Fixes - found the heading was incorrect.
Make the loops tighter. Remove some debug output. Simplify the collision avoidance.
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@ -5,7 +5,6 @@ from ulab import numpy as np
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from guassian import get_gaussian_sample
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import arena
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import robot
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import pid_controller
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# initial sample set - uniform
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# then apply sensor model
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@ -18,18 +17,11 @@ class Simulation:
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self.population_size = 200
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self.left_distance = 100
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self.right_distance = 100
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self.time_step = 0.1
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# Poses - each an array of [x, y, heading]
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self.poses = np.array(
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[(random.uniform(0, arena.width), random.uniform(0, arena.height), random.uniform(0, 360)) for _ in range(self.population_size)],
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dtype=np.float,
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)
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# use pids to avoid collisions
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# speed is proportional to distance from wall -> further we are from wall, faster we can go
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# turn is proportional to difference between left and right distance sensors.
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self.forward_distance_pid = pid_controller.PIDController(0.01, 0.001, 0.001)
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self.turn_pid = pid_controller.PIDController(0.01, 0.001, 0.001)
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self.distance_aim = 100
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def apply_sensor_model(self):
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@ -117,17 +109,26 @@ class Simulation:
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encoder_left = robot.left_encoder.read()
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encoder_right = robot.right_encoder.read()
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# move forward - use distance sensor to determine how far to go
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# move forward - with collision avoidance
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print("left_distance:", self.left_distance, "right_distance:", self.right_distance)
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distance_error = min(self.left_distance, self.right_distance) - self.distance_aim
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forward_speed = self.forward_distance_pid.calculate(distance_error, self.time_step)
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turn_error = self.left_distance - self.right_distance
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turn_speed = self.turn_pid.calculate(turn_error, self.time_step)
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if min(self.left_distance, self.right_distance) < self.distance_aim:
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# we are too close to the wall
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# turn away from the wall
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# turn right if left distance is smaller
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# turn left if right distance is smaller
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forward_speed = 0
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if self.left_distance < self.right_distance:
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# turn right
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turn_speed = -0.5
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else:
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turn_speed = 0.5
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else:
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forward_speed = 0.8
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print("forward_speed:", forward_speed, "turn_speed:", turn_speed)
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# robot.set_left(forward_speed + turn_speed)
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# robot.set_right(forward_speed - turn_speed)
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robot.set_left(forward_speed + turn_speed)
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robot.set_right(forward_speed - turn_speed)
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await asyncio.sleep(self.time_step)
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await asyncio.sleep(0.05)
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# record sensor changes
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left_movement = robot.left_encoder.read() - encoder_left
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right_movement = robot.right_encoder.read() - encoder_right
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@ -146,9 +147,8 @@ class Simulation:
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radians = np.radians(self.poses[:,2])
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heading_model = np.array([get_gaussian_sample(0, heading_standard_dev) for _ in range(self.poses.shape[0])])
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speed_model = np.array([get_gaussian_sample(speed_in_mm, speed_standard_dev) for _ in range(self.poses.shape[0])])
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# print("Radians shape:", radians.shape, "heading_model shape:", len(heading_model), "speed_model shape:", len(speed_model), "poses shape:", self.poses.shape)
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self.poses[:,0] += speed_model * np.cos(radians)
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self.poses[:,1] += speed_model * np.sin(radians)
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self.poses[:,0] += speed_model * np.sin(radians)
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self.poses[:,1] += speed_model * np.cos(radians)
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self.poses[:,2] += heading_change + heading_model
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self.poses[:,2] = np.vectorize(lambda n: float(n % 360))(self.poses[:,2])
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@ -162,19 +162,19 @@ class Simulation:
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if robot.right_distance.data_ready and robot.right_distance.distance:
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self.right_distance = robot.right_distance.distance * 10
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robot.right_distance.clear_interrupt()
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await asyncio.sleep(0.1)
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await asyncio.sleep(0.01)
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async def run(self):
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asyncio.create_task(self.distance_sensor_updater())
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try:
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while True:
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print("Applying sensor model")
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# print("Applying sensor model")
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weights = self.apply_sensor_model()
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print("Sensor model complete.\nResampling")
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# print("Sensor model complete.\nResampling")
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self.resample(weights)
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print("Resampling complete.\nMoving robot")
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# print("Resampling complete.\nMoving robot")
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await self.move_robot()
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print("Robot move complete")
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# print("Robot move complete")
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finally:
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robot.stop()
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@ -218,7 +218,7 @@ async def updater(simulation):
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# The big time delay is in sending the poses.
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print("Sending poses", simulation.poses.shape[0])
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for n in range(0, simulation.poses.shape[0], 10):
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print("Sending poses from ", n, "to", n+10, "of", simulation.poses.shape[0], "poses")
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# print("Sending poses from ", n, "to", n+10, "of", simulation.poses.shape[0], "poses")
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send_json({
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"poses": simulation.poses[n:n+10].tolist(),
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"offset": n,
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