首页 | 本学科首页   官方微博 | 高级检索  
     检索      

基于红外热成像与CNN的压裂装备故障精准识别及预警
引用本文:刘慧舟,胡瑾秋,张来斌,张彪.基于红外热成像与CNN的压裂装备故障精准识别及预警[J].中国石油大学学报(自然科学版),2021(1).
作者姓名:刘慧舟  胡瑾秋  张来斌  张彪
作者单位:中国石油大学(北京)安全与海洋工程学院
基金项目:北京市科技新星计划(Z181100006218048);中组部万人计划青年拔尖人才项目;中国石油化工股份有限公司技术开发项目。
摘    要:页岩气大规模压裂作业过程中,以压裂泵为代表的压裂装备的安全性、可靠性直接关系到整体压裂作业的顺利进行。考虑到复杂工况及作业环境对振动分析的影响,且设备内部不便安装振动传感器,可引入红外热成像技术进行运行状态的监测。由于页岩气压裂设备外部壳体较厚,加之内部液体的降温作用,使得泵头体等常见故障区域温度表征不明显。针对此问题,引入卷积神经网络实现压裂装备故障精准识别和早期预警的智能化、无人化。通过模拟现场压裂工况,开展室内试验。结果表明,提出的压裂装备故障识别方法能够达到94.8%准确率,同时将预警时间提前了10 s,对于降低事故后果严重度有借鉴作用。

关 键 词:红外热成像  卷积神经网络  压裂泵  状态监测  故障识别

Accurate identification and early-warning of faults of fracturing equipments based on infrared thermal imaging and convolutional neural network
LIU Huizhou,HU Jinqiu,ZHANG Laibin,ZHANG Biao.Accurate identification and early-warning of faults of fracturing equipments based on infrared thermal imaging and convolutional neural network[J].Journal of China University of Petroleum,2021(1).
Authors:LIU Huizhou  HU Jinqiu  ZHANG Laibin  ZHANG Biao
Institution:(Collage of Safety and Ocean Engineering, China University of Petroleum(Beijing), Beijing 102249, China)
Abstract:During the large-scale shale gas fracturing operation,the safety and reliability of the fracturing equipment represented by the fracturing pump is directly related to the smooth progress of the overall fracturing operation.Considering the impact of complex working conditions and operating environment on vibration analysis and the inconvenience of installing vibration sensors inside the equipment,infrared thermal imaging technology is introduced to monitor the operating status.Due to the thick outer shell of the shale gas cracking equipment and the cooling effect of the internal liquid,the temperature characteristics of common fault areas such as the pump head are not obvious.In view of this problem,convolutional neural network(CNN)was introduced to realize the intelligent and unmanned precision identification and early warning of fracturing equipment faults.By simulating on-site fracturing conditions and conducting laboratory tests,the analysis results show that the fracturing equipment fault identification method proposed in this paper can achieve an accuracy rate of 94.8%,and advance the warning time by 10 s,which is of great significance to reduce the severity of the accident consequences.
Keywords:infrared thermal imaging  convolutional neural network  fracturing pump  condition monitoring  fault identification
本文献已被 维普 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号