An Efficient Numerical Function Optimization Framework for Constrained Nonlinear Robotic Problems
Sovukluk, Sait, Ott, Christian
–arXiv.org Artificial Intelligence
This paper presents a numerical function optimization framework designed for constrained optimization problems in robotics. The tool is designed with real-time considerations and is suitable for online trajectory and control input optimization problems. The proposed framework does not require any analytical representation of the problem and works with constrained block-box optimization functions. The method combines first-order gradient-based line search algorithms with constraint prioritization through nullspace projections onto constraint Jacobian space. The tool is implemented in C++ and provided online for community use, along with some numerical and robotic example implementations presented in this paper.
arXiv.org Artificial Intelligence
Jan-30-2025