基于实测数据的综合状态指数和神经网络的管道年龄评估方法

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Hassan Noroznia, M. Gandomkar, J. Nikoukar, A. Aranizadeh, Mirpouya Mirmozaffari
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引用次数: 3

摘要

今天,金属的化学腐蚀是大型生产的主要问题之一,特别是在石油和天然气工业中。由于与腐蚀故障相关的大量停机时间,管道腐蚀是许多石油和天然气行业的核心问题。因此,确定油气管道的腐蚀过程对于监测其可靠性和减轻故障至关重要,这将对健康、安全和环境产生积极影响。输配电管道和其他结构埋(或浸)在电解液中,由现有条件和由于冶金结构,腐蚀。经过一段时间后,这会破坏一个活跃的系统和过程,造成损害。对植入土壤的金属来说,最严重的腐蚀是在失去电流的地方。因此,阴极保护(CP)是防止埋在土壤中的结构腐蚀的最有效方法。本文的目的是首先利用状态指数研究杂散电流对管道故障率的影响,然后利用人工神经网络(ANN)估计CP天然气管道的剩余使用寿命。使用基于时间序列特征的先前数据预测未来的值也是可能的。因此,本文首先采用通用的设备状态监测方法来检测故障。然后用神经网络对数据的时间序列模型进行测量和操作。最后,确定随时间变化的故障数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Pipeline Age Evaluation: Considering Overall Condition Index and Neural Network Based on Measured Data
Today, the chemical corrosion of metals is one of the main problems of large productions, especially in the oil and gas industries. Due to massive downtime connected to corrosion failures, pipeline corrosion is a central issue in many oil and gas industries. Therefore, the determination of the corrosion progress of oil and gas pipelines is crucial for monitoring the reliability and alleviation of failures that can positively impact health, safety, and the environment. Gas transmission and distribution pipes and other structures buried (or immersed) in an electrolyte, by the existing conditions and due to the metallurgical structure, are corroded. After some time, this disrupts an active system and process by causing damage. The worst corrosion for metals implanted in the soil is in areas where electrical currents are lost. Therefore, cathodic protection (CP) is the most effective method to prevent the corrosion of structures buried in the soil. Our aim in this paper is first to investigate the effect of stray currents on failure rate using the condition index, and then to estimate the remaining useful life of CP gas pipelines using an artificial neural network (ANN). Predicting future values using previous data based on the time series feature is also possible. Therefore, this paper first uses the general equipment condition monitoring method to detect failures. The time series model of data is then measured and operated by neural networks. Finally, the amount of failure over time is determined.
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来源期刊
CiteScore
6.30
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