基于注意力的水下漏油检测

Muhammad Zia Ur Rehman, Manimurugan Shanmuganathan, Anand Paul
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引用次数: 0

摘要

由于对原始水和天然石油的需求不断增加以及全球需求的不断增长,水下管道的油气泄漏检测已成为人们关注的主要问题,本研究解决了这一紧迫问题。虽然存在大量用于图像和语音识别的数据集,但很少有数据集可用于使用声学信号对石油和水管泄漏进行工程检测。因此,许多现有的泄漏检测系统在识别漏洞方面是无效的,导致重大泄漏给管道公司造成了数百万美元的损失。为了解决这个问题,我们提出了一种新的方法,采用基于注意力的神经网络方法来预测水下管道泄漏并评估深度学习模型的有效性。我们的研究采用了来自实际工业场景的传感器信号数据集,我们的结果表明,注意力模型在该领域的表现优于其他模型。这项研究为解决漏水检测和管理问题提供了一条有希望的途径,这对水工业和全球人口具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention-Based Underwater Oil Leakage Detection
This study addresses the pressing issue of oil and water and leakage detection in underwater pipes, which has become a major concern due to the increasing demand for pristine water and natural oil and a growing global demand. While extensive datasets exist for image and voice recognition, few datasets are available for the engineering detection of oil and water pipe leakage using acoustic signals. Consequently, many existing leak detection systems are ineffective at identifying breaches, resulting in major spills that cost pipeline companies millions of dollars. To address this problem, we propose a novel approach that employs an attention-based neural network methodology to predict underwater pipe leakage and evaluate the effectiveness of deep learning models. Our study employs sensor signal datasets from an actual industrial scenario, and our results indicate that the attention model outperforms other models in this domain. This study presents a promising avenue for addressing the issue of water leakage detection and management, which has significant implications for the water industry and the global population.
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