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METHOD FOR PREDICTING SUBSURFACE FEATURES FROM SEISMIC USING DEEP LEARNING DIMENSIONALITY REDUCTION FOR REGRESSION

机译:回归的深度学习降维预测地震地下特征的方法。

摘要

A method for training a backpropagation-enabled regression process is used for predicting values of an attribute of subsurface data. A multi-dimensional seismic data set with an input dimension of at least two is inputted into a backpropagation-enabled process. A predicted value of the attribute has a prediction dimension of at least 1 and is at least 1 dimension less than the input dimension.
机译:用于训练支持反向传播的回归过程的方法用于预测地下数据的属性值。输入维度至少为2的多维地震数据集被输入到支持反向传播的过程中。属性的预测值的预测维数至少为1,并且比输入维数小至少1维。

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