自动纠错:提高注释质量,优化与石油勘探相关的土地扰动绘图模型

IF 3.7 3区 地球科学 Q2 ENVIRONMENTAL SCIENCES
Yuwei Cai , Bingxu Hu , Hongjie He , Kyle Gao , Hongzhang Xu , Ying Zhang , Saied Pirasteh , Xiuqing Wang , Wenping Chen , Huxiong Li
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引用次数: 0

摘要

人工开采与石油勘探相关的土地扰动,通常包括资源道路、采矿设施和井场,在成本和时间方面都是巨大的挑战。对石油勘探造成的土地扰动进行准确的监测和绘图,对于开展全面的环境评估和促进有效的土地复垦计划起着至关重要的作用。然而,目前油气勘探领域的深度学习方法主要侧重于溢油检测,而忽视了石油勘探造成的土地扰动这一关键方面,从而忽略了对土地的影响。此外,鉴于井场分散且相对于其他土地覆盖面积较小,对其进行检测存在很大困难。本文提出了一种自动纠错算法(AEC),以解决地面实况数据质量的不足。这种自动纠错方法被集成到土地扰动提取的深度学习框架中,专门用于与石油勘探相关的土地扰动分析。我们在阿尔伯塔省收集的一个数据集上验证了该方法的有效性,该数据集覆盖了一个油砂开采区。AEC 算法的应用大大提高了土地扰动分析的准确性,从而有助于更有效地进行碳氢化合物勘探影响分析,促进艾伯塔省政府及时制定规划。结果表明,平均像素精度(AA)和平均交集大于联合度(mIoU)都有明显提高,分别从 8.3% 提高到 15.4%,从 0.5% 提高到 5.8%。这些改进对陆地扰动检测的精确度有着深远的影响,证明了所提出的 AEC 算法可以实现双重目的:纠正数据集中的错误和有效检测石油勘探区的陆地扰动特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic error correction: Improving annotation quality for model optimization in oil-exploration related land disturbances mapping

The manual extraction of land disturbances associated with oil exploration, which normally includes resource roads, mining facilities, and well pads, presents significant challenges in terms of cost and time. Accurate monitoring and mapping of land disturbances resulting from oil exploration plays a crucial role in conducting comprehensive environmental assessments and facilitating effective land reclamation initiatives. However, prevailing deep learning methodologies in the realm of oil and gas exploration primarily focus on oil spill detection, neglecting the critical aspect of land disturbances resulting from oil exploration, thus overlooking the impact on land. Furthermore, given that the well sites are scattered and relatively diminutive compared to other land covers, their detection poses substantial difficulties. This paper proposes an automatic error-correcting (AEC) algorithm to address deficiencies in ground truth data quality. This AEC method was integrated into the deep-learning framework for land disturbance extraction, specifically tailored for land disturbances analysis associated with oil exploration. The efficacy of our method was validated on a dataset collected in Alberta covering an area of oil sand mining sites. The application of the AEC algorithm significantly enhanced the accuracy of land disturbance analysis, thereby contributing to a more effective hydrocarbon exploration impact analysis and facilitating the timely planning by the Alberta government. The results demonstrate notable improvements in both average pixel accuracy (AA) and mean intersection over union (mIoU), ranging from 8.3% to 15.4% and 0.5% to 5.8%, respectively. These enhancements, which have profound implications for the precision of land disturbance detection, prove that the proposed AEC algorithm can serve a dual purpose: correcting errors in the dataset and efficiently detecting land disturbance features in the oil exploration area.

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来源期刊
CiteScore
8.10
自引率
0.00%
发文量
85
审稿时长
48 weeks
期刊介绍: The Egyptian Journal of Remote Sensing and Space Sciences (EJRS) encompasses a comprehensive range of topics within Remote Sensing, Geographic Information Systems (GIS), planetary geology, and space technology development, including theories, applications, and modeling. EJRS aims to disseminate high-quality, peer-reviewed research focusing on the advancement of remote sensing and GIS technologies and their practical applications for effective planning, sustainable development, and environmental resource conservation. The journal particularly welcomes innovative papers with broad scientific appeal.
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