Reliability of quantitative risk models: a case study from offshore gas production platform

Mohamed Attia, J. Sinha
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Abstract

In response to the competing factors governing the operation of oil and gas facilities, i.e., the stringent safety and environmental regulations, and the challenging business environment that entails minimizing the running cost, a risk-based inspection (RBI) program became a vital part of all Asset Integrity Management (AIM) frameworks. The objective is to ensure asset mechanical integrity while optimizing the maintenance and inspection resources and minimizing production downtime. There are different risk models being used to manage operational risk for equipment. The decision-maker should be attentive to the subjectivity and reliability of the risk results to establish an adequate risk target that can achieve the ultimate goal of RBI by determining the cost-effective inspection and maintenance plan without compromising plant safety, integrity or reliability. This paper presents evaluations of the most quantitative RBI models through a case study from an offshore gas producing platform. A case study was implemented for topside equipment on an offshore platform. The study analyzed the impact of contributing factors to the probability of failure (PoF) model through a sensitivity analysis to quantify the reliability and subjectivity in the failure probabilities. A sensitivity analysis and comparison between both API consequence modelling methodologies (i.e., CoF level 1 and 2) were performed to manifest the reliability of risk results. The sensitivity analysis revealed the variance in the calculated risk and demonstrated that a risk target/threshold should be established based on the deployed risk model. Using the same risk target for different risk models cannot effectively define all equipment items that actually need more resources to mitigate the risk. And can result in omitting critical equipment which can jeopardize asset integrity and lead to major losses, or spend resources on unnecessary equipment.
定量风险模型的可靠性:以海上天然气生产平台为例
为了应对油气设施运营的竞争因素,即严格的安全和环境法规,以及需要最小化运营成本的具有挑战性的商业环境,基于风险的检查(RBI)计划成为所有资产完整性管理(AIM)框架的重要组成部分。目标是确保资产的机械完整性,同时优化维护和检查资源,并最大限度地减少生产停机时间。有不同的风险模型被用来管理设备的操作风险。决策者应注意风险结果的主观性和可靠性,通过确定具有成本效益的检查和维护计划,在不损害工厂安全性、完整性或可靠性的情况下,建立适当的风险目标,以实现RBI的最终目标。本文通过对海上产气平台的案例研究,对最定量的RBI模型进行了评价。对海上平台的上层设备进行了案例研究。通过灵敏度分析,分析了各影响因素对失效概率模型的影响,量化了失效概率的可靠性和主观性。对两种API后果建模方法(即CoF 1级和2级)进行敏感性分析和比较,以表明风险结果的可靠性。敏感性分析揭示了计算风险的差异,并表明应基于部署的风险模型建立风险目标/阈值。对于不同的风险模型使用相同的风险目标并不能有效地定义所有需要更多资源来降低风险的设备项目。并且可能导致忽略关键设备,从而危及资产完整性并导致重大损失,或者将资源浪费在不必要的设备上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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