Automatic Differentiation for rigid-body-dynamics AlgorithMs
Project description
adam
Automatic Differentiation for rigid-body-dynamics AlgorithMs
adam implements a collection of algorithms for calculating rigid-body dynamics for floating-base robots, in mixed and body fixed representations (see Traversaro's A Unified View of the Equations of Motion used for Control Design of Humanoid Robots) using:
adam employs the automatic differentiation capabilities of these frameworks to compute, if needed, gradients, Jacobian, Hessians of rigid-body dynamics quantities. This approach enables the design of optimal control and reinforcement learning strategies in robotics.
adam is based on Roy Featherstone's Rigid Body Dynamics Algorithms.
⚠️ REPOSITORY UNDER DEVELOPMENT ⚠️
We cannot guarantee stable API
🐍 Dependencies
Other requisites are:
urdf_parser_py
jax
casadi
pytorch
numpy
They will be installed in the installation step!
💾 Installation
The installation can be done either using the Python provided by apt (on Debian-based distros) or via conda (on Linux and macOS).
🐍 Installation with pip
Install python3
, if not installed (in Ubuntu 20.04):
sudo apt install python3.8
Create a virtual environment, if you prefer. For example:
pip install virtualenv
python3 -m venv your_virtual_env
source your_virtual_env/bin/activate
Inside the virtual environment, install the library from pip:
-
Install Jax interface:
pip install adam-robotics[jax]
-
Install CasADi interface:
pip install adam-robotics[casadi]
-
Install PyTorch interface:
pip install adam-robotics[pytorch]
-
Install ALL interfaces:
pip install adam-robotics[all]
If you want the last version:
pip install adam-robotics[selected-interface]@git+https://github.com/ami-iit/ADAM
or clone the repo and install:
git clone https://github.com/ami-iit/adam.git
cd adam
pip install .[selected-interface]
📦 Installation with conda
Installation from conda-forge package
mamba create -n adamenv -c conda-forge adam-robotics
If you want to use jax
or pytorch
, just install the corresponding package as well.
🔨 Installation from repo
Install in a conda environment the required dependencies:
-
Jax interface dependencies:
mamba create -n adamenv -c conda-forge jax numpy lxml prettytable matplotlib urdfdom-py
-
CasADi interface dependencies:
mamba create -n adamenv -c conda-forge casadi numpy lxml prettytable matplotlib urdfdom-py
-
PyTorch interface dependencies:
mamba create -n adamenv -c conda-forge pytorch numpy lxml prettytable matplotlib urdfdom-py
-
ALL interfaces dependencies:
mamba create -n adamenv -c conda-forge jax casadi pytorch numpy lxml prettytable matplotlib urdfdom-py
Activate the environment, clone the repo and install the library:
mamba activate adamenv
git clone https://github.com/ami-iit/ADAM.git
cd adam
pip install --no-deps .
🚀 Usage
The following are small snippets of the use of adam. More examples are arriving!
Have also a look at te tests
folder.
