基于非线性倒立摆模型的节能双足行走归一化神经网络

Ruobing Wang, Samuel J. Hudson, Y. Li, Hongtao Wu, Chengxu Zhou
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引用次数: 2

摘要

本文提出了一种新的双足行走模式生成方法。该方法是基于二维倒立摆模型设计的。所有的控制变量都被优化为一个节能的步态。为了避免在线求解非线性动力学问题,采用深度神经网络实现从期望状态到控制变量的快速非线性映射。生成归一化的无量纲数据来训练神经网络,因此,训练后的神经网络可以应用于任何尺寸的双足机器人,而无需进行任何特定的修改。通过数值模拟验证了该方法的有效性。仿真结果表明,该方法能生成可行的行走动作,并能成功调节机器人的行走速度。验证了其抗干扰能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Normalized Neural Network for Energy Efficient Bipedal Walking Using Nonlinear Inverted Pendulum Model
In this paper, we present a novel approach for bipedal walking pattern generation. The proposed method is designed based on 2D inverted pendulum model. All control variables are optimized for an energy efficient gait. To obviate the need of solving non-linear dynamics on-line, a deep neural network is adopted for fast non-linear mapping from desired states to control variables. Normalized dimensionless data is generated to train the neural network, therefore, the trained neural network can be applied to bipedal robots of any size, without any specific modification. The proposed method is later verified through numerical simulations. Simulation results demonstrated that the proposed approach can generate feasible walking motions, and regulate robot’s walking velocity successfully. Its disturbance rejection capability was also validated.
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