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Using Machine Learning to Predict Lost Circulation in the Rumaila Field,Iraq

机译:利用机器学习预测伊拉克Rumaila领域的丢失循环

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Lost circulation costs are a significant expense in drilling oil and gas wells. Drilling anywhere in the Rumaila field,one the world’s largest oilfields,requires penetrating the Dammam formation,which is notorious for lost circulation issues and thus a great source of information on lost circulation events. This paper presents a new,more precise model to predict lost circulation volumes,ECD and ROP in the Dammam formation. A larger data set,more systematic statistical approach,and a machine learning algorithm have produced statistical models that give a better prediction of the lost circulation volumes,ECD,and ROP than the previous models for events. This paper presents the new model,validates the key elements impacting lost circulation in the Dammam formation,and compares the predicted outcomes to those from the older model. The work previously in the literature provided a platform for predicting the severity of lost circulation incidents in the Dammam formation. Using the new models,the predictions closely track actual field incidents of lost circulation. When new lost circulation events were compared with predictions from the old and new models,the new model presented a much tighter prediction of events. Three equations for optimizing operations were developed from these models focusing on the elements that have the highest degree of impact. The total flow area of the nozzles was determined to be a significant factor in the ROP model indicating that nozzle size should be chosen carefully to achieve optimal ROP. Good modeling of projected lost circulation events can assist in evaluating the effectiveness of new treatments for lost circulation. The Dammam formation is a significant source of lost circulation in a major oilfield and warrants evaluation of the effectiveness of lost circulation treatments. These techniques can be applied to other fields and formations to better understand the economic impact of lost circulation and evaluate the effectiveness of various lost circulation mitigation efforts.
机译:失去的流通成本在钻油和天然气井中是一个很大的费用。钻入Rumaila领域的任何地方,是世界上最大的油田,需要渗透达曼形成,这对于遗失的流通问题而言是臭名昭着的,因此是有关流通事件失去的信息的伟大信息来源。本文提出了一种新的,更精确的模型,以预测DammaM形成中丢失的循环量,ECD和ROP。更大的数据集,更系统的统计方法和机器学习算法产生了统计模型,其比以前的事件模型更好地预测丢失的循环量,ECD和ROP。本文介绍了新型号,验证了影响达曼地层中丢失循环的关键元素,并将预测结果与旧模型的效果进行比较。文献中的工作提供了一种预测达曼组中失去循环事件的严重程度的平台。使用新模型,预测密切关注丢失循环的实际现场事件。当新的丢失的流通事件与来自旧模型的预测进行比较时,新模型提出了更严格的事件预测。从这些模型开发了用于优化操作的三种方程,其专注于具有最高影响程度的元素。将喷嘴的总流程面积被确定为ROP模型中的重要因素,表明应仔细选择喷嘴尺寸以实现最佳ROP。良好的预计丢失循环事件的良好建模可以帮助评估新治疗的遗传遗失的有效性。该达曼组是主要油田中失去流通的重要来源,并认证评估丧失循环处理的有效性。这些技术可以应用于其他领域和地层,以更好地了解流通失去的经济影响,并评估各种失去流通缓解努力的有效性。

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