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A Lithology Identification Approach Based on Machine Learning With Evolutionary Parameter Tuning

机译:基于机器学习和进化参数调整的岩性识别方法

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摘要

Identification of underground formation lithology from well-log data is an important task in petroleum exploration and engineering. Due to the cost or imprecision of some methods applied in this activity, there is a need to automate the procedure of reservoir characterization. Machine learning techniques can be efficient alternatives to lithology identification. To acquire proper performance, usually, some parameters of these techniques should be adjusted, and this can become a hard task depending on the complexity of the underlying problem. This letter integrates the gradient boosting (GB) with a differential evolution (DE) for formation lithology identification using data from the Daniudui gas field and the Hangjinqi gas field. This letter's contributions include the use of an evolutionary algorithm to adjust optimally the hyperparameters of the GB, and the results show improvements when compared with those obtained in the literature.
机译:从测井数据识别地下地层岩性是石油勘探和工程中的重要任务。由于此活动中使用的某些方法的成本或不精确性,有必要使储层表征过程自动化。机器学习技术可以作为岩性识别的有效替代方法。为了获得适当的性能,通常,应调整这些技术的某些参数,这可能会变得很困难,具体取决于潜在问题的复杂性。这封信将梯度增强法(GB)与微分演化法(DE)集成在一起,以使用大牛堆堆气田和杭金旗气田的数据进行地层岩性识别。这封信的贡献包括使用进化算法来最佳调整GB的超参数,与文献中的结果相比,结果表明有所改进。

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