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Utility classes to check the (robust) equilibrium of a system in contact with the environment.

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CentroidalDynamicsLib

Utility classes to check the (robust) equilibrium of a system in contact with the environment. Comes with python bindings. The main class that collects all the equilibrium-related algorithms is Equilibrium. All the algorithms take as input:

  • A list of contact points
  • A list of contact normals
  • The contact friction coefficient
  • The number of generators used for the linear approximations of the friction cones
  • The mass of the system

Once these input parameters have been specified, the user has access to four algorithms implemented in the following four methods of the class Equilibrium:

  • computeEquilibriumRobustness: compute the robustness of the equilibrium of a given a CoM (center of mass) position (negative values mean the system can not be in equilibrium).
  • checkRobustEquilibrium: checks whether the system can be in equilibrium in a specified CoM position and with a specified robustness level.
  • findExtremumOverLine: Find the extremum com position that is in robust equilibrium along the specified line.
  • findExtremumInDirection: Find the extremum com position that is in robust equilibrium in the specified direction.

All these problems boil down to solving Linear Programs. Different formulations are implemented and tested in test_static_equilibrium. More details can be found in the code documentation. In the end, we found that most of the times the dual LP formulation (DLP) is the fastest.

The test test_LP_solvers tries to solve some LP problems using qpOases and checks that the results are correct.

Dependencies

Additional dependencies for python bindings

Installation Steps for Ubuntu 12.04, 14.04 and 16.04

You can install cdd lib with the following command:

sudo apt-get install libcdd-dev

You can install Eigen3 with the following command:

 sudo apt-get install libeigen3-dev

For qpOases you have to install the pkg-config version you can find here: https://github.com/humanoid-path-planner/qpoases

git clone --recursive https://github.com/humanoid-path-planner/qpoases
mkdir qpoases/build
cd qpoases/build
cmake -DCMAKE_INSTALL_PREFIX=${DEVEL_DIR}/install ..
make install

Then you can clone this repository using ssh:

git clone --recursive [email protected]:andreadelprete/robust-equilibrium-lib.git $ROBUST_EQUI_LIB_DIR

or using http:

git clone --recursive https://github.com/andreadelprete/robust-equilibrium-lib.git $ROBUST_EQUI_LIB_DIR

And you can build this library using CMake:

mkdir $ROBUST_EQUI_LIB_DIR/build
cd $ROBUST_EQUI_LIB_DIR/build
cmake -DCMAKE_INSTALL_PREFIX=${DEVEL_DIR}/install ..
make install

Optional: CLP installation

As an alternative to qpOases you can use CLP to solve linear programs. However, we found qpOases to be faster (especially when solving a series of problems that are similar to each other, because it can exploit warm start) and more reliable, so we suggest you to stick with qpOases. In particular, we found that CLP sometimes fails to find the real optimum when using the DLP formulation.

Optional: Python bindings installation

To install the Python bindings, in the CMakeLists.txt file, first enable the BUILD_PYTHON_INTERFACE option:

OPTION (BUILD_PYTHON_INTERFACE "Build the python binding" ON)

Then rebuild the library:

cd $ROBUST_EQUI_LIB_DIR/build
cmake -DCMAKE_INSTALL_PREFIX=${DEVEL_DIR}/install ..
make install

The python bindings should then be accessible through the package centroidal_dynamics. To see example of use, you can refer to the test file which is rather self explanatory:

In spite of an exhaustive documentation, please refer to the C++ documentation, which mostly applies to python.

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Utility classes to check the (robust) equilibrium of a system in contact with the environment.

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