Пример #1
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    def __init__(self, 
                min_x,
                min_y,
                x_sigma, y_sigma,
                **kwargs):

        self.min_x = min_x
        self.min_y = min_y
        x_driver = PDDriver(sigma=x_sigma, p_des=0., a_max=1.0, axis=0, k_p=2.0, k_d=5.0, **kwargs)
        y_driver =  PDDriver(sigma=y_sigma,p_des=0., a_max=1.0, axis=1, k_p=2.0, k_d=5.0, **kwargs)
        super(EgoDriver, self).__init__(x_driver,y_driver,**kwargs)
Пример #2
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 def __init__(self, 
             target_lane, min_front_x, min_back_x,
             x_des, y_des,
             x_sigma, y_sigma,
             **kwargs):
     self.target_lane = target_lane
     self.min_front_x = min_front_x
     self.min_back_x = min_back_x
     x_driver =  PDDriver(sigma=x_sigma, p_des=x_des, a_max=1.0, axis=0, **kwargs)
     y_driver =  PDDriver(sigma=y_sigma,p_des=y_des, a_max=1.0, axis=1, **kwargs)
     self.on_target = True
     super(EnvDriver, self).__init__(x_driver,y_driver,**kwargs)
Пример #3
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 def __init__(self, 
             aggressive,
             min_x,
             min_y,
             x_sigma, y_sigma,
             **kwargs):
     self.aggressive = aggressive
     self.next_target_lane = None
     self.min_x = min_x
     self.min_y = min_y
     x_driver =  PDDriver(sigma=x_sigma, p_des=0., a_max=1.0, axis=0, k_p=2.0, k_d=5.0, **kwargs)
     y_driver =  PDDriver(sigma=y_sigma,p_des=0., a_max=1.0, axis=1, k_p=2.0, k_d=5.0, **kwargs)
     super(EnvDriver, self).__init__(x_driver,y_driver,**kwargs)
Пример #4
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 def __init__(self, 
             v_des, y_des,
             x_sigma, y_sigma,
             **kwargs):
     x_driver =  PDriver(sigma=x_sigma, v_des=v_des, a_max=1.0, axis=0, **kwargs)
     y_driver =  PDDriver(sigma=y_sigma, p_des=y_des, a_max=1.0, axis=1, **kwargs)
     super(EgoDriver, self).__init__(x_driver,y_driver,**kwargs)
Пример #5
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    def add_car(self, x, y, vx, vy, v_des, p_des, direction, theta):
        if y < 4.:
            idx = self._lower_lane_next_idx
            self._lower_lane_next_idx += 1
            if self._lower_lane_next_idx > int(self.max_veh_num / 2.):
                self._lower_lane_next_idx = 1
        elif y > 4.:
            idx = self._upper_lane_next_idx
            self._upper_lane_next_idx += 1
            if self._upper_lane_next_idx > self.max_veh_num:
                self._upper_lane_next_idx = int(self.max_veh_num / 2.) + 1
        car = Car(idx=idx,
                  length=self.car_length,
                  width=self.car_width,
                  color=random.choice(RED_COLORS),
                  max_accel=self.car_max_accel,
                  max_speed=self.car_max_speed,
                  max_rotation=0.,
                  expose_level=self.car_expose_level)
        driver = YNYDriver(idx=idx,
                           car=car,
                           dt=self.dt,
                           x_driver=IDMDriver(idx=idx,
                                              car=car,
                                              sigma=self.driver_sigma,
                                              s_des=self.s_des,
                                              s_min=self.s_min,
                                              axis=0,
                                              min_overlap=self.min_overlap,
                                              dt=self.dt),
                           y_driver=PDDriver(idx=idx,
                                             car=car,
                                             sigma=0.,
                                             axis=1,
                                             dt=self.dt))
        car.set_position(np.array([x, y]))
        car.set_velocity(np.array([vx, vy]))
        car.set_rotation(theta)
        driver.x_driver.set_v_des(v_des)
        driver.x_driver.set_direction(direction)
        driver.y_driver.set_p_des(p_des)
        if np.random.rand() < self.yld:
            driver.set_yld(True)
        else:
            driver.set_yld(False)

