化工进展 ›› 2022, Vol. 41 ›› Issue (9): 4713-4722.DOI: 10.16085/j.issn.1000-6613.2021-2326

• 化工过程与装备 • 上一篇    下一篇

基于支持向量机的输气管道泄漏压降信号智能识别方法

贾文龙1(), 孙溢彬1, 汤丁2, 陈家文2, 雷思罗2, 李长俊1   

  1. 1.西南石油大学石油与天然气工程学院,四川 成都 610500
    2.重庆相国寺储气库有限公司,重庆 401121
  • 收稿日期:2021-11-12 修回日期:2021-12-28 出版日期:2022-09-25 发布日期:2022-09-27
  • 通讯作者: 贾文龙
  • 作者简介:贾文龙(1986—),男,教授,博士生导师,研究方向为天然气管网数值模拟。E-mail:jiawenlong08@126.com
  • 基金资助:
    国家自然科学基金面上项目(52074238);四川省科技计划(2020YFSY0053)

Intelligent recognition method for pressure drop signals of gas pipeline leakage based on support vector machine

JIA Wenlong1(), SUN Yibin1, TANG Ding2, CHEN Jiawen2, LEI Siluo2, LI Changjun1   

  1. 1.College of Petroleum and Natural Gas Engineering, Southwest Petroleum University, Chengdu 610500, Sichuan, China
    2.Chongqing Xiangguosi Gas Storage Co. , Ltd. , Chongqing 401121, China
  • Received:2021-11-12 Revised:2021-12-28 Online:2022-09-25 Published:2022-09-27
  • Contact: JIA Wenlong

摘要:

输气管道干线气液联动阀根据检测管道压降速率、持续时间判断管道是否发生泄漏和自动关断阀门。该方法难以识别小孔泄漏等压降速率低于关断阈值的事故工况和压缩机抽吸等正常运行工况。以相国寺储气库集注干线为对象,通过仿真获得与管道泄漏、压缩机抽吸及截断阀紧急截断3种工况相关的压降速率信号,基于支持向量机建立了管道泄漏信号识别模型。提出混沌映射与自适应惯性权重的教与学优化算法,获得了模型中惩罚因子C和核函数参数g的最优值。利用相国寺储气库铜相线600组数据验证表明,优化后的模型:①对3种工况识别准确率为98.5%,较优化前提升了4.2%;②对于当量直径为50~125mm的小孔泄漏识别准确率为100%,提升了对小孔泄漏信号识别的准确性;③对压缩机抽吸和截断阀紧急截断工况识别的准确率分别为96.7%和100%;④当泄漏孔径小于50mm、压降速率小于0.01MPa/min时,阀室检测到的压降速率信号特征相近,此时建议使用气液联动阀与SCADA系统监测数据综合判断。

关键词: 天然气管道, 截断阀, 压降速率, 支持向量机, 优化算法

Abstract:

The gas-liquid linkage valve of the trunk line of the gas pipeline determines whether the pipeline leaks and automatically shuts off the block valve according to the pressure drop rate and its duration of the pipeline. This method is difficult to identify the accident condition that the pressure drop rate of small aperture leakage is lower than the shutdown threshold and the normal operation condition such as compressor pumping suction. Taking the gathering and injection trunk line of Xiangguosi Gas Storage as the object, the pressure drop rate signals related to the three working conditions of pipeline leakage, compressor pumping suction and emergency shut off of block valve were obtained by simulation and a pipeline leakage signals recognition model was established based on support vector machine. The teaching-learning-based -optimization algorithm of chaotic mapping and adaptive inertia weight was proposed, and the optimal values of penalty factor C and kernel function parameter g in the model were obtained. The verification results of 600 sets of data on Tongxiang pipeline of Xiangguosi Gas Storage were obtained. Firstly, the identification accuracy of the optimized model for the three working conditions was 98.5%, which was 4.2% higher than that of previous optimization. Secondly, the optimized model had 100% recognition accuracy for small aperture leakage with equivalent diameter of 50—125mm, which improved the accuracy of small aperture leakage signals recognition. Thirdly, the accuracy of the optimized model for the identification of the compressor pumping suction and the block valve emergency shut off conditions were 96.7% and 100%, respectively. Lastly, when the leakage aperture was less than 50mm and the pressure drop rate was less than 0.01MPa/min, the pressure drop rate signal characteristics detected in the valve chamber were similar. It is suggested to use the gas-liquid linkage valve and the SCADA system monitoring data to comprehensively judge.

Key words: natural gas pipeline, block valve, rate of pressure drop, support vector machine, optimized algorithm

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