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Cooperative DYC System Design for
                 Optimal Vehicle Handling Enhancement




                                   Virginia Tech
                                   C N E F RV H LE
                                    E T R O E IC
                                   S S E S& S F T
                                    Y TM     A EY

                   S.H. Tamaddoni *, S. Taheri, M. Ahmadian
                       Center for Vehicle Systems and Safety (CVeSS)
                          Department of Mechanical Engineering
                                     Virginia Tech, USA

                                * email: tamaddoni@vt.edu
Virginia Tech
 ACC 2010 - s1
Outline

                  Motivations
                  Game Theory
                  System Model                GAME
                                              THEORY

                  Control Derivation
                  Simulation and Results
                  Conclusions

Virginia Tech
 ACC 2010 - s2
Motivations

                  Vehicle Stability Control (VSC) improves vehicle
                     stability and handling performance.
                    Ferguson (2007) has shown that VSC can reduce
                      • single-vehicle crashes by 30-50% in cars and SUVs,
                      • fatal rollover crashes by 70-90% regardless of vehicle type.




                                                         © www.racq.com.au
Virginia Tech
 ACC 2010 - s3
Interaction Model
                  Driver / VSC interaction model:



                      Driver’s         Driver’s
                  Processing Unit     Action Unit

                                                     Vehicle System

                                    VSC Processing
                                     & Action Unit



Virginia Tech
 ACC 2010 - s4
Game Theory

                  The systems are governed by several controllers, i.e., decision
                     makers or players, where each controller aims to minimize its
                     own cost function.
                    No player can improve his/her payoff
                     by deviating unilaterally from his/her
                     Nash strategy once the equilibrium is
                     attained.
                    For a game with a sufficiently small
                     planning horizon, there is a unique
                     linear feedback Nash equilibrium that
                                                                       © Andrew Gelman
                     can be computed by solving a set of
                     so-called Nash Riccati differential equations.
Virginia Tech
 ACC 2010 - s5
Primary Objectives

                  Driver:
                      • Steer the vehicle through the maneuver
                    Controller:
                      • Guarantee vehicle handling stabiltity where the desired
                         value of yaw rate is obtained from Wong (2001):
                                              vx
                      ψ desired =
                                                             δF
                                    (lF + lB )(1 + K us v x )
                                                          2




Virginia Tech
 ACC 2010 - s6
Evaluation Model

                  The evaluation vehicle model includes
                    •   longitudinal & lateral dynamics
                    •   yaw, roll, pitch motions
                    •   combined-slip Pacejka tire model
                    •   steering system model       Y
                                                                                        φ             sR
                                                    X                                                           sL
                    •   4-wheel ABS system              Z




                                                                                       ψ      FyBL
                                                                                  vy              FxBL
                                                                                        vx                 FzBL      lB
                                                     FyFR

                                                                          FyFL                             lF
                                                     FxFR
                                                                           FxFL
                                              α FR          FzFR
                                                       δF
                                                                   α FL          δF
                                                                                        FzFL
Virginia Tech
 ACC 2010 - s7
Control Model

                   2-DOF bicycle model                                                CG     ψ

                       • y: absolute lateral position                      Y
                       • ψ: absolute yaw angle
                                                                                 X

                                            δ
                 x =Ax + B1u1 + B 2 u2 , u1 = F , u2 =M zc
        0         1                          vx               0                     0 
                                                                                                     0
              C + Cα B                                    lF Cα F − lB Cα B          C 
                                                                                                      0
        0 − α F                              0    −vx −                             αF 
                 mv x                                            mv x               m              
     = 
      A                                                              =       , B1   =          ,B   0
          0        0                          0               1                           0  2        
                                                                                            
         lF Cα F − lB Cα B                            lF Cα F + lB Cα B 
                                                        2            2
                                                                                      lF Cα F       1
        0                                    0      −                               Iz             Iz 
                                                                                                       
                I z vx                                       I z vx                         
                 x(t0 ) = [ y0 y0 ψ 0 ψ 0 ]
                                      
                                          T


Virginia Tech
 ACC 2010 - s8
Theorem 1: Certain system

                 Let the strategies (δ , M ) be such that there exist
                                                *
                                                f
                                                      *
                                                      zc

                   solutions ( P1 , P2 ) to the differential equations
                               ∂H i * *                 ∂H i * *
                                                                   *
                                                                                     ∂γ
                          Pi = i ) −
                                   (                        ( x , δ f , M zc , Pi ) . j ,
                       d
                             −       x , δ f , M zc , P
                                                 *                        *

                       dt       ∂x                      ∂ui                          ∂x
                 in which,
                  H i ( x, δ f , M zc , Pi )= xT Qi x + ri1δ f2 + ri 2 M zc + PiT ( Ax + B1δ f + B 2 M zc ) ,
                                                                         2


                 such that,
                                           ∂H i * * *
                                           ∂ui
                                               ( x , δ f , M zc , Pi ) = 0,
                 and x* satisfies
                                             x* (t ) = Ax* (t ) + B1δ * + B 2 M zc ,
                                                                     f
                                                                                 *

