Litcius/Paper detail

A Deep Neural Network-Based Fault Detection Scheme for Aircraft IMU Sensors

Zhang Yiming, Hang Zhao, Jinyi Ma, Yunmei Zhao, Yiqun Dong, Jianliang Ai

2021International Journal of Aerospace Engineering13 citationsDOIOpen Access PDF

Abstract

A new fault detection scheme for aircraft Inertial Measurement Unit (IMU) sensors is developed in this paper. This scheme adopts a deep neural network with a CNN-LSTM-fusion architecture (CNN: convolution neural network; LSTM: long short-term memory). The fault detection network (FDN) developed in this paper is irrelative to aircraft model or flight condition. Flight data is reformed into a 2D format for FDN input and is mapped via the net to fault cases directly. We simulate different aircrafts with various flight conditions and separate them into training and testing sets. Part of the aircrafts and flight conditions appears only in the testing set to validate robustness and scalability of the FDN. Different architectures of FDN are studied, and an optimized architecture is obtained via ablation studies. An average detecting accuracy of 94.5% on 20 different cases is achieved.

Topics & Concepts

Inertial measurement unitRobustness (evolution)ScalabilityConvolutional neural networkFault detection and isolationArtificial neural networkComputer scienceReal-time computingArtificial intelligenceFault (geology)Scheme (mathematics)EngineeringActuatorChemistryMathematical analysisGeologyMathematicsSeismologyDatabaseBiochemistryGeneFault Detection and Control SystemsTarget Tracking and Data Fusion in Sensor NetworksStructural Health Monitoring Techniques