Fault Detection and Isolation for Robotic Manipulators

G. Paviglianiti, F. Caccavale, M. Mattei, F. Pierri
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Abstract

This paper deals with the problem of detecting and isolating sensor faults in industrial robot manipulators. To the purpose, an analytical redundancy approach has been pursued, based on a bank of state observers for residual generation. An extended Hinfin approach is adopted to build the bank of residual generators; the compensation of poorly known dynamics in each observer is improved by the use of a neural network. The synthesis of the observer gains is achieved by solving an LMI feasibility problem, where constraint on the position of the estimation error linearized dynamics poles in the complex plane are taken into account Finally, in order to test the effectiveness of the proposed approach, a case study is presented, based on experimental data collected on a six-degree-of-freedom Comau Smart-3 S industrial manipulator
机械臂故障检测与隔离
本文研究了工业机器人机械手传感器故障的检测与隔离问题。为此,采用了一种基于状态观测器的分析冗余方法进行残差生成。采用扩展的Hinfin方法构建残差发生器库;利用神经网络改进了每个观测器中未知动态的补偿。通过求解LMI可行性问题实现观测器增益的综合,其中考虑了估计误差线性化动力学极点在复杂平面上的位置约束。最后,基于六自由度Comau smart - 3s工业机械臂的实验数据,给出了一个案例研究,以验证所提方法的有效性
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