石油工业潜水技术系统失效周期的数学建模

V. Romanov, V. Goldstein, A. Batishchev
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引用次数: 0

摘要

油井成套潜水电气设备作为一个复杂的工程系统,其运行状态和运行质量取决于井下设备部件的无故障、可靠运行。采油SEE,特别是潜水电机(SEM),受到各种外部因素和影响,并且在各种工作模式下使用。为了获得SEE的状态数据,我们对运行过程中的故障进行了统计。在大多数情况下,这种分析工业工程设施状况的有效方法是唯一适用于可靠性的数学泛函和定量描述的方法,包括SEE周期到失效参数。我们收集并分析了石油生产设施的技术故障数据,并建立了SEE使用相关统计数据数据库(2014-2019年)。我们提出了统计分析的结果,以正确表示SEE(包括SEM)的现状。我们使用智能分析和概率统计模型对SEM的当前状态进行系统化评估。我们确定了导致技术故障的因素并对其进行了排序,制定了一套技术和组织措施,以最大限度地减少这些因素,并提高了SEE的可靠性和运行准备程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling of Cycles to Failure for Submersible Technical Systems in the Oil Industry
The state and operation quality of sets of submersible electrical equipment (SEE) at oil wells as a complex engineering system depends on the fault-free and reliable operation of downhole equipment components. Oil production SEE, especially submersible electric motors (SEM) are subjected to various external factors and impacts and they are used in various operating modes. To obtain the data on the state of SEE, we used statistics for the failures during operation. This valid method for the analysis of the conditions of the engineering facilities in the industry is, in most cases, the only suitable one for the mathematic functional and quantitative description of reliability, including the SEE cycles to failure parameter. We collected and analyzed the data on technological failures at oil production facilities and established a database for relevant statistics on the use of SEE (for 2014-2019). We present the results of the statistical analysis for the correct representation of the current conditions of the SEE (including SEM). We used them to produce a systematized assessment of the current state of SEM using smart analysis and probabilistic statistical modeling. We identified and ranked the factors resulting in technological failures, formulated a set of technical and organizational actions to minimize them, and improve the reliability and operation readiness of the SEE.
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