In this work, a non-gaited framework for legged system locomotion is presented. The approach decouples the gait sequence optimization by considering the problem as a decision-making process. The redefined contact sequence problem is solved by utilizing a Monte Carlo Tree Search (MCTS) algorithm that exploits optimization-based simulations to evaluate the best search direction. The proposed scheme has proven to have a good trade-off between exploration and exploitation of the search space compared to the state-of-the-art Mixed-Integer Quadratic Programming (MIQP). The model predictive control (MPC) utilizes the gait generated by the MCTS to optimize the ground reaction forces and future footholds position. The simulation results, performed on a quadruped robot, showed that the proposed framework could generate known periodic gait and adapt the contact sequence to the encountered conditions, including external forces and terrain with unknown and variable properties. When tested on robots with different layouts, the system has also shown its reliability.
翻译:在这项工作中,介绍了一个用于腿系系统移动的非经选框架。该方法通过将问题作为一个决策过程来考虑,使动作序列优化脱钩。重新定义的接触序列问题通过使用蒙特卡洛树搜索(MCTS)算法来解决,该算法利用优化模拟来评价最佳搜索方向。拟议办法已证明在探索和利用搜索空间与最先进的混合一体化二次编程(MIQP)相比之间有着良好的权衡。模型预测控制(MPC)利用MCTS生成的动作优化地面反应力和未来脚站位置。模拟结果是在四重体机器人上进行的,显示拟议的框架可以产生已知的定期图案,并使接触序列适应所遇到的条件,包括外部力量和地形,其性质未知和变异。在对不同布局的机器人进行测试时,系统也显示了其可靠性。