                                             *
                                             x (t0 ) = x0 .
                                            
Virginia Tech
 ACC 2010 - s9
Theorem 1: Certain system

                 Then,
                   (δ   *
                        f   , M zc )
                           is a Nash equilibrium with respect to the
                                *



                  memoryless perfect state information structure, and
                  the following equalities hold:
                                                                  K i (t ) x (t )
                                                 −
                                       ui* = − Rii 1BT Pi (t ),
                                                     i

                                       i ∈ {δ , M } , u ∈ {δ f , M zc }




Virginia Tech
ACC 2010 - s10
Theorem 2: linear feedback

                 Suppose ( K1 , K 2 ) satisfy the coupled Riccati equations
                   
                   K1 =− K1A − Q1 + K1S1K1 + K1S 2 K 2 + K 2S 2 K1 − K 2S1 K22 ,
                      − AT K 1
                   
                   K 2 = − K 2 A − Q 2 + K 2S 2 K 2 + K 2S1K1 + K1S1K 2 − K1S 2 K ,
                       − AT K 2                                                  11


                 where
                         = Bi R ii1BT , Sij B j R −1R ij R −1BTj .
                          Si =  −
                                    i             jj       jj



                 Then the pair of strategies
                                (δ   *
                                     f   , M zc ) =(t ) x, − R 22 BT K 2 (t ) x )
                                             *
                                                  ( −R111B1T K1
                                                      −         −1
                                                                   2


                 is a linear feedback Nash equilibrium.


Virginia Tech
ACC 2010 - s11
Simulation

                  Vehicle: 2-axle Van




                  Maneuver: standard “Moose” test at 60 kph




Virginia Tech
ACC 2010 - s12
Simulation

                  Selected Q & R matrices:

      1 0   0  0                            0 0 0 0
      0 0.1 0  0                            0 0.1 0 0
  = =
   Qδ               , QM                              ,
      0 0 0 . 0 1                           0 0 0 0
                                                     
       0 0  0 0  0
                   .                          1 0 0 0 1
                                              
                    = 10, R δ M 0,
                    R δδ =
                    = 10−5 , R M δ 103
                    R MM =




Virginia Tech
ACC 2010 - s13
Results




                 unit  strategy      Nash         LQR

                    Driver           97,363      162,060

                  Controller         9,734,700   16,204,000

Virginia Tech
ACC 2010 - s14
Conclusions

                  A novel cooperative optimal control strategy for
                   driver/VSC interactions is introduced:
                    • The driver’s steering input and the controller’s compensated
                      yaw moment are defined as two dynamic players of the
                      game “vehicle stability”

                    • GT-based VSC is optimally more involved in stabilizing the
                      vehicle compared to the common LQR controllers.

                    • GT-based VSC improves vehicle handling stability more
                      than the common LQR controllers can do with the same
                      driver and controller cost matrices.

Virginia Tech
ACC 2010 - s15
Thank You !



                    GAME
                   THEORY



Virginia Tech
ACC 2010 - s16

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2010 IEEE American Control Conference

