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Research on the Early-warning Model of Foaming Phenomenon in Desulfurization Solution System of Natural Gas Purification Plant Based on Artificial Intelligence Technology

机译:基于人工智能技术的天然气净化厂脱硫溶液系统中发泡现象的预警模型研究

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摘要

In order to ensure the safety of industrial production process, identification and early-warning of abnormal working conditions are very important. In this paper, the abnormal "foaming phenomenon" of natural gas purification desulfurization solution system is taken as the research object. The identification of the current abnormal "foaming phenomenon" mainly relies on the traditional method of long-term manual judgment of field technicians, which consumes a lot of resources and is easy to cause negligence. The model is based on the real-time online operation data of the 300W/d desulfurization system of the purification plant. The artificial intelligence technology is used to model the abnormal "foaming events", and the automatic identification and early warning of such events is achieved. The experimental results prove that the accuracy of the early-warning model can reach 97%, and the early warning results have been affirmed by professionals. At the same time, on the basis of the successful early-warning model, it is integrated into the "safety and environmental protection early warning visual management system of the oil and gas production". The real-time trend of key data dimensions and the probability of abnormal foaming have been well performed. Real-time warning function of abnormal "foaming phenomenon" of the 300W/d equipment of the purification plant is realized.
机译:为了确保工业生产过程的安全,异常工况的识别和预警非常重要。本文以天然气净化脱硫溶液系统的异常“起泡现象”为研究对象。当前异常“起泡现象”的识别主要依靠现场技术人员的长期手动判断的传统方法,这种方法消耗大量资源,容易造成疏忽大意。该模型基于净化工厂300W / d脱硫系统的实时在线运行数据。利用人工智能技术对异常的“起泡事件”进行建模,实现了对此类事件的自动识别和预警。实验结果表明,该预警模型的准确率可以达到97%,预警结果得到了专家的肯定。同时,在成功的预警模型的基础上,将其集成到“油气生产安全环保预警可视化管理系统”中。关键数据维度的实时趋势和异常发泡的可能性已得到很好的执行。实现了净化装置300W / d设备异常“起泡现象”的实时预警功能。

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