Litcius/Paper detail

Hierarchical Deep LSTM for Fault Detection and Diagnosis for a Chemical Process

Piyush Agarwal, Jorge Ivan Mireles Gonzalez, Ali Elkamel, Hector Budman

2022Processes26 citationsDOIOpen Access PDF

Abstract

A hierarchical structure based on a Deep LSTM Supervised Autoencoder Neural Network (Deep LSTM-SAE NN) is presented for the detection and classification of faults in industrial plants. The proposed methodology has the ability to classify incipient faults that are difficult to detect and diagnose with traditional and many recent methods. Faults are grouped into different subsets according to the degree of difficulty to classify them accurately in the proposed hierarchical structure. External pseudo-random binary signals (PRBS) are injected in the system to enhance the identification of incipient faults. The approach is illustrated on the benchmark process (Tennessee Eastman Process) in order to compare across different methodologies. The efficacy of the proposed method is shown by a comprehensive comparison between many recent and traditional fault detection and diagnosis methods in the literature for Tennessee Eastman Process. The proposed work results in significant improvements in the classification of faults over both multivariate linear model-based strategies and non-hierarchical nonlinear model-based strategies.

Topics & Concepts

Artificial intelligenceAutoencoderComputer scienceFault detection and isolationProcess (computing)Benchmark (surveying)Artificial neural networkPattern recognition (psychology)Machine learningFault (geology)Identification (biology)Deep learningData miningGeodesyOperating systemGeographyGeologySeismologyBiologyActuatorBotanyFault Detection and Control SystemsMineral Processing and GrindingSpectroscopy and Chemometric Analyses