Haldimann David, Guerriero Marco, Maret Yannick, Bonavita Nunzio, Ciarlo Gregorio, Sabbadin Marta
IEEE Trans Neural Netw Learn Syst. 2022 Mar;33(3):1093-1106. doi: 10.1109/TNNLS.2020.3040224. Epub 2022 Feb 28.
The problem of detecting and identifying sensor faults is critical for efficient, safe, regulatory-compliant, and sustainable operations of modern industrial processing systems. The increasing complexity of such systems brings, however, new challenges for sensor fault detection and sensor fault isolation (SFD-SFI). One of the key enablers for any SFD-SFI method is analytical redundancy, which is provided by an analytical model of sensor observations derived from first principles or identified from historical data. As defective sensors generate measurements that are inconsistent with their expected behavior as defined by the model, SFD amounts to the generation and monitoring of residuals between sensor observations and model predictions. In this article, we introduce a disentangled recurrent neural network (RNN) with the objective to cope with the smearing-out effect, i.e., where the propagation of a sensor fault to nonfaulty sensor results in large and misleading residuals. The introduction of a probabilistic model for the residual generation allows us to develop a novel procedure for the identification of the faulty sensors. The computational complexity of the proposed algorithm is linear in the number of sensors as opposed to the combinatorial nature of the SFI problem. Finally, we empirically verify the performance of the proposed SFD-SFI architecture using a real data set collected at a petrochemical plant.
对于现代工业处理系统的高效、安全、合规及可持续运行而言,检测和识别传感器故障的问题至关重要。然而,此类系统日益增加的复杂性给传感器故障检测和传感器故障隔离(SFD - SFI)带来了新的挑战。任何SFD - SFI方法的关键促成因素之一是分析冗余,它由从第一原理推导或从历史数据中识别出的传感器观测分析模型提供。由于有故障的传感器产生的测量值与其模型定义的预期行为不一致,SFD相当于生成并监测传感器观测值与模型预测值之间的残差。在本文中,我们引入了一种解缠递归神经网络(RNN),目的是应对模糊效应,即传感器故障传播到无故障传感器会导致大的且有误导性的残差的情况。引入用于残差生成的概率模型使我们能够开发一种识别故障传感器的新程序。所提算法的计算复杂度与传感器数量呈线性关系,这与SFI问题的组合性质不同。最后,我们使用在一家石化厂收集的真实数据集,通过实验验证了所提SFD - SFI架构的性能。