开发天然气设施状态分析IGAS的研究

J. Oh
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引用次数: 1

摘要

液化石油气(LPG)站等天然气设施似乎只满足制度要求,因此经常发生各种事故。在燃气事故中,造成人员直接伤亡的主要原因是操作不慎和安全设备不完善,主要类型为爆炸、火灾和破裂。因此,需要一个先进的安全流程来加强气体安全管理。在先进的安全过程中,虽然正确的进度方向对许多设备、方法和系统都是必要的,但需要许多不同的数据并行分析,而每个测量数据单独分析的分析方法。本文重点探讨了机器学习分析在天然气设施安全分析中的应用可行性,并设计了一种采用人工智能算法的方法来管理可同时分析多个不同数据的整体安全分析。可行性研究首先要大致选择目标天然气设施,收集什么样的风险因素,然后考虑合适的机器学习方法。其次,我们的研究开发了一种分类和聚类算法相结合的总风险分析算法。最后,我们开发了小型燃气设施版的智能气体分析系统(IGAS)。该方法和系统标志着燃气设施故障原因分析方法的开始,提高了燃气设施的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on Developing IGAS for Analyzing the Status of Gas Facility
Gas facilities such as LPG station have showed frequently diverse accidents, because they are seemed to satisfy only institutional requirements. In Gas accidents, human is damaged directly because most cause is careless handling and inadequate safety equipment, most type is explosion, fire and rupture. Therefore, an advanced safety process is required for enforcing gas safety management. Although correct progress direction in advances safety process is necessary for many devices, methods and system, it is to require analysis method that many different data are analyzed in parallel but each measuring data is analyzed in individual. This paper preferentially aims to check the feasibility of machine learning analysis in order to apply a safety of gas facility, and devise method using artificial intelligent algorithm in order to manage total safety analysis that can analyze simultaneously many different data. At First, the feasibility study must be generally selected target gas facility, collected what kinds of risk factor, and then considered the appropriated machine learning method. Next, our research develops total risk analysis algorithm with a combination method between classification and clustering algorithm. Finally, we developed IGAS (Intelligent Gas Analysis System) for small gas facility version. This method and system are to mark the beginning of analysis method for detecting cause and increasing safety about gas facilities.
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