论文标题
底栖双性恋的模型
Models of benthic bipedalism
论文作者
论文摘要
步行是一种常见的两足和四足步骤,通常与陆生和水生生物有关。受到最新的证据表明,在小滑板leucoraja erinacea中,原始水生步行的神经基础的启发,我们引入了一种水生步行的理论模型,揭示了对身体形态和控制的适度要求的强大和有效的步态。该模型可以预测系统体的波动行为具有规则的脚部位置模式,并在动物中也观察到,并预测了两个状态之间的步态双重性,一种具有巨大的机动成本,而另一种几乎没有能量成本。我们证明可以使用简单的加固学习方案来发现这些。为了测试这些理论框架,我们构建了一个两足动物的机器人,并表明其行为与我们最小模型的行为相似:它的步态也是周期性的,具有周期性,具有低效率步态与“跳跃”过渡的高效率步态。总体而言,我们的研究强调了步行演变的物理限制,并为设计有效的仿生机器人设计提供了指南。
Walking is a common bipedal and quadrupedal gait and is often associated with terrestrial and aquatic organisms. Inspired by recent evidence of the neural underpinnings of primitive aquatic walking in the little skate Leucoraja erinacea, we introduce a theoretical model of aquatic walking that reveals robust and efficient gaits with modest requirements for body morphology and control. The model predicts undulatory behavior of the system body with a regular foot placement pattern which is also observed in the animal, and additionally predicts the existence of gait bistability between two states, one with a large energetic cost for locomotion and another associated with almost no energetic cost. We show that these can be discovered using a simple reinforcement learning scheme. To test these theoretical frameworks, we built a bipedal robot and show that its behaviors are similar to those of our minimal model: its gait is also periodic and exhibits bistability, with a low efficiency gait separated from a high efficiency gait by a "jump" transition. Overall, our study highlights the physical constraints on the evolution of walking and provides a guide for the design of efficient biomimetic robots.