Purpose of this research is to forecast the development of sand bodies in productive sediments based on well log data and seismic attributes. The object of the study is the productive intervals of Achimov sedimentary complex in the part of oil field located in Western Siberia. The research shows a technological stack of machine learning algorithms, methods for enriching the source data with synthetic ones and algorithms for creating new features. The result was the model of regression relationship between the values of natural radioactivity of rocks and seismic wave field attributes with an acceptable prediction quality. Acceptable quality of the forecast is confirmed both by model cross validation, and by the data obtained following the results of new well.
翻译:这项研究的目的是根据井喷数据和地震特性预测沙体在有生产力的沉积物中的沙体的开发情况。研究的目的是在位于西伯利亚的油田部分进行Achimov沉积综合体的生产间隔。研究展示了一套技术性的机器学习算法、用合成算法来丰富源数据的方法以及创造新特征的算法。其结果是岩石自然放射性值与具有可接受的预测质量的地震波外特性之间的回归关系模型。可接受预报质量通过模型交叉验证和新井结果后获得的数据得到证实。