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Quantitative and qualitative analysis of lost circulation in natural and induced fractured formations: the integration of operational conditions and geomechanical parameters

机译:天然和诱导裂缝地层中漏失循环的定量和定性分析:工作条件和地质力学参数的综合

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摘要

Lost circulation is one of the most hazardous and costly problems encountered while drilling operation not only in naturally fractured formations but also in hydraulically induced fractured ones. To be more precise, mud losses into the formation may occur at hydrostatic mud pressures in excess of the formation pressure which can be defined as a kind of wellbore instability. In general, there are many operational parameters affect lost circulation that the important ones are mud type, rheological parameters of drilling mud and mud weight. Moreover, some geomechanical issues are influential on lost circulation such as in situ stresses, pore pressure, rock strength as well as pre-existing natural fractures and their orientation. Artificial neural networks (ANNs) are prime candidates to integrate the vast numbers of effective parameters for predicting such events. In spite of many advantages, ANNs have some drawbacks such as its tendency to memorise training data rather than learning to generalise from trend and local optima. In order to deal with these problems, Support vector regression (SVR) has been introduced as a robust novel approach. Although ANN has great capability in predicting lost circulation, SVR yields relatively more accurate results.
机译:漏失循环不仅在自然裂缝地层而且在水力诱发裂缝地层中,在钻井作业中遇到的最危险和最昂贵的问题之一。更准确地说,在静水泥浆压力超过地层压力(可能被定义为一种井眼失稳)时,泥浆会流失到地层中。通常,影响失水循环的操作参数很多,其中重要的是泥浆类型,钻探泥浆的流变参数和泥浆重量。此外,一些地质力学问题会影响失水循环,例如原地应力,孔隙压力,岩石强度以及预先存在的天然裂缝及其方向。人工神经网络(ANN)是整合大量有效参数来预测此类事件的主要候选人。尽管人工神经网络有很多优点,但它也有一些缺点,例如它倾向于记忆训练数据,而不是学习从趋势和局部最优中进行概括。为了解决这些问题,已经引入了支持向量回归(SVR)作为一种强大的新颖方法。尽管人工神经网络具有很好的预测漏气的能力,但SVR可以产生相对更准确的结果。

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