ARG-Mask RCNN: An Infrared Insulator Fault-Detection Network Based on Improved Mask RCNN
Abstract
:1. Introduction
- (1)
- A new backbone network is proposed to improve the capability of fault feature extraction.
- (2)
- A rotated anchor box is proposed to reduce the extraneous background in the prediction box.
- (3)
- The genetic algorithm combined with the gradient descent method is proposed to optimize the parameters so that the model is as close to the global optimal solution as possible, and the detection accuracy of the model is improved.
- (4)
- By comparing with several optimal insulator fault-identification algorithms, the superiority of the proposed method is confirmed.
2. Related Work
2.1. Data Sources
- (1)
- Compared with other fault-diagnosis data, infrared imaging data has the following outstanding characteristics. (I) The data collection is convenient, and the work efficiency is high. It only takes a few hours to complete the collection of a large amount of data with the drone. (II) During the actual inspection, it can be obtained without touching the equipment to avoid product damage caused by improper operation during inspection. (III) A variety of typical faults can be detected, and the location of the faulty insulator sheet and the degree of damage can be located. (IV) Infrared light can detect the internal characteristics of the equipment when it is running. The location of the fault can be identified by the color of the light, which is related to its fault principle, while it is difficult to find faults caused by cracks and internal defects with visible light.
- (2)
- To detect a variety of different faults of insulators, it is necessary to determine which type of fault is caused when the data set is marked. The quality of the data set will directly affect the identification of faulty insulators. To avoid confusion and the inability to identify different fault types, the following will introduce the characteristics of four typical infrared faults in detail.
- (3)
- When collecting data on insulators outdoors, to accurately reflect the temperature of each insulator, the following points should be noted. (I) Weather conditions—avoid collecting in bad weather such as strong wind, strong light, rain, and snow, which will cause the detected device temperature to be inaccurate. (II) The collection time should be selected as early as possible in the morning or the evening when the surface temperature of the insulator is in a relatively stable state. (III) The measurement position should cover the overall map of the insulator string as much as possible. If it is the first measurement, it should keep a certain distance from the equipment to avoid damage to the equipment caused by operation errors.
2.2. Mask RCNN Network
2.2.1. Network Model
- Backbone network
- Pixel Prediction (Mask Prediction)
- Region of Interest Align (RoI Align)
2.2.2. Loss Function
- Classification parameters:
- Cross entropy loss function:
- Regression parameters:
- SmoothL1 Loss error function:
3. ARG-Mask RCNN Algorithm
3.1. ARG-Mask RCNN Overall Model Framework
3.2. ARG-Mask RCNN Backbone Network
3.3. ARG-Mask RCNN Loss Function
3.4. ARG-Mask RCNN Parameter Update
3.5. ARG-Mask RCNN Algorithm Implementation Steps
4. Simulation Experiment
4.1. Experimental Environment
4.2. Experimental Results and Analysis
4.3. ARG-Mask RCNN Performance Test
5. Discussion and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Project | Model or Parameter Value |
---|---|
Central Processing Unit (CPU) | Intel i5-7300HQ |
RAM/GB | 128 |
Graphics Processing Unit (GPU) | An RTX 3080Ti |
Operating System | Window 10 |
Software Environment | Anaconda3, Cuda11.3, Python3.7 |
Development Tools | Pycharm |
Deep Learning Libraries | PyTorch |
Parameter | Value |
---|---|
weight decay | 0.0001 |
learning rate | 0.001 |
number of iterations | 100 |
number of training rounds | 60 |
Method | Backbone | True Positive (TP) | False Positive (FP) | False Negative (FN) | True Negative (TN) | Precision | Recall |
---|---|---|---|---|---|---|---|
Cascade RCNN | ResNet-101 + FPN | 125 | 19 | 21 | 0 | 0.868 | 0.856 |
SSD | VGG-16 | 231 | 42 | 50 | 0 | 0.846 | 0.822 |
Retina Net | ResNet-101 + FPN | 254 | 36 | 30 | 0 | 0.876 | 0.894 |
Mask RCNN | ResNet-101 + FPN | 268 | 11 | 27 | 0 | 0.961 | 0.908 |
Yolov3 tiny | DarkNet-53 | 354 | 66 | 68 | 0 | 0.842 | 0.839 |
ARG-Mask RCNN | Improved ResNet-101 + FPN | 316 | 5 | 4 | 0 | 0.984 | 0.988 |
Class | Cascade RCNN | SSD | Retina Net | Mask RCNN | YOLOv3 Tiny | ARG-Mask RCNN |
---|---|---|---|---|---|---|
Self-imploding fault (%) | 76.96 | 72.63 | 79.69 | 87.65 | 73.42 | 97.66 |
Low fault (%) | 67.32 | 64.38 | 81.47 | 86.12 | 74.38 | 96.82 |
Zero fault (%) | 75.31 | 75.59 | 79.46 | 82.73 | 73.91 | 95.46 |
Filth fault (%) | 83.81 | 73.64 | 77.34 | 94.02 | 68.33 | 99.18 |
Mean Accuracy (%) | 75.85 | 71.56 | 79.49 | 87.63 | 72.51 | 97.28 |
FPS | 1.84 | 5.97 | 4.56 | 3.27 | 6.41 | 5.75 |
Times | 0.54 | 0.17 | 0.22 | 0.31 | 0.16 | 0.17 |
TOPSIS | 0.2834 | 0.6684 | 0.5324 | 0.2180 | 0.6973 | 0.8725 |
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Zhou, M.; Wang, J.; Li, B. ARG-Mask RCNN: An Infrared Insulator Fault-Detection Network Based on Improved Mask RCNN. Sensors 2022, 22, 4720. https://doi.org/10.3390/s22134720
Zhou M, Wang J, Li B. ARG-Mask RCNN: An Infrared Insulator Fault-Detection Network Based on Improved Mask RCNN. Sensors. 2022; 22(13):4720. https://doi.org/10.3390/s22134720
Chicago/Turabian StyleZhou, Ming, Jue Wang, and Bo Li. 2022. "ARG-Mask RCNN: An Infrared Insulator Fault-Detection Network Based on Improved Mask RCNN" Sensors 22, no. 13: 4720. https://doi.org/10.3390/s22134720
APA StyleZhou, M., Wang, J., & Li, B. (2022). ARG-Mask RCNN: An Infrared Insulator Fault-Detection Network Based on Improved Mask RCNN. Sensors, 22(13), 4720. https://doi.org/10.3390/s22134720