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Application of Artificial Intelligence in the Petroleum Industry: Volume Loss Prediction for Naturally Fractured Formations

机译:人工智能在石油工业中的应用:天然骨折形成的体积损失预测

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Recently, artificial intelligence has gain popularity in the drilling industry since more wells are drilled in hostile environments. One of the most difficult problems have been encountering the drilling operation is the problem of lost circulation. The complexity of the lost circulation problem is due to the interaction between the parameters that are causing this issue. The aim of this work is to create artificial intelligence models to predict lost circulation, equivalent circulation density (ECD), and rate of pentation (ROP) prior to drilling for naturally fractured formations. Lost circulation events from 500 wells were collected and analyzed to comprehend the impact of each drilling parameter on lost circulation. The data were cleaned and outliers were removed. Partial least square (PLS), a supervised machine learning algorithm, was utilized to create three models to estimate mud losses, ECD, and ROP before drilling. The models went through a cross-validation process to validate them. In addition, the models were tested with new data that were not used in the process of creating the models. The results showed that the three models can predict mud losses, ECD, and ROP within a reasonable margin of error. Testing the models with new data of 30 wells drilled showed that the models' predictions closely track the actual values from the real data. Moreover, the new models were compared with previously developed models for naturally fractured formations. The new models showed better predictions for the actual values than the previously developed models, suggesting the ability of the new models to predict mud losses, ECD, and ROP within an acceptable error. In addition, a 10% sensitivity analysis was conducted for all models to quantify and understand the effect of each parameter on every model. Mud weight (MW) had the highest impact on the ECD and mud losses models revealing that in order to minimize mud losses and ECD, the first action should be trying to use as low MW as possible. On the other hand, weight on bit (WOB) showed the highest positive influence on the ROP model and total flow area (TFA) of the nozzles showed the highest negative impact on the ROP model. Thus, the models developed in this study can be used to regulate the drilling parameters to minimize mud losses. The methodology used in this study to develop estimation models for mud losses, ECD, and ROP can be applied to create predictive models in other formations if the required data are available.
机译:最近,人工智能在钻井行业中获得了普及,因为在敌对环境中钻井井。一项最困难的问题一直在遇到钻探操作是丢失循环的问题。丢失循环问题的复杂性是由于导致此问题的参数之间的相互作用。这项工作的目的是创造人工智能模型,以预测钻探天然裂缝形成之前的循环,等效循环密度(ECD)和普促率(ROP)。收集和分析500个井中的循环事件,以了解每个钻孔参数对丢失循环的影响。清洁数据,除去异常值。 Partial最小二乘(PLS)是一种监督机器学习算法,用于创建三种模型来钻探前估算泥浆损失,ECD和ROP。该模型通过交叉验证过程来验证它们。此外,使用创建模型的过程中未使用的新数据进行测试。结果表明,三种型号可以在合理的错误边缘内预测泥浆损失,ECD和ROP。使用钻取的30个井的新数据测试模型显示模型的预测密切跟踪真实数据的实际值。此外,将新模型与以前开发的天然骨折形成的模型进行了比较。新模型对实际值的预测显示了比以前开发的模型更好的预测,这表明新模型在可接受的错误中预测泥浆损失,ECD和ROP的能力。此外,对所有模型进行了10%的灵敏度分析,以量化和理解每个模型对每个模型的影响。泥浆重量(MW)对ECD和泥浆损失模型的影响最高,旨在最大限度地减少泥浆损失和ECD,第一个动作应该尝试使用尽可能低的MW。另一方面,位(WOB)上的重量显示了对ROP模型的最高影响,喷嘴的总流量面积(TFA)显示出对ROP模型的最大负面影响。因此,本研究开发的模型可用于调节钻井参数以最小化泥浆损失。本研究中使用的方法,用于开发用于泥浆损失,ECD和ROP的估计模型,如果所需数据可用,可以应用于在其他地层中创建预测模型。

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