Advanced biped gait generator using NARX-MLP neural model optimized by enhanced evolutionary algorithm

T. T. Huan, H. Anh
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引用次数: 0

Abstract

A novel biped walking pattern combining robust zero-moment-point ZMP technique and pre-determined foot-lifting value is proposed in this paper. The implementation of suggested approach contains following stages. Initially, a one-step ZMP curve for a small-sized humanoid is created using the 3rd-order interpolating equation, with pre-determined velocity responding the ZMP concept. The next step, biped gait planning is modeled as a non-linear MIMO plant including ten degree-of-freedom DOF. Then, the installation of a biped walking pattern generator (WPG) based on the new hybrid Neural-NARX model is completed. Eventually, the novel Enhanced Differential Evolution (EDE) technique is applied to optimally identify the weights of the hybrid Neural-NARX structure, for ensuring robust robot walking in terms of desired ZMP trajectories and pre-determined foot-lifting value. All case studies confirm that it is surely provide a biped WPG satisfying both of the effectiveness and high robustness. The verification of the newly proposed WPG is adequately tested via both simulation and experiment results.
基于增强进化算法优化的NARX-MLP神经模型的先进两足步态生成器
提出了一种结合鲁棒零矩点ZMP技术和预定抬脚值的两足步行模式。建议的办法的实施分为以下几个阶段。首先,使用三阶插值方程创建小型人形的一步ZMP曲线,并使用预先确定的速度响应ZMP概念。下一步,将两足步态规划建模为包含10个自由度的非线性MIMO对象。在此基础上,完成了基于新型混合Neural-NARX模型的两足行走模式生成器(WPG)的安装。最后,应用新的增强差分进化(EDE)技术来优化识别混合神经- narx结构的权重,以确保机器人在期望的ZMP轨迹和预先确定的足举值方面具有鲁棒性。所有的案例研究都证实了它确实提供了一个既有效又具有高鲁棒性的双足WPG。通过仿真和实验结果充分验证了新提出的WPG的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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