论文标题
通过视觉变压器来缓解空间非组织性
Mitigation of Spatial Nonstationarity with Vision Transformers
论文作者
论文摘要
空间非平稳性是特征统计分布的位置差异,在许多自然设置中无处不在。例如,在地质储层中,由于地质力学压实趋势,岩石基质孔隙度因沉积和浓度过程而变化,因此在矿物沉积物中,由于大气和地形相互作用而导致的水文学降雨在变化,并且在金属层结构中由于差异而变化。常规的地统计建模工作流程依赖于平稳性的假设,能够为地统计推断建模空间特征。然而,在处理非组织空间数据时,这通常不是一个现实的假设,这促使各种非组织的空间建模工作流程,例如趋势和残留分解,具有次要特征以及空间分段以及对固定子域的独立建模。深度学习技术的出现使新的工作流程用于建模空间关系。但是,在地理空间环境中,深入学习,很少有关于缓解空间非机构性的最佳实践和一般指导。我们展示了两种常见的地统计空间非组织性对深度学习模型预测性能的影响,并提出了使用自我注意力(视觉变压器)模型来缓解这种影响。我们证明了视力变压器以低至10%的相对误差来缓解非机构性的实用性,超过了诸如卷积神经网络等替代深度学习方法的性能。我们通过证明自我发场网络在存在通常观察到的地理空间非平稳性的情况下建模大规模空间关系的能力来建立最佳实践。
Spatial nonstationarity, the location variance of features' statistical distributions, is ubiquitous in many natural settings. For example, in geological reservoirs rock matrix porosity varies vertically due to geomechanical compaction trends, in mineral deposits grades vary due to sedimentation and concentration processes, in hydrology rainfall varies due to the atmosphere and topography interactions, and in metallurgy crystalline structures vary due to differential cooling. Conventional geostatistical modeling workflows rely on the assumption of stationarity to be able to model spatial features for the geostatistical inference. Nevertheless, this is often not a realistic assumption when dealing with nonstationary spatial data and this has motivated a variety of nonstationary spatial modeling workflows such as trend and residual decomposition, cosimulation with secondary features, and spatial segmentation and independent modeling over stationary subdomains. The advent of deep learning technologies has enabled new workflows for modeling spatial relationships. However, there is a paucity of demonstrated best practice and general guidance on mitigation of spatial nonstationarity with deep learning in the geospatial context. We demonstrate the impact of two common types of geostatistical spatial nonstationarity on deep learning model prediction performance and propose the mitigation of such impacts using self-attention (vision transformer) models. We demonstrate the utility of vision transformers for the mitigation of nonstationarity with relative errors as low as 10%, exceeding the performance of alternative deep learning methods such as convolutional neural networks. We establish best practice by demonstrating the ability of self-attention networks for modeling large-scale spatial relationships in the presence of commonly observed geospatial nonstationarity.