A Deep Learning Approach for Underwater Leak Detection

Viviane F. da Silva, T. Netto, Bessie A. Ribeiro
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Abstract

The increase in costs in the exploration and production of oil and gas in deep waters has led companies in the sector to invest in innovative technologies to detect, locate and correct faults in their production systems. This research aims to develop a methodology for monitoring and detecting leaks in subsea structures based on deep neural networks, allowing automated, efficient, and less costly monitoring than conventional monitoring methodologies. A set of monitoring data will be pre-processed for noise elimination, resolution improvement and resizing, to obtain a better performance of the algorithm. The next step consists of extracting relevant characteristics from the dataset to clearly identify the leak. The results show the metrics used to evaluate the performance of the neural network as the accuracy and efficiency of the algorithm to detect leaks in the underwater structures and equipment. Images of the Gulf of Mexico oil spill were used to test the methodology and the successful detection of the leak demonstrates the potential of the methodology for underwater leak detection.
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水下泄漏检测的深度学习方法
深水油气勘探和生产成本的增加促使该行业的公司投资于创新技术,以检测、定位和纠正生产系统中的故障。本研究旨在开发一种基于深度神经网络的海底结构泄漏监测和检测方法,与传统监测方法相比,可以实现自动化、高效、成本更低的监测。对一组监测数据进行预处理,消除噪声,提高分辨率,调整大小,以获得更好的算法性能。下一步包括从数据集中提取相关特征,以清楚地识别泄漏。结果表明,用于评价神经网络性能的指标是该算法检测水下结构和设备泄漏的准确性和效率。使用墨西哥湾石油泄漏的图像来测试该方法,泄漏的成功检测表明了该方法在水下泄漏检测方面的潜力。
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