Author
Listed:
- Shiya Gao
- Xin Guan
- Xiaojing Cao
- Zhili Bai
- Caimeng Wang
- Yun Zhan
- Haiyang Yu
Abstract
This study aims to explore the integration of the Faster R-CNN (Region-based Convolutional Neural Network) algorithm from deep learning into the MobileNet v2 architecture, within the context of enterprises aiming for carbon neutrality in their development process. The experiment develops a marine oil condition monitoring and classification model based on the fusion of MobileNet v2 and Faster R-CNN algorithms. This model utilizes the MobileNet v2 network to extract rich feature information from input images and combines the Faster R-CNN algorithm to rapidly and accurately generate candidate regions for oil condition monitoring, followed by detailed feature fusion and classification of these regions. The performance of the model is evaluated through experimental assessments. The results demonstrate that the average loss value of the proposed model is approximately 0.45. Moreover, the recognition accuracy of the model for oil condition on the training and testing sets reaches 90.51% and 93.08%, respectively, while the accuracy of other algorithms remains below 90%. Thus, the model constructed in this study exhibits excellent performance in terms of loss value and recognition accuracy, providing reliable technical support for offshore oil monitoring and contributing to the promotion of sustainable utilization and conservation of marine resources.
Suggested Citation
Shiya Gao & Xin Guan & Xiaojing Cao & Zhili Bai & Caimeng Wang & Yun Zhan & Haiyang Yu, 2025.
"Optimization of Decision Support Technology for Offshore Oil Condition Monitoring with Carbon Neutrality as the Goal in the Enterprise Development Process,"
PLOS ONE, Public Library of Science, vol. 20(3), pages 1-20, March.
Handle:
RePEc:plo:pone00:0319858
DOI: 10.1371/journal.pone.0319858
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