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Fault Diagnosis for Robotic Fish Sensors Based on Spatial Domain Image Fusion and Convolution Neural Network

Xuqing Fan, Sai Deng, Junfeng Fan, Chao Zhou, Zhengxing Wu, Yaming Ou, Bin Zhang

发表年份
2023
引用次数
2

摘要

The accurate detection of faults in robotic fish allows for improving the safety and reliability of its operations. This paper proposes a depth sensor fault diagnosis method based on Gramian Angular Field Fusion and Convolutional Neural Network (GAFF-CNN). Firstly, the depth sensor signals are augmented by a sliding window with overlapping data. Secondly, the one-dimensional time series sensor signals are converted into two-dimensional images by using Gramian Angular Field (GAF). To improve fault diagnosis accuracy and accelerate the training speed, using a weighted fusion method to fuse Gramian Angular Summation Field (GASF) and Gramian Angular Difference Field (GADF). After that, the model of CNN is established to train and test fused images for fault diagnosis. The result shows that the fault diagnosis accuracy is the highest at 97.22% when using a weighted coefficient of 0.3, and when the weighted coefficient is 0.4, the training speed is the fastest.

关键词

Gramian matrixConvolutional neural networkFault (geology)Computer scienceZernike polynomialsArtificial intelligenceFuse (electrical)Convolution (computer science)Sensor fusionField (mathematics)

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