CVOct 18, 2024

Flame quality monitoring of flare stack based on deep visual features

arXiv:2410.19823v1h-index: 1Proceedings of the 2024 7th International Conference on Computer Information Science and Artificial Intelligence
Originality Synthesis-oriented
AI Analysis

This addresses the need for cost-effective and durable monitoring in harsh industrial environments, though it appears incremental by applying existing computer vision tools to a specific domain.

The paper tackles the problem of monitoring flame combustion efficiency in flare stacks for environmental protection by using visual features like flame-to-smoke area ratio and RGB information, achieving real-time monitoring that enables timely adjustments to air and waste ratios.

Flare stacks play an important role in the treatment of waste gas and waste materials in petroleum fossil energy plants. Monitoring the efficiency of flame combustion is of great significance for environmental protection. The traditional method of monitoring with sensors is not only expensive, but also easily damaged in harsh combustion environments. In this paper, we propose to monitor the quality of flames using only visual features, including the area ratio of flame to smoke, RGB information of flames, angle of flames and other features. Comprehensive use of image segmentation, target detection, target tracking, principal component analysis, GPT-4 and other methods or tools to complete this task. In the end, real-time monitoring of the picture can be achieved, and when the combustion efficiency is low, measures such as adjusting the ratio of air and waste can be taken in time. As far as we know, the method of this paper is relatively innovative and has industrial production value.

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