利用机器学习预测油井产砂开始时间

Gorei Nkela Ngochindo, Amieibibama Joseph
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摘要

油井产砂是一项重大挑战,会对生产率产生负面影响并损害设备的完整性。本研究探讨了优化支持向量机(SVM)二元分类算法在预测油井出砂方面的应用。研究使用了来自 63 口油井的数据集,并根据体积和剪切模量乘积确定了类标签。 模型开发纳入了可能影响砂脱落的地质和机械参数,例如杨氏模量、泊松比、最小和最大水平应力、覆土压力、孔隙压力、深度、裂缝梯度和地层强度。高于 8E+11 临界值的情况被归类为不产砂,而低于 8E+11 临界值的情况则被视为潜在的产砂情况。SVM 模型在预测产砂开始方面表现出了极高的准确性,并通过现场数据进行了严格的训练和测试。该模型的准确性使用统计参数进行评估,如:准确性 (ACC)、灵敏度 (SE)、特异性 (SP) 和马修相关系数 (MCC)。从结果来看,该模型在所有参数上都达到了 1 分,表明其在产沙量预测方面具有很高的可靠性和准确性。该模型的实际意义重大,有助于完井工程师就防砂策略做出前瞻性决策。此外,将该模型集成到油气行业流程中,可以通过预测潜在的产砂事件来优化运营效率,从而防止生产受损,确保损失预防。
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Predicting Onset of Sand Production in Oil Wells using Machine Learning
Sand production in oil wells is a significant challenge that negatively impacts productivity  and compromise equipment integrity. This study explores the application of Optimized Support Vector Machine (SVM) binary classification algorithm to predict the onset of sand production in oil wells. A dataset from 63 oil wells was utilized, and class labels were determined based on the bulk and shear modulus product.  The model development incorporated geological and mechanical parameters that could influence sand detachment such as: Young’s modulus, Poisson’s ratio, minimum and maximum horizontal stresses, overburden pressure, pore pressure, depth, fracture gradient, and formation strength. Instances above the threshold of 8E+11 were classified as indicative of no sand production, while those below were considered potential sand production scenarios. The SVM model demonstrated remarkable accuracy in predicting sand production onset, trained and tested rigorously with field data. The model's accuracy was evaluated  using statistical parameters, such as: accuracy (ACC), sensitivity (SE), specificity (SP), and Matthew's Correlation Coefficient (MCC). From the results, the model achieved a score of 1 across   all parameters, indicating high reliability and accuracy in sand production prediction. The practical implications of this model are significant, offering assistance to completion engineers in making proactive decisions regarding sand control strategies. Furthermore, the integration of this model into oil and gas industry processes can optimize operational efficiency by foreseeing potential sand production events, hence, preventing production impairment and ensuring loss prevention. 
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