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Control Module for FSD Model.
Converts planned trajectory waypoints into actuator commands:
- Steering angle
- Throttle (acceleration)
- Brake
- Gear (forward/reverse/park)
Uses a combination of:
1. PID controllers for smooth tracking
2. Neural network for adaptive control
3. Stanley controller for lateral control
4. Bicycle model for vehicle dynamics
"""
import torch
import torch.nn as nn
import torch.nn.functional as F
from typing import Dict, Optional, Tuple
import math
class BicycleModel(nn.Module):
"""
Kinematic bicycle model for vehicle dynamics simulation.
Used for both prediction and control.
State: [x, y, heading, speed]
Control: [steering_angle, acceleration]
"""
def __init__(self, wheelbase: float = 2.7, dt: float = 0.1):
super().__init__()
self.wheelbase = wheelbase
self.dt = dt
def forward(
self, state: torch.Tensor, control: torch.Tensor
) -> torch.Tensor:
"""
Args:
state: (B, 4) [x, y, heading, speed]
control: (B, 2) [steering_angle, acceleration]
Returns:
next_state: (B, 4)
"""
x, y, heading, speed = state[:, 0], state[:, 1], state[:, 2], state[:, 3]
steer, accel = control[:, 0], control[:, 1]
# Kinematic bicycle model equations
beta = torch.atan(0.5 * torch.tan(steer)) # slip angle
x_new = x + speed * torch.cos(heading + beta) * self.dt
y_new = y + speed * torch.sin(heading + beta) * self.dt
heading_new = heading + (speed / self.wheelbase) * torch.sin(beta) * self.dt
speed_new = speed + accel * self.dt
# Clamp speed to be non-negative
speed_new = torch.clamp(speed_new, min=0.0)
return torch.stack([x_new, y_new, heading_new, speed_new], dim=-1)
class PIDController(nn.Module):
"""
Learnable PID controller with neural network gain scheduling.
Gains (Kp, Ki, Kd) are predicted based on current state.
"""
def __init__(self, state_dim: int = 6, hidden_dim: int = 64):
super().__init__()
# Gain predictor network
self.gain_net = nn.Sequential(
nn.Linear(state_dim, hidden_dim),
nn.ReLU(),
nn.Linear(hidden_dim, hidden_dim),
nn.ReLU(),
nn.Linear(hidden_dim, 6), # Kp, Ki, Kd for lateral + longitudinal
nn.Softplus(), # Ensure positive gains
)
# Integral buffer (not a parameter, reset per episode)
self.register_buffer('integral_error', torch.zeros(1, 2))
self.register_buffer('prev_error', torch.zeros(1, 2))
def forward(
self,
error: torch.Tensor,
ego_state: torch.Tensor,
dt: float = 0.1,
) -> torch.Tensor:
"""
Args:
error: (B, 2) [lateral_error, longitudinal_error]
ego_state: (B, 6) current vehicle state
dt: time step
Returns:
control: (B, 2) [steering_correction, accel_correction]
"""
B = error.shape[0]
# Predict adaptive gains
gains = self.gain_net(ego_state)
kp = gains[:, :2]
ki = gains[:, 2:4]
kd = gains[:, 4:6]
# PID computation
proportional = kp * error
# Integral (with anti-windup) — handle variable batch sizes, detach to avoid graph retention
if self.integral_error.shape[0] != B:
self.integral_error = torch.zeros(B, 2, device=error.device)
if self.prev_error.shape[0] != B:
self.prev_error = torch.zeros(B, 2, device=error.device)
integral_error = self.integral_error.detach() + error * dt
integral_error = torch.clamp(integral_error, -10.0, 10.0)
self.integral_error = integral_error.detach()
integral = ki * integral_error
# Derivative
derivative = kd * (error - self.prev_error.detach()) / dt
self.prev_error = error.detach()
control = proportional + integral + derivative
return control
def reset(self):
"""Reset integral and derivative buffers."""
self.integral_error.zero_()
self.prev_error.zero_()
class StanleyController(nn.Module):
"""
Stanley lateral controller enhanced with learned parameters.
