Litcius/Paper detail

Physical Model Informed Fault Detection and Diagnosis of Air Handling Units Based on Transformer Generative Adversarial Network

Ke Yan, Xinke Chen, Xiaokang Zhou, Zheng Yan, Jianhua Ma

2022IEEE Transactions on Industrial Informatics75 citationsDOI

Abstract

Physics theory integrated machine learning models enhance the interpretability and performance of artificial intelligence (AI) techniques to real-world industrial applications, such as the fault detection and diagnosis (FDD) of air handling units (AHU). Traditional machine learning-based automated FDD model demonstrates a high classification accuracy with sufficient training data samples, however, suffers from physical interpretation of the machine learning models. In this article, a physical model integrated Wasserstain generative adversarial network (WGAN) model is presented for AHU FDD with a scenario of insufficient training data samples. The proposed solution tackles the real-world problem of AHU FDD and enhances the model interpretability significantly. A transformer-WGAN model is designed to further improve the proposed FDD framework. Experimental results show that the proposed method outperforms existing AHU FDD methods with imbalanced real-world training data samples.

Topics & Concepts

InterpretabilityTransformerArtificial intelligenceMachine learningComputer scienceData modelingGenerative adversarial networkAdversarial systemFault detection and isolationGenerative grammarData miningDeep learningEngineeringVoltageDatabaseElectrical engineeringActuatorFault Detection and Control SystemsIndustrial Vision Systems and Defect DetectionAnomaly Detection Techniques and Applications