利用3D高分辨率PSDM数据量进行早期地质灾害检测

D. Lagomarsino, Matteo Fornari, C. Barbieri, T. Ciccarone, Alessandro Lomartire, E. Norelli, D. Rosa
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引用次数: 0

摘要

通常用于油气勘探的高分辨率叠前深度偏移(PSDM)三维地震体的开发在地貌和地质灾害风险评价方面取得了进展。这里提出的新方法允许在标准工作流程方面非常早地执行此类活动。对关键领域的早期意识在快速跟踪项目中是至关重要的,并允许设计成本优化。对3D HR PSDM输出进行处理,以生成地震体较浅部分的详细成像。这些体量以2米的深度间隔进行处理,并按时间(DTT)进行转换。最后,采用专用的偏移后时间处理序列,然后进行时间-深度转换,在深度域中生成高分辨率体(HRV)。然后,从地貌学的角度分析所得的3D体积,以研究海底和亚底。分析的重点是识别和绘制“不稳定区域”的分布,最终根据特定的KPI(静态条件下的安全系数指数)进行分类,从而对该区域的边坡稳定性进行定量评估。新方法已经通过对比从3D HR PSDM体中获得的DTM(数字地形模型)和可用的MBES(多波束回声测深仪)测深技术得到验证。所提出的方法显著提高了探测能力,突出了主要的关键构造,如峡谷侧翼、埋藏滑动、陆架断裂上的蠕变和张拉裂缝、巨砾和压实沉积物、海底流重塑的沉积物岸和沉积物波、凹痕区和流体逸出、构造活动引起的浊积体运动和沟槽。该方法完全符合传统MBES方法的检测能力。所描述的工作流程对于资产和操作的早期风险降低非常有益,特别是对于设施安装。提出的创新方法允许详细规划专门的数据采集活动,限制在最关键的领域,明显减少周转时间,节约成本,这对项目经济至关重要。
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Leveraging 3D High Resolution PSDM Data Volumes for Early Geohazard Detection
The exploiting of High Resolution (HR) Pre Stack Depth Migration (PSDM) 3D seismic volumes, normally used for Oil & Gas exploration, has been pushed forward in geomorphological and geohazard risk evaluation. The novel approach proposed here allows to carry out such activities very early in respect of the standard work flow. Early awareness of critical areas turns out to be crucial in fast-tracking projects and allows a design to cost optimization. The 3D HR PSDM outputs are processed in order to generate a detailed imaging of the shallower portion of the seismic volumes. The volumes are processed at a 2 meters depth interval and converted in time (DTT). Finally, a dedicated post migration time processing sequence, followed by time-to-depth conversion, is applied to generate a Higher Resolution Volume (HRV) in depth domain. The resulting 3D volume is then analyzed to study the seabed and the sub-bottom from a geomorphological standpoint. The analyses focus on the identification and mapping of the distribution of the "areas of instability" eventually classified according to a specific KPI (Safety Factor Index in static conditions), providing a quantitative slope stability assessment of the area. The new approach has been validated comparing the DTM (Digital Topographic Model) derived from the 3D HR PSDM volume and the available MBES (Multi Beam Echo Sounder) bathymetry. The proposed approach leads to a dramatic improvement in the detection capability, highlighting the major critical structures such as: canyon flanks, buried slides, creeps and tension cracks on the shelf break, boulders and compacted sediments, sediment banks and sediment waves reshaped by bottom currents, pockmark areas and fluid escapes, turbidity mass movements and furrows due to tectonic activities. The approach matches perfectly the detection capability of a traditional MBES approach. The described workflow is potentially highly beneficial for early de-risking assets and operations, especially for facilities installation. The proposed innovative approach allows a detailed planning of dedicated data acquisition campaigns, restricted to the most critical areas, with a tangible reduction in the turnaround times and cost savings crucial for project economics.
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