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Complex networks of simple neurons for bipedal locomotion

机译:用于双足运动的简单神经元的复杂网络

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Fluid bipedal locomotion remains a significant challenge for humanoid robotics. Recent bio-inspired approaches have made significant progress by using small numbers of tightly coupled neurons, called central pattern generators (CPGs). Our approach exchanges complexity of the neuron model for complexity of the network, gradually building a network of simple neurons capable of complex behaviors. We show this approach generates controllers de novo that are able to control 3D bipedal locomotion up to 10 meters. This results holds for robots with human-proportionate morphologies across 95% of normal human variation. The resulting networks are then examined to discover neural structures that arise unusually often, lending some insight into the workings of otherwise opaque controllers.
机译:流体双足运动仍然是类人机器人的重大挑战。最近的生物启发方法通过使用少量紧密耦合的神经元(称为中央模式发生器(CPG))取得了重大进展。我们的方法将神经元模型的复杂性交换为网络的复杂性,逐步建立了具有复杂行为能力的简单神经元网络。我们展示了这种方法生成的控制器 de novo 能够控制长达10米的3D双足运动。这一结果适用于在95%的正常人类变异中具有人类比例形态的机器人。然后检查生成的网络,以发现经常出现的神经结构,从而对不透明的控制器的工作方式有所了解。

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