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Casing Damage Prediction Model Based on the Data-Driven Method

机译:基于数据驱动方法的套管损伤预测模型

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摘要

Casing damage caused by sand production in unconsolidated sandstone reservoirs often results in oil wells unable to produce normally. However, due to the complex mechanism of sheath damage caused by sand production, there is no more mature technology for predicting the risk of casing damage in advance. Data-driven method can better integrate various factors and use a large amount of historical data to solve complex classification prediction problems. In this paper, XGBoost and LightGBM algorithms are used to establish casing damage prediction models, and 13 model application experiments are carried out to optimize the set of casing damage factors. These two algorithms are used to calculate the feature importance of each factor and determine the final set of factors. The evaluation results of five key metrics show that both prediction models show good performance, and the prediction accuracy is 0.99 for the XGBoost model and 0.94 for the LightGBM model. Applying the established prediction model can determine reasonable range of the maximum daily liquid production of a single layer (Qlmax) to reduce the probability of casing damage. In addition, at certain Qlmax, increasing the perforation density can significantly reduce the probability of casing damage. Therefore, increasing the perforation density can achieve high production without causing casing damage.
机译:松散砂岩储层产砂造成的套管损坏往往导致油井无法正常生产。然而,由于制砂导致套管损伤机理复杂,目前尚无更成熟的技术用于提前预测套管损伤风险。数据驱动方法可以更好地整合各种因素,利用大量的历史数据来解决复杂的分类预测问题。本文采用XGBoost和LightGBM算法建立套管损伤预测模型,并开展了13个模型应用实验,对套管损伤因子集进行优化。这两种算法用于计算每个因子的特征重要性,并确定最终的因子集。5个关键指标的评估结果表明,两种预测模型均表现出良好的性能,XGBoost模型的预测准确率为0.99,LightGBM模型的预测准确率为0.94。应用已建立的预测模型可以确定单层最大日产液量(Qlmax)的合理范围,以降低套管损坏的概率。此外,在一定的Qlmax下,增加射孔密度可以显著降低套管损坏的概率。因此,增加射孔密度可以在不造成套管损坏的情况下实现高产量。

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