Litcius/Paper detail

Autonomous underwater vehicle fault diagnosis dataset

Daxiong Ji, Xin Yao, Shuo Li, Yuangui Tang, Yu Tian

2021Data in Brief27 citationsDOIOpen Access PDF

Abstract

The dataset contains 1225 data samples for 5 fault types (labels). We divided the dataset into the training set and the test set through random stratified sampling. The test set accounted for 20% of the total dataset. Our experimental subject is ‘Haizhe’, which is a small quadrotor AUV developed in the laboratory. For each fault type, ‘Haizhe’ was tested several times. For each time, ‘Haizhe’ ran the same program and sailed underwater for 10–20 s to ensure that state data was long enough. The state data recorded in each test were then used as a data sample, and the corresponding fault type was the true label of the data sample. The dataset was used to validate a model-free fault diagnosis method proposed in our paper [1] and the complete dynamic model of ‘Haizhe’ AUV was reported in [2].

Topics & Concepts

Fault (geology)Computer scienceData setSet (abstract data type)Sample (material)Data miningUnderwaterTest dataSampling (signal processing)State (computer science)Test setFault coverageTraining setArtificial intelligencePattern recognition (psychology)AlgorithmEngineeringComputer visionGeologyElectronic circuitProgramming languageChromatographyElectrical engineeringChemistryFilter (signal processing)OceanographySeismologyFault Detection and Control SystemsAnomaly Detection Techniques and ApplicationsAdvanced Computational Techniques and Applications