Computes steering angle based on:
1. Heading error
2. Cross-track error
"""
def __init__(self, k_gain: float = 0.5, k_soft: float = 1.0):
super().__init__()
# Learnable gains
self.k_gain = nn.Parameter(torch.tensor(k_gain))
self.k_soft = nn.Parameter(torch.tensor(k_soft))
def forward(
self,
heading_error: torch.Tensor,
cross_track_error: torch.Tensor,
speed: torch.Tensor,
) -> torch.Tensor:
"""
Args:
heading_error: (B,) heading difference to path
cross_track_error: (B,) lateral distance to path
speed: (B,) current speed
Returns:
steering: (B,) desired steering angle (radians)
"""
# Stanley formula
cross_track_steer = torch.atan2(
self.k_gain * cross_track_error,
speed + self.k_soft
)
steering = heading_error + cross_track_steer
# Clamp to max steering angle (~35 degrees)
max_steer = math.radians(35)
steering = torch.clamp(steering, -max_steer, max_steer)
return steering
class NeuralController(nn.Module):
"""
End-to-end neural network controller.
Takes BEV features + ego state + waypoints and directly outputs
steering, throttle, brake commands.
Serves as a refinement on top of classical controllers.
"""
def __init__(
self,
bev_channels: int = 256,
waypoint_dim: int = 4,
num_waypoints: int = 20,
ego_dim: int = 6,
hidden_dim: int = 256,
):
super().__init__()
# BEV feature compression
self.bev_encoder = nn.Sequential(
nn.AdaptiveAvgPool2d(4),
nn.Flatten(),
nn.Linear(bev_channels * 16, hidden_dim),
nn.ReLU(),
)
# Waypoint encoder
self.waypoint_encoder = nn.Sequential(
nn.Flatten(),
nn.Linear(num_waypoints * waypoint_dim, hidden_dim),
nn.ReLU(),
)
# Ego state encoder
self.ego_encoder = nn.Sequential(
nn.Linear(ego_dim, hidden_dim // 2),
nn.ReLU(),
)
# Control output
self.control_head = nn.Sequential(
nn.Linear(hidden_dim * 2 + hidden_dim // 2, hidden_dim),
nn.ReLU(),
nn.Dropout(0.2),
nn.Linear(hidden_dim, 128),
nn.ReLU(),
nn.Linear(128, 3), # steering, throttle, brake
)
def forward(
self,
bev_features: torch.Tensor,
waypoints: torch.Tensor,
ego_state: torch.Tensor,
) -> Dict[str, torch.Tensor]:
"""
Returns:
Dict with steering (-1 to 1), throttle (0 to 1), brake (0 to 1)
"""
bev_feat = self.bev_encoder(bev_features)
wp_feat = self.waypoint_encoder(waypoints)
ego_feat = self.ego_encoder(ego_state)
combined = torch.cat([bev_feat, wp_feat, ego_feat], dim=-1)
raw = self.control_head(combined)
steering = torch.tanh(raw[:, 0]) # [-1, 1]
throttle = torch.sigmoid(raw[:, 1]) # [0, 1]
brake = torch.sigmoid(raw[:, 2]) # [0, 1]
return {
"steering": steering,
"throttle": throttle,
"brake": brake,
}
class ControlModule(nn.Module):
"""
Complete control module that combines:
1. Neural controller (BEV-aware, end-to-end)
2. Stanley controller (geometric lateral control)
3. PID controller (error-based correction)
4. Bicycle model (physics-based prediction)
5. Safety limits enforcement
"""
def __init__(
self,
bev_channels: int = 256,
num_waypoints: int = 20,
wheelbase: float = 2.7,
max_speed_ms: float = 8.94,
max_steering_deg: float = 35.0,
max_accel: float = 3.0,
max_decel: float = 8.0,
dt: float = 0.1,
):
super().__init__()
self.max_speed_ms = max_speed_ms
self.max_steering = math.radians(max_steering_deg)
self.max_accel = max_accel
self.max_decel = max_decel
self.dt = dt
# Sub-controllers
self.neural_controller = NeuralController(
bev_channels=bev_channels,
num_waypoints=num_waypoints,
)
self.stanley_controller = StanleyController()
self.pid_controller = PIDController()
self.bicycle_model = BicycleModel(wheelbase, dt)
# Controller fusion weights (learned)
self.fusion_weights = nn.Sequential(
