We propose to make the physical characteristics of a robot oscillate while it learns to improve its behavioral performance. We consider quantities such as mass, actuator strength, and size that are usually fixed in a robot, and show that when those quantities oscillate at the beginning of the learning process on a simulated 2D soft robot, the performance on a locomotion task can be significantly improved. We investigate the dynamics of the phenomenon and conclude that in our case, surprisingly, a high-frequency oscillation with a large amplitude for a large portion of the learning duration leads to the highest performance benefits. Furthermore, we show that morphological wobbling significantly increases exploration of the search space.
翻译:我们建议,在机器人研究改善其行为性能的同时,将机器人的物理特征化为螺旋藻。我们考虑了机器人通常固定的质量、动能强度和体积等数量,并表明,在模拟的2D软机器人学习过程开始时,当这些数量在模拟的2D软机器人学习过程开始时,移动性能可以大大改进。我们调查了该现象的动态,并得出结论,就我们的情况而言,令人惊讶的是,高频振动和大量振动在大部分学习期间导致最高性能效益。此外,我们表明,形态变化大大增强了对搜索空间的探索。