Chen Yin-Sheng, Xu Yong-Hui, Yang Jing-Li, Shi Zhen, Jiang Shou-da, Wang Qi
School of Electrical Engineering and Automation, Harbin Institute of Technology, Harbin 150080, China.
Rev Sci Instrum. 2016 Apr;87(4):045001. doi: 10.1063/1.4944976.
The traditional gas sensor array has been viewed as a simple apparatus for information acquisition in chemosensory systems. Gas sensor arrays frequently undergo impairments in the form of sensor failures that cause significant deterioration of the performance of previously trained pattern recognition models. Reliability monitoring of gas sensor arrays is a challenging and critical issue in the chemosensory system. Because of its importance, we design and implement a status self-validating gas sensor array prototype to enhance the reliability of its measurements. A novel fault detection, isolation, and diagnosis (FDID) strategy is presented in this paper. The principal component analysis-based multivariate statistical process monitoring model can effectively perform fault detection by using the squared prediction error statistic and can locate the faulty sensor in the gas sensor array by using the variables contribution plot. The signal features of gas sensor arrays for different fault modes are extracted by using ensemble empirical mode decomposition (EEMD) coupled with sample entropy (SampEn). The EEMD is applied to adaptively decompose the original gas sensor signals into a finite number of intrinsic mode functions (IMFs) and a residual. The SampEn values of each IMF and the residual are calculated to reveal the multi-scale intrinsic characteristics of the faulty sensor signals. Sparse representation-based classification is introduced to identify the sensor fault type for the purpose of diagnosing deterioration in the gas sensor array. The performance of the proposed strategy is compared with other different diagnostic approaches, and it is fully evaluated in a real status self-validating gas sensor array experimental system. The experimental results demonstrate that the proposed strategy provides an excellent solution to the FDID of status self-validating gas sensor arrays.
传统的气体传感器阵列一直被视为化学传感系统中用于信息采集的简单装置。气体传感器阵列经常会出现传感器故障形式的损伤,这会导致先前训练的模式识别模型的性能显著下降。气体传感器阵列的可靠性监测是化学传感系统中一个具有挑战性的关键问题。由于其重要性,我们设计并实现了一种状态自验证气体传感器阵列原型,以提高其测量的可靠性。本文提出了一种新颖的故障检测、隔离与诊断(FDID)策略。基于主成分分析的多变量统计过程监测模型可以通过使用平方预测误差统计有效地进行故障检测,并通过变量贡献图定位气体传感器阵列中的故障传感器。利用总体经验模态分解(EEMD)结合样本熵(SampEn)提取不同故障模式下气体传感器阵列的信号特征。EEMD用于将原始气体传感器信号自适应地分解为有限数量的本征模态函数(IMF)和一个残差。计算每个IMF和残差的SampEn值,以揭示故障传感器信号的多尺度内在特征。引入基于稀疏表示的分类来识别传感器故障类型,以诊断气体传感器阵列的性能恶化。将所提出策略的性能与其他不同的诊断方法进行比较,并在实际的状态自验证气体传感器阵列实验系统中进行全面评估。实验结果表明,所提出的策略为状态自验证气体传感器阵列的FDID提供了一个出色的解决方案。