Digital Twin 3D System for Power Maintenance Vehicles Based on UWB and Deep Learning
Abstract
:1. Introduction
- A chaotic particle swarm optimization TDOA/AOA algorithm is proposed to improve the TDOA/AOA method in order to find the optimal method and improve positioning accuracy with less UWB stations and antennas.
- An improved YOLOv5 state recognition network for vehicle arms has been designed. We used a long-edge definition method (LDM) and a circular smoothing labeling (CSL) complex model to achieve state recognition of rotating arms. Additionally, we introduced a CBAM attention mechanism to enhance feature extraction of the network, while employing the SIoU loss function to reduce loss value and enhance the nonlinear segmentation ability of the network. Comparative experimental results demonstrate the superiority of our method in achieving state-of-the-art performance.
- A three-dimensional digital twin monitoring system is designed; the location of the vehicle and status of the arm are live updated in the twin monitoring system.
2. Digital Twinning Route
2.1. CPSO + TDOA/AOA Algorithm
2.2. YOLOv5-CSL for Vehicle Arm Recognition
2.2.1. YOLOv5-CSL with Attention Mechanism
2.2.2. Long-Edge Definition Method with Circular Smoothing Label
2.2.3. HardSwish Convolution Module
3. Maintenance Vehicle State Identification and Three-Dimensional Reproduction
3.1. CPSO + TDOA/AOA Positioning Experiment
3.2. Experiment of Crank Arm State Recognition
3.2.1. Experimental Environment and Evaluation Criteria
3.2.2. Experimental Data and Data Processing
3.2.3. Experimental Pretreatment
3.2.4. Experimental Comparison
3.2.5. Ablation Experiments
3.3. Vehicle Arm Angle Measurement
3.4. Three-Dimensional Twin Implementation of the Vehicle
4. Conclusions
5. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Network Model | AP/% | mAP/% | Parameters/MB | FPS | Perror/% | |
---|---|---|---|---|---|---|
arma | armb | |||||
R-Faster-RCNN | 78.62 | 79.47 | 79.18 | 314.0 | 8.6 | 38.0 |
R-Reppoints | 87.70 | 66.60 | 75.65 | 280.0 | 14.1 | 74.4 |
RoI Transformer | 81.12 | 80.76 | 80.94 | 421.0 | 6.2 | 59.2 |
R-YOLOv5-based | 80.55 | 79.47 | 80.01 | 34.5 | 33.2 | 21.2 |
R-YOLOv7-based | 88.78 | 80.25 | 84.01 | 42.5 | 30.5 | 12.9 |
YOLOv5-CSL-CBAM | 89.88 | 80.20 | 85.04 | 35.2 | 32.8 | 13.6 |
Network Model | HardSwish | SIoU | CBAM | AP/% | mAP/% | |
---|---|---|---|---|---|---|
arma | armb | |||||
R-YOLOv5-Based | × | × | × | 80.55 | 79.47 | 80.01 |
R-YOLOv5-HardSwish | √ | × | × | 89.30 | 79.01 | 84.16 |
R-YOLOv5-SIoU | × | √ | × | 89.50 | 80.41 | 84.96 |
R-YOLOv5-CBAM | × | × | √ | 89.79 | 79.98 | 84.88 |
YOLOv5-CSL-CBAM | √ | √ | √ | 89.88 | 80.20 | 85.04 |
Network Model | Predicted Value/o | Prediction Error/o | Average Prediction Error/o | ||
---|---|---|---|---|---|
R-Faster-RCNN | 5 | 28 | 5 | 9 | 7.0 |
R-Reppoints | 12 | 53 | 2 | 16 | 9.0 |
RoI Transformer | 8 | 45 | 2 | 8 | 5.0 |
R-YOLOv5-Based | 10 | 35 | 0 | 2 | 1.0 |
R-YOLOv7-based | 9 | 36 | 1 | 1 | 1.0 |
YOLOv5-CSL-CBAM | 10 | 38 | 0 | 1 | 0.5 |
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Chen, M.; Liu, T.; Zhang, J.; Xiong, X.; Liu, F. Digital Twin 3D System for Power Maintenance Vehicles Based on UWB and Deep Learning. Electronics 2023, 12, 3151. https://doi.org/10.3390/electronics12143151
Chen M, Liu T, Zhang J, Xiong X, Liu F. Digital Twin 3D System for Power Maintenance Vehicles Based on UWB and Deep Learning. Electronics. 2023; 12(14):3151. https://doi.org/10.3390/electronics12143151
Chicago/Turabian StyleChen, Mingju, Tingting Liu, Jinsong Zhang, Xingzhong Xiong, and Feng Liu. 2023. "Digital Twin 3D System for Power Maintenance Vehicles Based on UWB and Deep Learning" Electronics 12, no. 14: 3151. https://doi.org/10.3390/electronics12143151
APA StyleChen, M., Liu, T., Zhang, J., Xiong, X., & Liu, F. (2023). Digital Twin 3D System for Power Maintenance Vehicles Based on UWB and Deep Learning. Electronics, 12(14), 3151. https://doi.org/10.3390/electronics12143151