Jax interface
import adam
from adam.jax import KinDynComputations
import icub_models
import numpy as np
# if you want to icub-models https://github.com/robotology/icub-models to retrieve the urdf
model_path = icub_models.get_model_file("iCubGazeboV2_5")
# The joint list
joints_name_list = [
'torso_pitch', 'torso_roll', 'torso_yaw', 'l_shoulder_pitch',
'l_shoulder_roll', 'l_shoulder_yaw', 'l_elbow', 'r_shoulder_pitch',
'r_shoulder_roll', 'r_shoulder_yaw', 'r_elbow', 'l_hip_pitch', 'l_hip_roll',
'l_hip_yaw', 'l_knee', 'l_ankle_pitch', 'l_ankle_roll', 'r_hip_pitch',
'r_hip_roll', 'r_hip_yaw', 'r_knee', 'r_ankle_pitch', 'r_ankle_roll'
]
# Specify the root link
root_link = 'root_link'
kinDyn = KinDynComputations(model_path, joints_name_list, root_link)
# choose the representation, if you want to use the body fixed representation
kinDyn.set_frame_velocity_representation(adam.Representations.BODY_FIXED_REPRESENTATION)
# or, if you want to use the mixed representation (that is the default)
kinDyn.set_frame_velocity_representation(adam.Representations.MIXED_REPRESENTATION)
w_H_b = np.eye(4)
joints = np.ones(len(joints_name_list))
M = kinDyn.mass_matrix(w_H_b, joints)
print(M)
CasADi interface
import adam
from adam.casadi import KinDynComputations
import icub_models
import numpy as np
# if you want to icub-models https://github.com/robotology/icub-models to retrieve the urdf
model_path = icub_models.get_model_file("iCubGazeboV2_5")
# The joint list
joints_name_list = [
'torso_pitch', 'torso_roll', 'torso_yaw', 'l_shoulder_pitch',
'l_shoulder_roll', 'l_shoulder_yaw', 'l_elbow', 'r_shoulder_pitch',
'r_shoulder_roll', 'r_shoulder_yaw', 'r_elbow', 'l_hip_pitch', 'l_hip_roll',
'l_hip_yaw', 'l_knee', 'l_ankle_pitch', 'l_ankle_roll', 'r_hip_pitch',
'r_hip_roll', 'r_hip_yaw', 'r_knee', 'r_ankle_pitch', 'r_ankle_roll'
]
# Specify the root link
root_link = 'root_link'
kinDyn = KinDynComputations(model_path, joints_name_list, root_link)
# choose the representation you want to use the body fixed representation
kinDyn.set_frame_velocity_representation(adam.Representations.BODY_FIXED_REPRESENTATION)
# or, if you want to use the mixed representation (that is the default)
kinDyn.set_frame_velocity_representation(adam.Representations.MIXED_REPRESENTATION)
w_H_b = np.eye(4)
joints = np.ones(len(joints_name_list))
M = kinDyn.mass_matrix_fun()
print(M(w_H_b, joints))
PyTorch interface
import adam
from adam.pytorch import KinDynComputations
import icub_models
import numpy as np
# if you want to icub-models https://github.com/robotology/icub-models to retrieve the urdf
model_path = icub_models.get_model_file("iCubGazeboV2_5")
# The joint list
joints_name_list = [
'torso_pitch', 'torso_roll', 'torso_yaw', 'l_shoulder_pitch',
'l_shoulder_roll', 'l_shoulder_yaw', 'l_elbow', 'r_shoulder_pitch',
'r_shoulder_roll', 'r_shoulder_yaw', 'r_elbow', 'l_hip_pitch', 'l_hip_roll',
'l_hip_yaw', 'l_knee', 'l_ankle_pitch', 'l_ankle_roll', 'r_hip_pitch',
'r_hip_roll', 'r_hip_yaw', 'r_knee', 'r_ankle_pitch', 'r_ankle_roll'
]
# Specify the root link
root_link = 'root_link'
kinDyn = KinDynComputations(model_path, joints_name_list, root_link)
# choose the representation you want to use the body fixed representation
kinDyn.set_frame_velocity_representation(adam.Representations.BODY_FIXED_REPRESENTATION)
# or, if you want to use the mixed representation (that is the default)
kinDyn.set_frame_velocity_representation(adam.Representations.MIXED_REPRESENTATION)
w_H_b = np.eye(4)
joints = np.ones(len(joints_name_list))
M = kinDyn.mass_matrix(w_H_b, joints)
print(M)
🦸♂️ Contributing
adam is an open-source project. Contributions are very welcome!
Open an issue with your feature request or if you spot a bug. Then, you can also proceed with a Pull-requests! :rocket:
Todo
- Center of Mass position
- Jacobians
- Forward kinematics
- Mass Matrix via CRBA
- Centroidal Momentum Matrix via CRBA
- Recursive Newton-Euler algorithm (still no acceleration in the algorithm, since it is used only for the computation of the bias force)
- Articulated Body algorithm
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