| | Using a task-space controller |
| | ============================= |
| |
|
| | .. currentmodule:: isaaclab |
| |
|
| | In the previous tutorials, we have joint-space controllers to control the robot. However, in many |
| | cases, it is more intuitive to control the robot using a task-space controller. For example, if we |
| | want to teleoperate the robot, it is easier to specify the desired end-effector pose rather than |
| | the desired joint positions. |
| |
|
| | In this tutorial, we will learn how to use a task-space controller to control the robot. |
| | We will use the :class:`controllers.DifferentialIKController` class to track a desired |
| | end-effector pose command. |
| |
|
| |
|
| | The Code |
| | ~~~~~~~~ |
| |
|
| | The tutorial corresponds to the ``run_diff_ik.py`` script in the |
| | ``scripts/tutorials/05_controllers`` directory. |
| |
|
| |
|
| | .. dropdown:: Code for run_diff_ik.py |
| | :icon: code |
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :emphasize-lines: 98-100, 121-136, 155-157, 161-171 |
| | :linenos: |
| |
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| |
|
| | The Code Explained |
| | ~~~~~~~~~~~~~~~~~~ |
| |
|
| | While using any task-space controller, it is important to ensure that the provided |
| | quantities are in the correct frames. When parallelizing environment instances, they are |
| | all existing in the same unique simulation world frame. However, typically, we want each |
| | environment itself to have its own local frame. This is accessible through the |
| | :attr:`scene.InteractiveScene.env_origins` attribute. |
| |
|
| | In our APIs, we use the following notation for frames: |
| |
|
| | - The simulation world frame (denoted as ``w``), which is the frame of the entire simulation. |
| | - The local environment frame (denoted as ``e``), which is the frame of the local environment. |
| | - The robot's base frame (denoted as ``b``), which is the frame of the robot's base link. |
| |
|
| | Since the asset instances are not "aware" of the local environment frame, they return |
| | their states in the simulation world frame. Thus, we need to convert the obtained |
| | quantities to the local environment frame. This is done by subtracting the local environment |
| | origin from the obtained quantities. |
| |
|
| |
|
| | Creating an IK controller |
| | ------------------------- |
| |
|
| | The :class:`~controllers.DifferentialIKController` class computes the desired joint |
| | positions for a robot to reach a desired end-effector pose. The included implementation |
| | performs the computation in a batched format and uses PyTorch operations. It supports |
| | different types of inverse kinematics solvers, including the damped least-squares method |
| | and the pseudo-inverse method. These solvers can be specified using the |
| | :attr:`~controllers.DifferentialIKControllerCfg.ik_method` argument. |
| | Additionally, the controller can handle commands as both relative and absolute poses. |
| |
|
| | In this tutorial, we will use the damped least-squares method to compute the desired |
| | joint positions. Additionally, since we want to track desired end-effector poses, we |
| | will use the absolute pose command mode. |
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :start-at: # Create controller |
| | :end-at: diff_ik_controller = DifferentialIKController(diff_ik_cfg, num_envs=scene.num_envs, device=sim.device) |
| |
|
| | Obtaining the robot's joint and body indices |
| | -------------------------------------------- |
| |
|
| | The IK controller implementation is a computation-only class. Thus, it expects the |
| | user to provide the necessary information about the robot. This includes the robot's |
| | joint positions, current end-effector pose, and the Jacobian matrix. |
| |
|
| | While the attribute :attr:`assets.ArticulationData.joint_pos` provides the joint positions, |
| | we only want the joint positions of the robot's arm, and not the gripper. Similarly, while |
| | the attribute :attr:`assets.ArticulationData.body_state_w` provides the state of all the |
| | robot's bodies, we only want the state of the robot's end-effector. Thus, we need to |
| | index into these arrays to obtain the desired quantities. |
| |
|
| | For this, the articulation class provides the methods :meth:`~assets.Articulation.find_joints` |
| | and :meth:`~assets.Articulation.find_bodies`. These methods take in the names of the joints |
| | and bodies and return their corresponding indices. |
| |
|
| | While you may directly use these methods to obtain the indices, we recommend using the |
| | :attr:`~managers.SceneEntityCfg` class to resolve the indices. This class is used in various |
| | places in the APIs to extract certain information from a scene entity. Internally, it |
| | calls the above methods to obtain the indices. However, it also performs some additional |
| | checks to ensure that the provided names are valid. Thus, it is a safer option to use |
| | this class. |
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :start-at: # Specify robot-specific parameters |
| | :end-before: # Define simulation stepping |
| |
|
| |
|
| | Computing robot command |
| | ----------------------- |
| |
|
| | The IK controller separates the operation of setting the desired command and |
| | computing the desired joint positions. This is done to allow for the user to |
| | run the IK controller at a different frequency than the robot's control frequency. |
| |
|
| | The :meth:`~controllers.DifferentialIKController.set_command` method takes in |
| | the desired end-effector pose as a single batched array. The pose is specified in |
| | the robot's base frame. |
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :start-at: # reset controller |
| | :end-at: diff_ik_controller.set_command(ik_commands) |
| |
|
| | We can then compute the desired joint positions using the |
| | :meth:`~controllers.DifferentialIKController.compute` method. |
| | The method takes in the current end-effector pose (in base frame), Jacobian, and |
| | current joint positions. We read the Jacobian matrix from the robot's data, which uses |
| | its value computed from the physics engine. |
| |
|
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :start-at: # obtain quantities from simulation |
| | :end-at: joint_pos_des = diff_ik_controller.compute(ee_pos_b, ee_quat_b, jacobian, joint_pos) |
| |
|
| | The computed joint position targets can then be applied on the robot, as done in the |
| | previous tutorials. |
| |
|
| | .. literalinclude:: ../../../../scripts/tutorials/05_controllers/run_diff_ik.py |
| | :language: python |
| | :start-at: # apply actions |
| | :end-at: scene.write_data_to_sim() |
| |
|
| |
|
| | The Code Execution |
| | ~~~~~~~~~~~~~~~~~~ |
| |
|
| |
|
| | Now that we have gone through the code, let's run the script and see the result: |
| |
|
| | .. code-block:: bash |
| |
|
| | ./isaaclab.sh -p scripts/tutorials/05_controllers/run_diff_ik.py --robot franka_panda --num_envs 128 |
| |
|
| | The script will start a simulation with 128 robots. The robots will be controlled using the IK controller. |
| | The current and desired end-effector poses should be displayed using frame markers. When the robot reaches |
| | the desired pose, the command should cycle through to the next pose specified in the script. |
| |
|
| | .. figure:: ../../_static/tutorials/tutorial_task_space_controller.jpg |
| | :align: center |
| | :figwidth: 100% |
| | :alt: result of run_diff_ik.py |
| |
|
| | To stop the simulation, you can either close the window, or press ``Ctrl+C`` in the terminal. |
| |
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