Machine Learning and Quantitative Ground Models for Improving Offshore Wind Site Characterization

G. Sauvin, M. Vanneste, M. Vardy, R. Klinkvort, Forsberg Carl Fredrik
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引用次数: 5

Abstract

Quantitative integrated ground models are a requirement for proper cost optimal site characterization, for offshore renewables, coastal activities and O&G projects. Geotechnical analyses and interpretations often rely on isolated 1D boreholes. On the other hand, geophysical data are collected in 2D lines and/or 3D volumes. Geophysical data therefore provides the natural link to re-populate geotechnical properties found in the 1D boreholes onto a larger area and thereby build a consistent and robust ground model. The geophysical data can be used to estimate geotechnical data and, as of today, there are a few methods available that can reliably map the dynamic properties from the seismic data (stratigraphic information, P-wave velocities, amplitudes, and their attributes) into geotechnical or geomechanical properties, particularly for shallow sub-surface depth. Being able to predict soil properties away from boreholes is important, as often the field layout changes during the development phase, and hence, information at the specific foundation locations may not be readily available. We have developed a workflow to build quantitative ground models following three approaches: (i) a geometric model in which the seismic data interpretations guide the prediction of geotechnical properties; (ii) a geostatistical approach in which in addition to the structural constraints, we used the seismic velocities to guide the prediction; and (iii) a multi-attribute regression using an artificial neural network (ANN). We apply it to a set of publically available data from the Holland Kust Zuid wind farm site in the Dutch sector of the North Sea. The result of the workflow yields maps or sub-volumes of geotechnical or geomechanical properties across the development site that can be used in further planning or engineering design. In this study, we use the tip resistance from a CPT as an example. The tip resistance derived using all methods generally give good results. Validation against randomly selected CPT shows good correlation between predicted and measured tip resistance. The ANN performs better than the geostatistical approach. However, these two approaches require good data quality and a rather large dataset to be effective. Therefore, using a global dataset not restricted to the Holland Kust Zuid site may improve the prediction. Moreover, using existing empirical correlation and calibration through laboratory testing or by training another ANN model, the geotechnical stiffness/strength parameters such as angle of friction or undrained shear strength could be derived. The next step is to use the results and their uncertainty into a cost assessment for the given foundation concepts.
机器学习和定量地面模型用于改善海上风力站点表征
对于海上可再生能源、沿海活动和油气项目来说,定量综合地面模型是成本最优地点描述的必要条件。岩土分析和解释通常依赖于孤立的一维钻孔。另一方面,地球物理数据以二维线和/或三维体的形式收集。因此,地球物理数据提供了将1D钻孔中发现的岩土特性重新填充到更大区域的自然联系,从而建立一致且稳健的地面模型。地球物理数据可用于估计岩土数据,目前有几种方法可以可靠地将地震数据的动态特性(地层信息、纵波速度、振幅及其属性)映射为岩土或地质力学特性,特别是浅层次表层深度。能够预测远离钻孔的土壤特性是很重要的,因为在开发阶段,现场布局经常发生变化,因此,特定基础位置的信息可能不容易获得。我们已经开发了一个工作流程,通过以下三种方法建立定量地面模型:(i)几何模型,其中地震数据解释指导岩土力学性质的预测;(ii)地质统计学方法,除构造约束外,我们还使用地震速度来指导预测;(iii)使用人工神经网络(ANN)进行多属性回归。我们将其应用于北海荷兰地区Kust Zuid风电场站点的一组公开数据。工作流程的结果产生了整个开发地点的岩土技术或地质力学属性的地图或子卷,可用于进一步的规划或工程设计。在本研究中,我们以CPT的尖端电阻为例。用各种方法求得的尖端阻力一般都能得到较好的结果。对随机选择的CPT的验证表明,预测和测量的尖端阻力之间具有良好的相关性。人工神经网络的性能优于地质统计方法。然而,这两种方法需要良好的数据质量和相当大的数据集才能有效。因此,使用不局限于荷兰Kust Zuid站点的全球数据集可能会改善预测。此外,通过实验室测试或训练另一个人工神经网络模型,利用现有的经验关联和校准,可以推导出岩土刚度/强度参数,如摩擦角或不排水抗剪强度。下一步是将结果及其不确定性用于给定基础概念的成本评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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