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# Copyright (c) 2022-2026, The Isaac Lab Project Developers (https://github.com/isaac-sim/IsaacLab/blob/main/CONTRIBUTORS.md).
# All rights reserved.
#
# SPDX-License-Identifier: BSD-3-Clause
"""This script demonstrates how to spawn a pick-and-place robot equipped with a surface gripper and interact with it.
.. code-block:: bash
# Usage
./isaaclab.sh -p scripts/tutorials/01_assets/run_surface_gripper.py --device=cpu
When running this script make sure the --device flag is set to cpu. This is because the surface gripper is
currently only supported on the CPU.
"""
"""Launch Isaac Sim Simulator first."""
import argparse
from isaaclab.app import AppLauncher
# add argparse arguments
parser = argparse.ArgumentParser(description="Tutorial on spawning and interacting with a Surface Gripper.")
# append AppLauncher cli args
AppLauncher.add_app_launcher_args(parser)
# parse the arguments
args_cli = parser.parse_args()
# launch omniverse app
app_launcher = AppLauncher(args_cli)
simulation_app = app_launcher.app
"""Rest everything follows."""
import torch
import isaaclab.sim as sim_utils
from isaaclab.assets import Articulation, SurfaceGripper, SurfaceGripperCfg
from isaaclab.sim import SimulationContext
##
# Pre-defined configs
##
from isaaclab_assets import PICK_AND_PLACE_CFG # isort:skip
def design_scene():
"""Designs the scene."""
# Ground-plane
cfg = sim_utils.GroundPlaneCfg()
cfg.func("/World/defaultGroundPlane", cfg)
# Lights
cfg = sim_utils.DomeLightCfg(intensity=3000.0, color=(0.75, 0.75, 0.75))
cfg.func("/World/Light", cfg)
# Create separate groups called "Origin1", "Origin2"
# Each group will have a robot in it
origins = [[2.75, 0.0, 0.0], [-2.75, 0.0, 0.0]]
# Origin 1
sim_utils.create_prim("/World/Origin1", "Xform", translation=origins[0])
# Origin 2
sim_utils.create_prim("/World/Origin2", "Xform", translation=origins[1])
# Articulation: First we define the robot config
pick_and_place_robot_cfg = PICK_AND_PLACE_CFG.copy()
pick_and_place_robot_cfg.prim_path = "/World/Origin.*/Robot"
pick_and_place_robot = Articulation(cfg=pick_and_place_robot_cfg)
# Surface Gripper: Next we define the surface gripper config
surface_gripper_cfg = SurfaceGripperCfg()
# We need to tell the View which prim to use for the surface gripper
surface_gripper_cfg.prim_path = "/World/Origin.*/Robot/picker_head/SurfaceGripper"
# We can then set different parameters for the surface gripper, note that if these parameters are not set,
# the View will try to read them from the prim.
surface_gripper_cfg.max_grip_distance = 0.1 # [m] (Maximum distance at which the gripper can grasp an object)
surface_gripper_cfg.shear_force_limit = 500.0 # [N] (Force limit in the direction perpendicular direction)
surface_gripper_cfg.coaxial_force_limit = 500.0 # [N] (Force limit in the direction of the gripper's axis)
surface_gripper_cfg.retry_interval = 0.1 # seconds (Time the gripper will stay in a grasping state)
# We can now spawn the surface gripper
surface_gripper = SurfaceGripper(cfg=surface_gripper_cfg)
# return the scene information
scene_entities = {"pick_and_place_robot": pick_and_place_robot, "surface_gripper": surface_gripper}
return scene_entities, origins
def run_simulator(
sim: sim_utils.SimulationContext, entities: dict[str, Articulation | SurfaceGripper], origins: torch.Tensor
):
"""Runs the simulation loop."""
# Extract scene entities
robot: Articulation = entities["pick_and_place_robot"]
surface_gripper: SurfaceGripper = entities["surface_gripper"]
# Define simulation stepping
sim_dt = sim.get_physics_dt()
count = 0
# Simulation loop
while simulation_app.is_running():
# Reset
if count % 500 == 0:
# reset counter
count = 0
# reset the scene entities
# root state
# we offset the root state by the origin since the states are written in simulation world frame
# if this is not done, then the robots will be spawned at the (0, 0, 0) of the simulation world
root_state = robot.data.default_root_state.clone()
root_state[:, :3] += origins
robot.write_root_pose_to_sim(root_state[:, :7])
robot.write_root_velocity_to_sim(root_state[:, 7:])
# set joint positions with some noise
joint_pos, joint_vel = robot.data.default_joint_pos.clone(), robot.data.default_joint_vel.clone()
joint_pos += torch.rand_like(joint_pos) * 0.1
robot.write_joint_state_to_sim(joint_pos, joint_vel)
# clear internal buffers
robot.reset()
print("[INFO]: Resetting robot state...")
# Opens the gripper and makes sure the gripper is in the open state
surface_gripper.reset()
print("[INFO]: Resetting gripper state...")
# Sample a random command between -1 and 1.
gripper_commands = torch.rand(surface_gripper.num_instances) * 2.0 - 1.0
# The gripper behavior is as follows:
# -1 < command < -0.3 --> Gripper is Opening
# -0.3 < command < 0.3 --> Gripper is Idle
# 0.3 < command < 1 --> Gripper is Closing
print(f"[INFO]: Gripper commands: {gripper_commands}")
mapped_commands = [
"Opening" if command < -0.3 else "Closing" if command > 0.3 else "Idle" for command in gripper_commands
]
print(f"[INFO]: Mapped commands: {mapped_commands}")
# Set the gripper command
surface_gripper.set_grippers_command(gripper_commands)
# Write data to sim
surface_gripper.write_data_to_sim()
# Perform step
sim.step()
# Increment counter
count += 1
# Read the gripper state from the simulation
surface_gripper.update(sim_dt)
# Read the gripper state from the buffer
surface_gripper_state = surface_gripper.state
# The gripper state is a list of integers that can be mapped to the following:
# -1 --> Open
# 0 --> Closing
# 1 --> Closed
# Print the gripper state
print(f"[INFO]: Gripper state: {surface_gripper_state}")
mapped_commands = [
"Open" if state == -1 else "Closing" if state == 0 else "Closed" for state in surface_gripper_state.tolist()
]
print(f"[INFO]: Mapped commands: {mapped_commands}")
def main():
"""Main function."""
# Load kit helper
sim_cfg = sim_utils.SimulationCfg(device=args_cli.device)
sim = SimulationContext(sim_cfg)
# Set main camera
sim.set_camera_view([2.75, 7.5, 10.0], [2.75, 0.0, 0.0])
# Design scene
scene_entities, scene_origins = design_scene()
scene_origins = torch.tensor(scene_origins, device=sim.device)
# Play the simulator
sim.reset()
# Now we are ready!
print("[INFO]: Setup complete...")
# Run the simulator
run_simulator(sim, scene_entities, scene_origins)
if __name__ == "__main__":
# run the main function
main()
# close sim app
simulation_app.close()