使用强化学习的湿气管道维修过程

Peeranat Kongkijpipat, Chayanant Sandee, Supakorn Vachirapaneegul, Kanes Sumetpipat, Pat Vatiwutipong
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引用次数: 0

摘要

石油和天然气开采是全球必不可少的业务之一,因为石油和天然气,包括湿气,液态天然气是人们生活所必需的。湿输气管道系统经常面临内部腐蚀问题,导致气体泄漏、环境污染和人员死亡。此外,湿气管道系统通常安装在地下或海底,维护困难,成本高。在本项目中,通过应用强化学习开发了管道维修调度系统,强化学习是一种广泛而有效地用于随机环境下基于状态的维修问题的机器学习。将q学习技术与贪心策略相结合作为学习过程的算法。结果表明,在40年的试验期内,所开发的管道维修调度流程能够有效防止管道泄漏和破裂。它大大降低了定期维护过程的成本,从每月19,455.28美元减少到8,463.60美元。此外,我们的管道维修计划系统可以在更大程度上发展,更加生态友好,考虑到环境影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wet Gas Pipeline Maintenance Process Using Reinforcement Learning
Oil and gas extraction is one of the essential businesses globally, since petroleum and natural gases, including wet gas, a liquid-based natural gas are necessary for people's lives. Wet gas pipeline systems often face internal corrosion problems leading to gas leakage, environmental pollution, and human fatalities. In addition, the wet gas pipeline system is usually installed underground or under the sea, making it difficult to maintain and resulting in high costs. In this project, the pipeline maintenance scheduling system has been developed by applying Reinforcement Learning, a type of Machine Learning widely and efficiently used in condition-based maintenance problems with a stochastic environment. A combination of Q-learning technique and epsilon-greedy policy had been utilized as the algorithm for the learning process. According to the results, the pipeline maintenance scheduling process from our developed system could prevent leakage and rupture during the experimental period, which was 40 years. It had significantly reduced the cost of periodic maintenance process, from 19,455.28 USD to 8,463.60 USD per month. Furthermore, our pipeline maintenance schedule system can be developed to a greater extent, to be more ecologically friendly with environmental impact in mind.
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