PDE Seminar

Topics on PDE

  • 演讲者:FAN Haitao(乔治城大学)

  • 时间:2019-05-17 20:00-22:00

  • 地点:慧园3栋 415报告厅

May 17 (Friday), 20:00--22:00, venue: 415;

May 20 (Monday), 16:00--18:00, venue: 415;

May 22 (Wednesday), 19:00--21:00, venue: 415.


Titles and abstracts: 

Part 1. Hysteresis and traffic jams

Abstract:
Stop-and-go waves, also called phantom jams, are often observed in real traffic flows but can be produced neither by the classical Lighthill-Whitham-Richards (LWR) model nor by other known continuum traffic models. To capture stop-and-go waves, we add hysteresis to the LWR model. For the model we propose, all possible viscous waves are found, and necessary and sufficient conditions for their existence are provided. In particular, deceleration and acceleration shocks appear; the latter were never rigorously defined before, in spite of the fact that they were observed  in real traffic flows. Stop-and-go waves can be  constructed by a pair of deceleration and acceleration shocks that completes a hysteresis cycle, illustrating how hysteresis loops lead to stop-and-go waves. Furthermore, stop-and-go waves are not present where anticipation (i.e., negative hysteresis) loops exist. Riemann solutions are then found for all possible Riemann data.  As a consequence, it is explicitly shown that, in the phase region where hysteresis loops exist, a sufficient deviation in speed of a few vehicles in an otherwise uniform car platoon can generate stop-and-go waves. While a one-time small speed deviation decays, it is demonstrated numerically that frequent small perturbations of drivers' mood will generate stop-and-go waves,  confirming that a uniform speed car platoon is metastable in congested zone, agreeing observations of real traffic experiments. In the region where there are negative hysteresis loops, the speed variation decays.

Part 2. Title:
Traffic Jam Reduction Using Controlled Autonomous Vehicles, A Macroscopic Model Approach

Abstract:
Dampening traffic jams using a controlled autonomous vehicle (CAV) is formulated as an initial and interior boundary value problem for macroscopic traffic models. A control policy for dissipating speed oscillations is proposed. The optimal controlled speed of CAV for preventing the slow segment of traffic from propagating into the platoon behind the controlled vehicle is found for general macroscopic traffic models. The control policy's parameter selection procedure and the control algorithm to make the control effective are specified. The control strategy is tested on a macroscopic traffic model involving hysteresis capable of exhibiting stop-and-go waves. The robustness of optimal controlled speed is studied. A numerical example of traffic on a ring road demonstrating the control strategy shows that it can smooth out speed oscillations to achieve a uniform speed and spacing for the platoon, faster than the initial average speed if the fundamental diagram is concave.

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Lecture Plan: 

(If audience are graduate students or senior undergrad.)

1. Conservation of mass equation. 
Convert Eulerian to Lagrangian coordinate.
Viscous shocks, and rarefaction waves, Lax entropy condition.
Solutions to Riemann problems.


2. LWR model for traffic. deceleration shocks and acceleration rarefaction waves.
Wave interactions.
LWR model dissipates speed oscillations and hence it does not generate traffic jams.
Numerical solutions of LWR model.

3 . Real traffic jams data.
Sugiyama experiment.
Agreement and disagreements between LWR and real traffic.
Past effort of fixing LWR:  other macroscopic models.
Still cannot produce stop-and-go waves.

4. Hysteresis, what is it?
Including hysteresis into LWR.
New model = LWR+hysteresis
Waves of the model for traffic involving hysteresis.
Stop-and-go solutions. This is what past models cannot do.

5. Example solutions simulating real traffic phenomena.
Numerical scheme for the model.
The model's wave tracking analysis and numerical simulation resembles Sugiyama experiment.
A mechanism for traffic jam formation, and simulation.

6. Dissipating traffic jams using controlled autonomous cars