基于OS-ELM的水井钻井钻井液双向预测方法

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Advanced Computational Intelligence and Intelligent Informatics Pub Date : 2023-07-20 DOI:10.20965/jaciii.2023.p0594
Yuan Xu, Di Zhang, Tianlang Xian, Zhizhang Ma, Hui Gao, Yuanyuan Ma
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引用次数: 0

摘要

本文提出了一种基于在线顺序极值学习机(OS-ELM)的钻井液预测方法,为塔里木盆地泥质粘土地层的水井钻探做了准备。首先,我们研究了混合比例与流体性能之间的联系机制,允许我们使用源自极限学习机的OS-ELM算法。特别是,所提出的预测方法是双向的,以确定合适的浆料配方。建立了以泥浆添加剂含量为输入,钻井液物性参数为输出的流体动态预测模型。相应地,建立后向预测模型,以钻井液性质差异为输入,料浆添加剂用量百分比为输出,对料浆配方进行修正。仿真结果表明,双向OS-ELM预测模型能较好地预测水井钻井过程中的钻井液性质。
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Two-Direction Prediction Method of Drilling Fluid Based on OS-ELM for Water Well Drilling
In this study, a drilling fluid prediction method based on an online sequential extreme learning machine (OS-ELM) is proposed, which is prepared for water well drilling on the muddy clay formation of Tarim Basin, Qinghai Province. First, we investigated the mechanism linking mix ratio to fluid performance, allowing us to employ an OS-ELM algorithm derived from the extreme learning machine. Particularly, the proposed prediction method is bidirectional to identify an appropriate slurry formulation. The forward prediction model is established to predict the fluid performance, where the mud additive contents are inputs, and the drilling fluid properties parameters are outputs. Correspondingly, the backward prediction model is established to modify the slurry formula, where differences in the drilling fluid properties are inputs and percentages of slurry additives amount are output. The simulation results show that the two-direction OS-ELM prediction model can better predict the drilling fluid properties in water well drilling.
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
89
期刊介绍: JACIII focuses on advanced computational intelligence and intelligent informatics. The topics include, but are not limited to; Fuzzy logic, Fuzzy control, Neural Networks, GA and Evolutionary Computation, Hybrid Systems, Adaptation and Learning Systems, Distributed Intelligent Systems, Network systems, Multi-media, Human interface, Biologically inspired evolutionary systems, Artificial life, Chaos, Complex systems, Fractals, Robotics, Medical applications, Pattern recognition, Virtual reality, Wavelet analysis, Scientific applications, Industrial applications, and Artistic applications.
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