Attribute Assisted Interpretation Confidence Classification Using Machine Learning

W. Weinzierl
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引用次数: 1

Abstract

An attribute assisted classification deriving estimates of interpretation confidence was performed. Instantaneous and coherency attributes were used in a supervised followed by an unsupervised classification resulting in an error envelope of the interpretation. In an initial approximation, confidence weights for a signal and background response are estimated using support vector machine learning. Subsequently, a weighted discrimination based on several coherency attributes using self-organizing maps is obtained. The resulting quantization is used as additional input and constraint in a final probability assessment of signal confidence using instantaneous attributes in support vector machine learning. The additional input in the form of quantization vectors and possible reduction in dimensionality of the input attribute vector space, allows to combine highly non-linear correlations in a multivariate discrimination. The trained classification is used to assign signal confidence probabilities to an interpreted seismic horizon. The proposed methodology is applied to an onshore data set from Wyoming, USA, revealing how single- and multi-trace attributes can be used to quantitatively assess the uncertainty of an interpretation often lost during project maturation.
使用机器学习的属性辅助解释置信度分类
进行了属性辅助分类,得到了解释置信度的估计。在有监督分类中使用瞬时和相干属性,然后使用无监督分类,导致解释的错误包络。在初始近似中,使用支持向量机器学习估计信号和背景响应的置信度权重。在此基础上,利用自组织映射得到了基于多个相干属性的加权判别。在支持向量机器学习中,使用瞬时属性作为信号置信度的最终概率评估的附加输入和约束。以量化向量形式的额外输入和输入属性向量空间的可能降维,允许在多变量判别中结合高度非线性相关性。训练后的分类用于为解释的地震层分配信号置信概率。该方法应用于美国怀俄明州的陆上数据集,揭示了单道和多道属性如何用于定量评估在项目成熟过程中经常丢失的解释的不确定性。
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