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首页> 外文期刊>Energy Exploration & Exploitation >Development of a numerical tool for design of the Bottom Hole Assembly (BHA) using Artificial Neural Networks
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Development of a numerical tool for design of the Bottom Hole Assembly (BHA) using Artificial Neural Networks

机译:使用人工神经网络开发用于设计井底钻具(BHA)的数值工具

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This paper describes the use of Artificial Neural Networks in developing a design tool for calculating BHA (Bottom Hole Assembly) parameters. The program streamlines and simplifies BHA design calculations for a planned well curvature by calculating half-wave lengths using nomograms developed by Lubinski-Woods and Muzaparov. Nonlinear normalisation of data was applied on nomogram data to significantly improve accuracy of the modelling and design. The design data calculated by the program were compared with the real data and have been verified on deposits in the Aktobe region in Kazakhstan. It is concluded that the proposed tool provides more accurate results in a shorter time, allowing designers to compare and analyse the influence of design parameters on calculations of half-wave, loading and well curvature.
机译:本文介绍了人工神经网络在开发用于计算BHA(井底钻具)参数的设计工具中的用途。该程序通过使用Lubinski-Woods和Muzaparov开发的列线图来计算半波长,从而简化并简化了计划井眼曲率的BHA设计计算。数据的非线性归一化应用于列线图数据,以显着提高建模和设计的准确性。该程序计算出的设计数据与实际数据进行了比较,并已对哈萨克斯坦阿克纠宾地区的矿床进行了验证。结论是,所提出的工具可在更短的时间内提供更准确的结果,使设计人员可以比较和分析设计参数对半波,荷载和井曲率计算的影响。

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