Although humanoid robots are made to resemble humans, their stability is not yet comparable to ours. When facing external disturbances, humans efficiently and unconsciously combine a set of strategies to regain stability. This work deals with the problem of developing a robust hybrid stabilizer system for biped robots. The Linear Inverted Pendulum (LIP) and Divergent Component of Motion (DCM) concepts are used to formulate the biped locomotion and stabilization as an analytical control framework. On top of that, a neural network with symmetric partial data augmentation learns residuals to adjust the joint's position, and thus improving the robot's stability when facing external perturbations. The performance of the proposed framework was evaluated across a set of challenging simulation scenarios. The results show a considerable improvement over the baseline in recovering from large external forces. Moreover, the produced behaviors are human-like and robust to considerably noisy environments.
翻译:尽管人类机器人被制造成与人类相似,但其稳定性还不如我们。当面临外部干扰时,人类高效和无意识地结合了一套战略以重新获得稳定性。这项工作涉及为双胞胎机器人开发一个强大的混合稳定器系统的问题。线性反转转的Pentulum(LIP)和运动的不同组成部分(DCM)概念被用来将双胞胎移动和稳定作为一个分析控制框架。此外,一个具有对称部分数据增强的神经网络学习了调整联合体位置的残留物,从而在面临外部扰动时改善机器人的稳定。对拟议框架的绩效进行了一系列具有挑战性的模拟情景的评估。结果显示,从大型外部力量中恢复的基线有了相当大的改进。此外,所产生的行为与人类相似,而且强大到相当吵闹的环境。