Paper Review: Automated On-Ramp Merging for Congested Traffic Situations

Paper Review: Automated On-Ramp Merging for Congested Traffic Situations. Emmanuel Sean Peters. Objectives & Results. Develop an automated merging system that: I. Permits merging traffic to fluidly enter the major road to avoid congestion on the minor road

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Paper Review: Automated On-Ramp Merging for Congested Traffic Situations

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  1. Paper Review:Automated On-Ramp Merging for Congested Traffic Situations Emmanuel Sean Peters

  2. Objectives & Results Develop an automated merging system that: I. Permits merging traffic to fluidly enter the major road to avoid congestion on the minor road II. Modifies the speed of vehicles on main road to minimize the effect on the already congested main road A fuzzy controller and decision algorithm that uses Vehicle-to-Infrastructure communication is designed and tested using three production vehicles

  3. Objectives & Results Solved one of the major causes of congestion in urban environments: merging from minor to major roads. • validated using simulations and real experiments involving mass produced vehicles • system successfully & safely merged a car from ramp onto the main road at low speeds

  4. Outline • Introduction • Control Architecture • Description of Vehicles & LCS • Automated Ramp Entrance System • Experiments • Conclusion

  5. Outline: Introduction • Increase in number of drivers and vehicles and cars on road over past few decades • Urban environments are most congested • Advanced Driver-Assisted Systems (ADAS) • Ultimate decision is the driver’s; driver may be incorrect • Simulations are encouraging but… • Gasoline-propelled vehicle dynamics at very low speeds are highly non-linear and difficult to model

  6. Outline: Architecture AUTOPIA Program: The development of automatic cars using mass produced vehicles and tests on real roads

  7. Outline: Vehicles & LCS Automated Vehicles • 2 Citroёn C3s (Gasoline-Propelled) • 1 BerlingoCitroёn (Electric) Local Control Station (LCS) • Detecting risky traffic situations & advising the vehicles involved

  8. Outline: Automated Ramp Entrance System (I) Design of system divided into 3 phases • Detection • Optimal Merging Algorithm • Intelligent Controller Design – uses reference data from optimal merging algorithm

  9. Outline: Automated Ramp Entrance System (II) Decision System - Ensures sufficient headway is achieved by the time the merging point is reached Control System - Fuzzy logic - Relies on SpeedError& Distance Error values

  10. Outline: Experiments

  11. Details: Decision System (I)

  12. Details: Decision System (II)

  13. Details: Control System Fuzzy Logic • Solutions based on vague information • Mamdani Inference: max-min method • Membership functions – maps input a value between 0 and 1 Inputs: • SpeedError • DistanceError Output: • Pedal [-1,1] Weights: • Throttle – 40% • Break – 10%

  14. Details: Control System

  15. Details: Control System DistanceError Difference between leading & trailing vehicles’ speeds SpeedError Difference between leading & trailing vehicles’ speeds - • [-3,3]kmh Three membership functions & three linguistic labels - Positive linguistic used to accelerate/brake for SpeedError/DistanceError • - Negative linguistic used to brake/accelerate for SpeedError/DistanceError - Center linguistic used to indicate that trailing car maintaining target speed or distance

  16. Details: Control System • Output variable, Pedal [-1, 1], as a function of fuzzy input variables SpeedError and Distance Error; determines which actuator is pressed .

  17. Details: Control System Output variable as Sugeno singletons

  18. Details: Simulation Results Scenario 1: x20=-18 and x30=-8, Scenario 2: x20=-26 and x30=-16 L=10m, initial speed=3m/s

  19. Details: Simulation Results Scenario 1 Scenario 2

  20. Details: Simulation Results Scenario 1 Scenario 2

  21. Details: Experiments

  22. http://www.iai.csic.es/autopia/Videos/Merging.wmv

  23. Questions?

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