  • 1. Cooperative DYC System Design for Optimal Vehicle Handling Enhancement Virginia Tech C N E F RV H LE E T R O E IC S S E S& S F T Y TM A EY S.H. Tamaddoni *, S. Taheri, M. Ahmadian Center for Vehicle Systems and Safety (CVeSS) Department of Mechanical Engineering Virginia Tech, USA * email: tamaddoni@vt.edu Virginia Tech ACC 2010 - s1
  • 2. Outline  Motivations  Game Theory  System Model GAME THEORY  Control Derivation  Simulation and Results  Conclusions Virginia Tech ACC 2010 - s2
  • 3. Motivations  Vehicle Stability Control (VSC) improves vehicle stability and handling performance.  Ferguson (2007) has shown that VSC can reduce • single-vehicle crashes by 30-50% in cars and SUVs, • fatal rollover crashes by 70-90% regardless of vehicle type. © www.racq.com.au Virginia Tech ACC 2010 - s3
  • 4. Interaction Model  Driver / VSC interaction model: Driver’s Driver’s Processing Unit Action Unit Vehicle System VSC Processing & Action Unit Virginia Tech ACC 2010 - s4
  • 5. Game Theory  The systems are governed by several controllers, i.e., decision makers or players, where each controller aims to minimize its own cost function.  No player can improve his/her payoff by deviating unilaterally from his/her Nash strategy once the equilibrium is attained.  For a game with a sufficiently small planning horizon, there is a unique linear feedback Nash equilibrium that © Andrew Gelman can be computed by solving a set of so-called Nash Riccati differential equations. Virginia Tech ACC 2010 - s5
  • 6. Primary Objectives  Driver: • Steer the vehicle through the maneuver  Controller: • Guarantee vehicle handling stabiltity where the desired value of yaw rate is obtained from Wong (2001): vx ψ desired =  δF (lF + lB )(1 + K us v x ) 2 Virginia Tech ACC 2010 - s6
  • 7. Evaluation Model  The evaluation vehicle model includes • longitudinal & lateral dynamics • yaw, roll, pitch motions • combined-slip Pacejka tire model • steering system model Y φ sR X sL • 4-wheel ABS system Z ψ FyBL vy FxBL vx FzBL lB FyFR FyFL lF FxFR FxFL α FR FzFR δF α FL δF FzFL Virginia Tech ACC 2010 - s7
  • 8. Control Model  2-DOF bicycle model CG ψ • y: absolute lateral position Y • ψ: absolute yaw angle X  δ x =Ax + B1u1 + B 2 u2 , u1 = F , u2 =M zc 0 1 vx 0   0   0 C + Cα B lF Cα F − lB Cα B   C  0 0 − α F 0 −vx −   αF   mv x mv x   m    =  A =  , B1 = ,B 0 0 0 0 1 0  2        lF Cα F − lB Cα B lF Cα F + lB Cα B  2 2  lF Cα F  1 0 0 −   Iz   Iz     I z vx I z vx    x(t0 ) = [ y0 y0 ψ 0 ψ 0 ]   T Virginia Tech ACC 2010 - s8
  • 9. Theorem 1: Certain system Let the strategies (δ , M ) be such that there exist * f * zc solutions ( P1 , P2 ) to the differential equations ∂H i * * ∂H i * * * ∂γ Pi = i ) − ( ( x , δ f , M zc , Pi ) . j , d − x , δ f , M zc , P * * dt ∂x ∂ui ∂x in which, H i ( x, δ f , M zc , Pi )= xT Qi x + ri1δ f2 + ri 2 M zc + PiT ( Ax + B1δ f + B 2 M zc ) , 2 such that, ∂H i * * * ∂ui ( x , δ f , M zc , Pi ) = 0, and x* satisfies  x* (t ) = Ax* (t ) + B1δ * + B 2 M zc ,  f *  *  x (t0 ) = x0 .  Virginia Tech ACC 2010 - s9
  • 10. Theorem 1: Certain system Then, (δ * f , M zc ) is a Nash equilibrium with respect to the * memoryless perfect state information structure, and the following equalities hold: K i (t ) x (t ) − ui* = − Rii 1BT Pi (t ), i i ∈ {δ , M } , u ∈ {δ f , M zc } Virginia Tech ACC 2010 - s10
  • 11. Theorem 2: linear feedback Suppose ( K1 , K 2 ) satisfy the coupled Riccati equations  K1 =− K1A − Q1 + K1S1K1 + K1S 2 K 2 + K 2S 2 K1 − K 2S1 K22 , − AT K 1  K 2 = − K 2 A − Q 2 + K 2S 2 K 2 + K 2S1K1 + K1S1K 2 − K1S 2 K , − AT K 2 11 where = Bi R ii1BT , Sij B j R −1R ij R −1BTj . Si = − i jj jj Then the pair of strategies (δ * f , M zc ) =(t ) x, − R 22 BT K 2 (t ) x ) * ( −R111B1T K1 − −1 2 is a linear feedback Nash equilibrium. Virginia Tech ACC 2010 - s11
  • 12. Simulation  Vehicle: 2-axle Van  Maneuver: standard “Moose” test at 60 kph Virginia Tech ACC 2010 - s12
  • 13. Simulation  Selected Q & R matrices: 1 0 0 0  0 0 0 0 0 0.1 0 0  0 0.1 0 0 = = Qδ  , QM  , 0 0 0 . 0 1  0 0 0 0      0 0 0 0  0 . 1 0 0 0 1  = 10, R δ M 0, R δδ = = 10−5 , R M δ 103 R MM = Virginia Tech ACC 2010 - s13
  • 14. Results unit strategy Nash LQR Driver 97,363 162,060 Controller 9,734,700 16,204,000 Virginia Tech ACC 2010 - s14
  • 15. Conclusions  A novel cooperative optimal control strategy for driver/VSC interactions is introduced: • The driver’s steering input and the controller’s compensated yaw moment are defined as two dynamic players of the game “vehicle stability” • GT-based VSC is optimally more involved in stabilizing the vehicle compared to the common LQR controllers. • GT-based VSC improves vehicle handling stability more than the common LQR controllers can do with the same driver and controller cost matrices. Virginia Tech ACC 2010 - s15
  • 16. Thank You ! GAME THEORY Virginia Tech ACC 2010 - s16