An Accurate Forest Fire Recognition Method Based on Improved BPNN and IoT
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Dataset Description
2.2. Network Structure
2.3. BPNNFire Algorithm
- The checked window is divided into 16 × 16 parts;
- Each pixel is compared to the neighboring pixel;
- If the value of the neighbor is smaller than the focal pixel value, the pixel value is set to 0; otherwise, it is 1, generating an 8-bit binary number;
- The frequency histogram generated by each member number is calculated in the entire cell;
- Histograms can be normalized according to the use-case authenticity, and the histogram of each cell is normalized to obtain the feature vector;
2.4. Construction of the DCNN Prediction Model
- (1)
- Convolutional layer
- (2)
- Sampling layer
- (3)
- DCNN model
3. Results
3.1. Performance Comparison Test and Analysis of the BPNN Algorithm
3.1.1. Model Performance Test
3.1.2. Forest Fire Image Recognition Effect Test
3.2. Internet of Things Monitoring System Test and Analysis
3.2.1. System Packet Loss Rate Test
3.2.2. Fire-Monitoring Network Deployment of Longyandong Forest Farm
4. Conclusions
- The system can typically transmit the forest environment data monitored by the ground WSN, and the UAV can generally return fire images above the forest and provide a prompt early warning, meeting the needs of forest fire monitoring;
- Multiple algorithms compared the processing speed of a video with a processing time of 4 min and 16 s. The video had 29 images/s, and the size of each frame was 960×540, for a total of 7424 images. The processing speed and delay rate of the video images were calculated using the BPNNFire algorithm and other algorithms. The test results revealed that the BPNNFire algorithm’s judgment accuracy rate was 84.37%, indicating that this algorithm was superior to other recognized algorithms;
- The real-time online monitoring of forest environmental indicators for three months indicates that the packet loss rate of the forest fire monitoring network was 5.99%for Longshan Forest Farm and 2.22% for Longyandong Forest Farm. The constructed hardware equipment and embedded routing protocol could be applied to an unattended situation in the forest fire monitoring field to ensure long-term stable system operation. The maximum relative error between the measured temperature and humidity values and the actual value was 5.75%, indicating that the forest fire monitoring/early warning system could stably receive and transmit forest environmental data, and that the system connectivity was good.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Category | Number of Dataset Samples | Training Set Samples | Verification Set Samples | Testing Set Samples |
---|---|---|---|---|
Fire image | 53,830 | 43,064 | 5237 | 5529 |
Name | Training Environment |
---|---|
CPU | Inter® Xeon® Gold [email protected] GHz |
GPU | NVIDIA GTX 3090@24 GB |
RAM | 128 GB |
PyCharm version | 2020.3.2 |
Python version | 3.7.10 |
PyTorch version | 1.6.0 |
CUDA version | 11.1 |
cuDNN version | 8.0.5 |
Forest Farm | Longshan | Longyandong |
---|---|---|
Number of local packets sent | 3572 | 3572 |
Number of packets received by the platform | 3358 | 2725 |
Packet loss rate | 5.99% | 23.7% |
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Zheng, S.; Gao, P.; Zhou, Y.; Wu, Z.; Wan, L.; Hu, F.; Wang, W.; Zou, X.; Chen, S. An Accurate Forest Fire Recognition Method Based on Improved BPNN and IoT. Remote Sens. 2023, 15, 2365. https://doi.org/10.3390/rs15092365
Zheng S, Gao P, Zhou Y, Wu Z, Wan L, Hu F, Wang W, Zou X, Chen S. An Accurate Forest Fire Recognition Method Based on Improved BPNN and IoT. Remote Sensing. 2023; 15(9):2365. https://doi.org/10.3390/rs15092365
Chicago/Turabian StyleZheng, Shaoxiong, Peng Gao, Yufei Zhou, Zepeng Wu, Liangxiang Wan, Fei Hu, Weixing Wang, Xiangjun Zou, and Shihong Chen. 2023. "An Accurate Forest Fire Recognition Method Based on Improved BPNN and IoT" Remote Sensing 15, no. 9: 2365. https://doi.org/10.3390/rs15092365