摘要
在目前油田生产信息化系统条件下,中心控制室对抽油机设备的故障监控、发现与预警的手段和方法较少,仅能通过视频的方式进行巡回检查。针对当前现状,开展抽油机故障音频及预警技术研究与应用,利用物联网、机器学习、大数据分析等技术,实现连续性的设备监控,及时、精准地发现和诊断抽油机机械故障并预警,避免机械事故的发生,减轻员工的劳动强度,提高设备信息化管理水平。
Under the conditions of current oilfield production information system, the central control room has few means and methods to monitor, discover and early warn the fault of pumping unit, and the patrol inspection can only be conducted by video. In response to the current status, the research and application of pumping unit fault audio and early warning technology is carried out. The Internet of Things, machine learning, big data analysis and other technologies are utilized to realize continuous equipment monitoring, to timely and accurately detect and diagnose mechanical faults of pumping units, and to early warn. Labor intensity of employees is reduced and equipment information management is improved.
作者
李兴
朱苏青
刘松林
Li Xing;Zhu Suqing;Liu Songlin(Sinopec Jiangsu Oilfield Company,Yangzhou,225009,China)
出处
《石油化工自动化》
CAS
2022年第5期82-86,103,共6页
Automation in Petro-chemical Industry
关键词
梅尔频率倒谱系数
语谱图
深度残差网络
抽油机音频
故障识别
Mel-scale frequency cepstral coefficients
spectrogram
deep residual network
audio of pumping unit
fault identification