利用深度学习对基于 BOP 的 Weibull 模型中的 DDV 和 SPM 进行可靠性分析并扩展故障数据集

IF 4.6 2区 工程技术 Q1 ENGINEERING, CIVIL Ocean Engineering Pub Date : 2024-11-12 DOI:10.1016/j.oceaneng.2024.119670
Yang Cao, Yu Zhang, Shengnan Wu, Chen An
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引用次数: 0

摘要

深水防喷器 (BOP) 的液压系统对于确保海上油气开采作业的可靠性和安全性至关重要。功能故障会导致井喷失控,造成人员伤亡和钻井平台的重大经济损失。直接驱动阀(DDV)和海底电镀安装阀(SPM)是帮助维持深水 BOP 液压系统正常工作的关键部件。本研究首先使用 Weibull 分析方法,利用有限的故障数据样本评估 DDV 和 SPM 阀门的可靠性。为了提高预测的准确性,采用了多种方法对 Weibull 参数进行估计,包括最大似然估计 (MLE)、最小二乘法估计 (LSE),以及相关系数优化与支持向量回归 (CCO + SVR) 的组合。由于复杂的海底环境、成本约束、时间限制和其他因素,收集 DDV 和 SPM 阀门的大量故障数据面临挑战,因此本研究提出了一种采用反向传播神经网络 (BPNN) 模型的方法,以扩充有限的故障数据样本。为确保 DDV 和 SPM 阀门的可靠运行,预防性维护周期分别定为 2840 次和 7550 次。在相同的可靠性水平下,随着运行周期次数的增加,阀门的剩余使用寿命逐渐缩短,导致在更短的时间内发生故障的概率增加。DDV 和 SPM 阀门的平均剩余寿命(MRL)与不同的运行时间相对应,对其进行分析可为阀门的使用和维护提供重要的参考点。在利用扩展数据样本进行可靠性评估时,小故障数据样本的可靠性特征得到了有效反映,参数预测误差保持在较低水平。这说明扩展数据样本更适合用于可靠性评估。
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Reliability analysis of DDV and SPM in BOP-based Weibull model and expand fault dataset using deep learning
The hydraulic systems of deepwater Blowout Preventers (BOPs) are crucial for ensuring the reliability and safety of offshore oil and gas extraction operations. A functional failure can lead to uncontrolled blowouts, resulting in casualties and significant economic losses on the rig. The Direct Drive Valve (DDV) and the Subsea Plated Mounted (SPM) valve are key components that help maintain the proper functioning of the hydraulic system in deepwater BOPs. This study begins by utilizing the Weibull analysis method to assess the reliability of the DDV and SPM valves using limited fault data samples. To enhance the accuracy of predictions, Weibull parameters are estimated through various methods, including Maximum Likelihood Estimation (MLE), Least Squares Estimation (LSE), and a combination of Correlation Coefficient Optimization with Support Vector Regression (CCO + SVR).Given the challenges in gathering extensive fault data for DDV and SPM valves—due to complex subsea environments, cost constraints, time limitations, and other factors—this study proposes a method employing a Back Propagation Neural Network (BPNN) model to augment the limited fault data samples. To ensure the reliable operation of the DDV and SPM valves, preventive maintenance cycles are established at 2840 and 7550 operations, respectively. At the same reliability level, as the number of operational cycles increases, the remaining service life of the valves gradually decreases, leading to a higher probability of failure over a shorter timeframe. The Mean Remaining Life (MRL) of the DDV and SPM valves, corresponding to different operational times, is analyzed, providing essential reference points for their usage and maintenance. When the extended data sample is utilized for reliability evaluation, the reliability characteristics of the small fault data samples are effectively reflected, and the parameter prediction error remains low. This indicates that the extended data sample is more suitable for reliability evaluation.
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来源期刊
Ocean Engineering
Ocean Engineering 工程技术-工程:大洋
CiteScore
7.30
自引率
34.00%
发文量
2379
审稿时长
8.1 months
期刊介绍: Ocean Engineering provides a medium for the publication of original research and development work in the field of ocean engineering. Ocean Engineering seeks papers in the following topics.
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