An Improved Principal Component Analysis in the Fault Detection of Multi-sensor System of Mobile Robot

Zhaihe Zhou, Qianyun Zhang, Qingtao Zhao, Ruyi Chen, Qingxi Zeng
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Abstract

To cope with the fault detection in dynamic conditions of inertial components in the mobile robots, an improved principal component analysis (PCA) method was proposed. This work took a five gyroscopes redundancy allocation model to realize the measurement of the attitude. It is hard to distinguish the fault message from dynamic message in dynamic system that results in false alarm and missing inspection, so we firstly used the parity vector to preprocess the measurement data from the sensors. A fault was detected when the preprocessed data was dealt with PCA method. The effectiveness of the improved PCA method introduced in this paper was verified by comparing fault detection capabilities of conventional PCA method under the dynamic conditions of the step fault. The results of the simulation and experimental verification of the method was expected to contribute to the fault detection and improve the accuracy and reliability of the multi-sensors system in dynamic conditions.
移动机器人多传感器系统故障检测中的改进主成分分析
针对移动机器人惯性部件动态状态下的故障检测问题,提出了一种改进的主成分分析方法。采用五陀螺仪冗余分配模型实现姿态测量。在动态系统中,由于故障信息和动态信息难以区分,导致误报警和漏检,因此首先采用奇偶向量对传感器测量数据进行预处理。采用主成分分析法对预处理后的数据进行分析,发现故障。通过比较传统主成分分析方法在阶跃故障动态条件下的故障检测能力,验证了改进主成分分析方法的有效性。仿真和实验结果验证了该方法的有效性,为多传感器系统在动态条件下的故障检测提供了理论依据,提高了系统的精度和可靠性。
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