Simulation verification and physical deployment of robot reinforcement learning algorithms, suitable for quadruped robots, wheeled robots, and humanoid robots. "sar" stands for "simulation and real"
This framework supports legged_gym based on IaacGym and IsaacLab based on IsaacSim. Use framework
to distinguish.
Clone the code
git clone https://github.com/fan-ziqi/rl_sar.git
This project relies on ROS Noetic (Ubuntu 20.04)
After installing ROS, install the dependency library
sudo apt install ros-noetic-teleop-twist-keyboard ros-noetic-controller-interface ros-noetic-gazebo-ros-control ros-noetic-joint-state-controller ros-noetic-effort-controllers ros-noetic-joint-trajectory-controller
Download and deploy libtorch
at any location
cd /path/to/your/torchlib
wget https://download.pytorch.org/libtorch/cpu/libtorch-cxx11-abi-shared-with-deps-2.0.1%2Bcpu.zip
unzip libtorch-cxx11-abi-shared-with-deps-2.0.1+cpu.zip -d ./
echo 'export Torch_DIR=/path/to/your/torchlib' >> ~/.bashrc
Install yaml-cpp
git clone https://github.com/jbeder/yaml-cpp.git
cd yaml-cpp && mkdir build && cd build
cmake -DYAML_BUILD_SHARED_LIBS=on .. && make
sudo make install
sudo ldconfig
Install lcm
git clone https://github.com/lcm-proj/lcm.git
cd lcm && mkdir build && cd build
cmake .. && make
sudo make install
sudo ldconfig
Compile in the root directory of the project
cd ..
catkin build
If catkin build report errors: Unable to find either executable 'empy' or Python module 'em'
, run catkin config -DPYTHON_EXECUTABLE=/usr/bin/python3
before catkin build
Before running, copy the trained pt model file to rl_sar/src/rl_sar/models/YOUR_ROBOT_NAME
, and configure the parameters in config.yaml
.
Open a terminal, launch the gazebo simulation environment
source devel/setup.bash
roslaunch rl_sar gazebo_<ROBOT>.launch
Open a new terminal, launch the control program
source devel/setup.bash
(for cpp version) rosrun rl_sar rl_sim
(for python version) rosrun rl_sar rl_sim.py
Where <ROBOT> can be a1
or a1_isaaclab
or gr1t1
or gr1t2
.
Control:
- Press <Enter> to toggle simulation start/stop.
- W and S controls x-axis, A and D controls yaw, and J and L controls y-axis.
- Press <Space> to sets all control commands to zero.
- If robot falls down, press R to reset Gazebo environment.
Example: Unitree A1
Unitree A1 can be connected using both wireless and wired methods:
- Wireless: Connect to the Unitree starting with WIFI broadcasted by the robot (Note: Wireless connection may lead to packet loss, disconnection, or even loss of control, please ensure safety)
- Wired: Use an Ethernet cable to connect any port on the computer and the robot, configure the computer IP as 192.168.123.162, and the gateway as 255.255.255.0
Open a new terminal and start the control program
source devel/setup.bash
rosrun rl_sar rl_real_a1
Press the R2 button on the controller to switch the robot to the default standing position, press R1 to switch to RL control mode, and press L2 in any state to switch to the initial lying position. The left stick controls x-axis up and down, controls yaw left and right, and the right stick controls y-axis left and right.
Or press 0 on the keyboard to switch the robot to the default standing position, press P to switch to RL control mode, and press 1 in any state to switch to the initial lying position. WS controls x-axis, AD controls yaw, and JL controls y-axis.
- Uncomment
#define CSV_LOGGER
in the top ofrl_real.cpp
. You can also modify the corresponding part in the simulation program to collect simulation data for testing the training process. - Run the control program, and the program will log all data after execution.
- Stop the control program and start training the actuator network. Note that
rl_sar/src/rl_sar/models/
is omitted before the following paths.rosrun rl_sar actuator_net.py --mode train --data a1/motor.csv --output a1/motor.pt
- Verify the trained actuator network.
rosrun rl_sar actuator_net.py --mode play --data a1/motor.csv --output a1/motor.pt
In the following text, <ROBOT>
represents the name of the robot
- Create a model package named
<ROBOT>_description
in therl_sar/src/robots
directory. Place the robot's URDF file in therl_sar/src/robots/<ROBOT>_description/urdf
directory and name it<ROBOT>.urdf
. Additionally, create a joint configuration file with the namespace<ROBOT>_gazebo
in therl_sar/src/robots/<ROBOT>_description/config
directory. - Place the trained RL model files in the
rl_sar/src/rl_sar/models/<ROBOT>
directory. - In the
rl_sar/src/rl_sar/models/<ROBOT>
directory, create aconfig.yaml
file, and modify its parameters based on therl_sar/src/rl_sar/models/a1_isaacgym/config.yaml
file. - Modify the
forward()
function in the code as needed to adapt to different models. - If you need to run simulations, modify the launch files as needed by referring to those in the
rl_sar/src/rl_sar/launch
directory. - If you need to run on the physical robot, modify the file
rl_sar/src/rl_sar/src/rl_real_a1.cpp
as needed.
Please cite the following if you use this code or parts of it:
@software{fan-ziqi2024rl_sar,
author = {fan-ziqi},
title = {{rl_sar: Simulation Verification and Physical Deployment of Robot Reinforcement Learning Algorithm.}},
url = {https://github.com/fan-ziqi/rl_sar},
year = {2024}
}