        self._cars.append(car)
        self._drivers.append(driver)
        return car, driver
Пример #6
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 def __init__(self, v_des, y_des, x_sigma, y_sigma, **kwargs):
     # x_driver =  PDriver(sigma=x_sigma, v_des=v_des, a_max=1.0, axis=0, **kwargs)
     x_driver = IDMDriver(sigma=x_sigma,
                          v_des=10.0,
                          s_des=1.0,
                          s_min=0.5,
                          axis=0,
                          min_overlap=0.,
                          **kwargs)
     y_driver = PDDriver(sigma=y_sigma,
                         p_des=y_des,
                         a_max=1.0,
                         axis=1,
                         **kwargs)
     super(EgoDriver, self).__init__(x_driver, y_driver, **kwargs)
Пример #7
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    def add_car(self, idx, x, y, vx, vy, v_des, p_des, direction, theta):
        car = Car(idx=idx,
                  length=self.car_length,
                  width=self.car_width,
                  color=random.choice(RED_COLORS),
                  max_accel=self.car_max_accel,
                  max_speed=self.car_max_speed,
                  expose_level=self.car_expose_level)
        driver = TwoTDriver(idx=idx,
                            car=car,
                            dt=self.dt,
                            x_driver=IDMDriver(idx=idx,
                                               car=car,
                                               sigma=self.driver_sigma,
                                               s_min=self.s_min,
                                               axis=0,
                                               min_overlap=self.min_overlap,
                                               dt=self.dt),
                            y_driver=PDDriver(idx=idx,
                                              car=car,
                                              sigma=0.,
                                              axis=1,
                                              dt=self.dt))
        car.set_position(np.array([x, y]))
        car.set_velocity(np.array([vx, vy]))
        car.set_rotation(theta)
        driver.x_driver.set_v_des(v_des)
        driver.x_driver.set_direction(direction)
        driver.y_driver.set_p_des(p_des)
        driver.t1 = np.random.rand()
        if np.random.rand() < self.yld:
            driver.yld = True
            driver.t2 = np.random.rand() * 1.5 - 0.5
        else:
            driver.yld = False
            driver.t2 = None

        self._cars.append(car)
        self._drivers.append(driver)
        return car, driver
Пример #8
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 def __init__(self, aggressive, x_sigma, y_sigma, car, **kwargs):
     self.aggressive = aggressive
     self.target_lane = None
     self.car = car
     if self.aggressive:
         v_des = np.random.uniform(0.5, 1.0)
         s_des = np.random.uniform(0.8, 1.0)
         s_min = np.random.uniform(0.4, 0.6)
         min_overlap = -self.car.width / 2.
         self.min_front_x = self.car.length + s_min
         self.min_back_x = self.car.length + s_min
         self.min_advantage = self.car.length / 2.
     else:
         v_des = np.random.uniform(0.0, 0.5)
         s_des = np.random.uniform(0.9, 1.1)
         s_min = np.random.uniform(0.5, 0.7)
         min_overlap = self.car.width / 2.
         self.min_front_x = self.car.length + s_min
         self.min_back_x = self.car.length + s_min
         self.min_advantage = self.car.length
     x_driver = IDMDriver(sigma=x_sigma,
                          v_des=v_des,
                          s_des=s_des,
                          s_min=s_min,
                          axis=0,
                          min_overlap=min_overlap,
                          car=car,
                          **kwargs)
     y_driver = PDDriver(sigma=y_sigma,
                         p_des=0.,
                         a_max=1.0,
                         axis=1,
                         k_p=2.0,
                         k_d=5.0,
                         car=car,
                         **kwargs)
     self.on_target = True
     super(EnvDriver, self).__init__(x_driver, y_driver, car=car, **kwargs)
Пример #9
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    def __init__(self,
                 yld=0.5,
                 vs_actions=[0.,0.5,3.],
                 t_actions=[-1.5,0.,1.5],
                 desire_speed=3.,
                 speed_cost=0.01,
                 t_cost=0.01,
                 control_cost=0.01,
                 collision_cost=1.,
                 outroad_cost=1.,
                 goal_reward=1.,
                 road=Road([RoadSegment([(-100.,0.),(100.,0.),(100.,8.),(-100.,8.)]),
                             RoadSegment([(-2,-10.),(2,-10.),(2,0.),(-2,0.)])]),
                 n_cars=3,
                 num_updates=1,
                 dt=0.1,
                 **kwargs):

        self.yld = yld
        self.vs_actions = vs_actions
        self.t_actions = t_actions
        # we use target value instead of target change so system is Markovian
        self.rl_actions = list(itertools.product(vs_actions,t_actions))
        self.num_updates = num_updates

        self.desire_speed = desire_speed
        self.speed_cost = speed_cost
        self.t_cost = t_cost
        self.control_cost = control_cost
        self.collision_cost = collision_cost
        self.outroad_cost = outroad_cost
        self.goal_reward = goal_reward
        self._collision = False
        self._outroad = False
        self._goal = False
        self._intentions = []

        car_length=5.0
        car_width=2.0
        car_max_accel=10.0
        car_max_speed=40.0
        car_expose_level=4
        cars = [Car(idx=cid, length=car_length, width=car_width, color=random.choice(BLUE_COLORS),
                          max_accel=car_max_accel, max_speed=car_max_speed,
                          expose_level=car_expose_level) for cid in range(n_cars)
                ]

        driver_sigma = 0.0
        s_min = 2.0
        min_overlap = 1.0
        drivers = []
        drivers.append(EgoDriver(trajectory=EgoTrajectory(),idx=0,car=cars[0],dt=dt))
        for did in range(1,n_cars):
            driver = TwoTDriver(idx=did, car=cars[did], dt=dt,
                        x_driver=IDMDriver(idx=did, car=cars[did], sigma=driver_sigma, s_min=s_min, axis=0, min_overlap=min_overlap, dt=dt), 
                        y_driver=PDDriver(idx=did, car=cars[did], sigma=driver_sigma, axis=1, dt=dt)) 
            drivers.append(driver)

        super(TIntersection, self).__init__(
            road=road,
            cars=cars,
            drivers=drivers,
            dt=dt,
            **kwargs,)