基于改进模糊迭代自组织数据分析技术的梁式抽油机井下工况故障诊断

Kun Li, Xian-wen Gao, Haitao Zhou, Zhong Tian
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引用次数: 7

摘要

在实际石油生产中,常用测功卡对梁式抽油机井下工况进行分析。在文献中,基于监督学习的方法严重依赖于训练样本。为了实现井下工况故障诊断的无监督学习,提出了一种基于改进的模糊迭代自组织数据分析技术(ISODATA)的“合并”和“分裂”机制的方法。利用Hsim相似度函数代替欧氏距离,提高了高维空间的分类精度。在“合并”和“分裂”机制中,“两类之间的最小距离”是影响聚类精度的一个非常重要的参数,很难提前准确设置。它被视为一个可变参数,并在聚类过程中动态调整。采用模拟退火算法实现优化,并以Xie-Beni (XB)有效性指标作为优化目标。算例表明,该方法能较好地实现动态聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault diagnosis for down-hole conditions in beam pumping units based on an improved fuzzy Iterative Self-Organizing Data Analysis Technique
Dynamometer cards are commonly used to analyze down-hole conditions of beam pumping units in practical oil production. In the literature, supervised learning based methods heavily rely on training samples. In order to realize unsupervised learning of fault diagnosis for down-hole conditions, a method based on an improved fuzzy Iterative Self-Organizing Data Analysis Technique (ISODATA) with “merging” and “splitting” mechanisms is proposed in this paper. The Hsim similarity function is used to replace the Euclidean distance to improve the classification accuracy in high-dimensional space. In “merging” and “splitting” mechanisms, the “minimum distance between two classes” is a very important parameter to affect clustering accuracy and is difficult to be accurately set in advance. It is considered as a variable parameter and is dynamically adjusted in the clustering process. Simulated annealing algorithm is used to realize optimization and Xie-Beni (XB) validity index is used as the optimization target. An example is given to illustrate that the proposed method can realize dynamic clustering with a better effectiveness.
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