nn.Linear(6, 32), # ego state -> weights
nn.ReLU(),
nn.Linear(32, 3), # weights for [neural, stanley, pid]
nn.Softmax(dim=-1),
)
def forward(
self,
bev_features: torch.Tensor,
planned_waypoints: torch.Tensor,
ego_state: torch.Tensor,
emergency_brake: Optional[torch.Tensor] = None,
) -> Dict[str, torch.Tensor]:
"""
Args:
bev_features: (B, C, H, W) BEV features
planned_waypoints: (B, T, 4) [x, y, heading, speed]
ego_state: (B, 6) [speed, accel, steer, yaw_rate, x, y]
emergency_brake: (B, 1) emergency brake probability
Returns:
Dict with final actuator commands
"""
B = ego_state.shape[0]
device = ego_state.device
# 1. Neural controller output
neural_out = self.neural_controller(bev_features, planned_waypoints, ego_state)
# 2. Stanley controller - compute from first waypoint error
next_wp = planned_waypoints[:, 0, :] # next waypoint
heading_error = next_wp[:, 2] - ego_state[:, 3] # yaw_rate as proxy
cross_track_error = torch.sqrt(
(next_wp[:, 0] - ego_state[:, 4])**2 +
(next_wp[:, 1] - ego_state[:, 5])**2
)
stanley_steer = self.stanley_controller(
heading_error, cross_track_error, ego_state[:, 0]
)
# 3. PID controller
lateral_err = cross_track_error
speed_err = next_wp[:, 3] - ego_state[:, 0]
pid_error = torch.stack([lateral_err, speed_err], dim=-1)
pid_out = self.pid_controller(pid_error, ego_state, self.dt)
# 4. Fuse controllers based on driving state
weights = self.fusion_weights(ego_state) # (B, 3)
# Neural steering + Stanley steering + PID steering
neural_steer = neural_out["steering"] * self.max_steering
final_steering = (
weights[:, 0] * neural_steer +
weights[:, 1] * stanley_steer +
weights[:, 2] * torch.clamp(pid_out[:, 0], -self.max_steering, self.max_steering)
)
# Throttle/brake from neural + PID
final_throttle = neural_out["throttle"]
final_brake = neural_out["brake"]
# PID speed correction
pid_accel = pid_out[:, 1]
final_throttle = final_throttle + torch.clamp(pid_accel, 0, 1) * weights[:, 2]
final_brake = final_brake + torch.clamp(-pid_accel, 0, 1) * weights[:, 2]
# 5. Safety overrides
if emergency_brake is not None:
emergency_mask = (emergency_brake.squeeze(-1) > 0.5).float()
final_throttle = final_throttle * (1 - emergency_mask)
final_brake = torch.max(final_brake, emergency_mask)
# Clamp all outputs
final_steering = torch.clamp(final_steering, -self.max_steering, self.max_steering)
final_throttle = torch.clamp(final_throttle, 0.0, 1.0)
final_brake = torch.clamp(final_brake, 0.0, 1.0)
# Mutual exclusion: can't throttle and brake simultaneously
# If braking > throttle, zero out throttle
brake_dominant = (final_brake > final_throttle).float()
final_throttle = final_throttle * (1 - brake_dominant)
# Convert to physical units
accel_cmd = final_throttle * self.max_accel - final_brake * self.max_decel
steer_deg = torch.rad2deg(final_steering)
# Predict next state using bicycle model
current_state = torch.stack([
ego_state[:, 4], # x
ego_state[:, 5], # y
ego_state[:, 3], # heading (yaw_rate as proxy)
ego_state[:, 0], # speed
], dim=-1)
control_input = torch.stack([final_steering, accel_cmd], dim=-1)
predicted_next_state = self.bicycle_model(current_state, control_input)
return {
"steering_rad": final_steering,
"steering_deg": steer_deg,
"throttle": final_throttle,
"brake": final_brake,
"acceleration_cmd": accel_cmd,
"controller_weights": weights,
"predicted_next_state": predicted_next_state,
}
def reset(self):
"""Reset controller states (call at start of new episode)."""
self.pid_controller.reset()
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