首页 /研究 /Auto-tuning of parameters in estimation and adaptive control of robots with weaker PE conditions
OTHER

Auto-tuning of parameters in estimation and adaptive control of robots with weaker PE conditions

Z. Ahmad, A. Guez

发表年份
1997
引用次数
5

摘要

Knowledge of the system parameters is necessary for optimum performance of the system. A new class of parameter estimation and adaptive control algorithms was shown by Ahmad (1995), which was applied to the robotic system. These algorithms require relaxed conditions of persistent excitation for parameter convergence. Here we propose an enhancement of these algorithms via improved initialization resulting from sliding surface in parameter error space. As a result we achieve faster convergence of parameters with proper initialization. Examples giving quantitative results from the robotics systems are provided, comparing the results with the original algorithms and a classical approach of a gradient-type algorithm.

关键词

InitializationConvergence (economics)Estimation theoryControl theory (sociology)Parameter spaceComputer scienceRobotAdaptive controlRoboticsArtificial intelligence

相关论文

查看 OTHER 分类全部论文