Treatment and Prevention of Stuck Pipe Based on Artificial Neural Networks Analysis

Qi Zhu
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Abstract

Oil and gas drilling is a field practice with risks and uncertainties. Uncertainty and ambiguity of formation conditions often cause downhole accidents such as borehole wall instability, stuck drilling, blowout, etc., and also pose a threat to drilling safety.Due to the incorrect understanding of the objective environment and the wrong decision of subjective consciousness; it caused complex underground conditions and serious accidents. Collapse stuck is the worst kind of accident in stuck stuck. The procedures to deal with this kind of accident are the most complicated, the most time-consuming, the most risky, and even the whole or part of the wellbore may be scrapped, so we should try our best to avoid this accident during the drilling process.Artificial Neural Networks (ANNs for short) is a mathematical model of algorithms that imitate the behavioral characteristics of animal neural networks and perform distributed parallel information processing. This kind of network depends on the complexity of the system and adjusts the interconnection relationship between a large numbers of internal nodes to achieve the purpose of processing information, and has the ability of self-learning and self-adaptation. This paper analyzes the causes of collapse stuck, the mechanical mechanism of drilling fluid wettability on the stability of mud shale formation wall.A surface wetting reversal agent added to the drilling fluid system was used to change the wettability of the shale surface.The mechanism analysis and research results of changing the wettability to change the mechanical properties of the shale fracture surface were applied to the actual production of the collapsed drilling rig.Through the change of drilling parameters, the risk of stuck drilling is predicted in advance, the drilling speed is increased, the drilling time loss caused by stuck drilling is reduced, and the drilling cycle and cost are saved.
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基于人工神经网络分析的卡管处理与预防
油气钻井是一项具有风险和不确定性的野外作业。地层条件的不确定性和模糊性经常导致井壁失稳、卡钻、井喷等井下事故,对钻井安全构成威胁。对客观环境的错误认识和主观意识的错误决定;造成了复杂的地下条件和严重的事故。坍塌卡住是卡住中最糟糕的一种事故。处理这类事故的程序最复杂,最耗时,风险最大,甚至整个或部分井筒都可能报废,所以在钻井过程中要尽量避免发生这种事故。人工神经网络(Artificial Neural Networks,简称ann)是一种模拟动物神经网络行为特征并进行分布式并行信息处理的算法数学模型。这种网络依靠系统的复杂性,通过调整内部大量节点之间的互联关系来达到处理信息的目的,并具有自学习、自适应的能力。分析了崩塌卡钻的原因,钻井液润湿性对泥页岩储层壁稳定性影响的力学机理。在钻井液体系中加入表面润湿逆转剂来改变页岩表面的润湿性。将改变润湿性改变页岩裂缝表面力学性能的机理分析和研究成果应用到塌陷钻机的实际生产中。通过改变钻进参数,提前预测卡钻风险,提高钻进速度,减少卡钻造成的钻进时间损失,节约钻进周期和成本。
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