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Group maintenance optimization of subsea Xmas trees with stochastic dependency

机译:随机依赖的分组Xmas树的群维护优化

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摘要

Subsea Xmas trees (XTs) are vital equipment for offshore oil and gas development. Due to a long and continuous operation, components of XTs often become vulnerable subjected to degradation and unexpected failures. Due to the uncertainties of subsea operation and fault tolerance design, current maintenances on heterogeneous components, which are assumed to be independent of each other, perform separately. Only one PM mode (imperfect or perfect) is considered. However, these assumptions impede the application of state-of-the-art research results on the maintenance of this equipment. Therefore, for XTs with stochastic dependency, this study proposes a group maintenance optimization approach that combines maintenance activities to reduce maintenance costs. Reduction factors are introduced to measure the effects of various preventive maintenance (PM) actions, and the optimal component-level PM intervals can be obtained. An improved group strategy can be explored in consideration of stochastic dependency and opportunity maintenance. Utilizing the collaborative particle swarm optimization (CPSO) algorithm, the cost of an optimal group maintenance plan can be minimized while maintaining the availability. The uses and advantages of the proposed group maintenance approach are illustrated by a case study on a Horizon Xmas tree with a 14-component system.
机译:海底Xmas树(XTS)是海上石油和天然气开发的重要设备。由于长期连续的操作,XT的组件通常变得易受劣化和意外故障的弱势群体。由于海底运行和容错设计的不确定性,在异构组件上的电流保持,这被认为是彼此独立的,单独执行。考虑只有一个PM模式(不完美或完美)。然而,这些假设妨碍了最先进的研究结果对该设备的维护。因此,对于具有随机依赖性的XT,本研究提出了一种组合维护优化方法,这些方法结合了维护活动以降低维护成本。引入降低因素来测量各种预防性维护(PM)动作的影响,并且可以获得最佳分量级PM间隔。可以考虑随机依赖和机会维护,探索改进的组战略。利用协作粒子群优化(CPSO)算法,可以在保持可用性的同时最小化最佳组维护计划的成本。通过一个带14组件系统的地平线Xmas树的案例研究说明了所提出的组维护方法的用途和优点。

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