Research on Intelligent Management System of Gas Pipeline with Multi-source Data Fusion

被引:0
作者
Cao X. [1 ]
Tan J. [2 ]
Li H. [3 ]
Li R. [2 ]
Wang Y. [3 ]
Zhang J. [3 ]
机构
[1] Hebei Construction&Investment Group Co., Ltd, Hebei, Shijiazhuang
[2] China Suntien Green Energy Co., Ltd Shijiazhuang, Hebei
[3] Hebei Gas Co., Ltd., Hebei, Shijiazhuang
关键词
DS evidence theory; Gas leakage model; Gas pipeline; Gaussian plume model; Kalman filter algorithm; Multi-source data fusion;
D O I
10.2478/amns-2024-0638
中图分类号
学科分类号
摘要
Aiming at the current challenges of enormous scale, complex structure, difficult control and frequent accidents of city gas high-pressure pipeline network, there are still three aspects of difficulties in the risk monitoring and control of China’s city gas high-pressure pipeline network, namely, rough data, shallow assessment, and lack of power. This paper proposes an intelligent management system for gas pipelines based on C/S model and J2EE enterprise-level framework, in which the failure warning models of gas leakage, Gaussian plume diffusion, and fire and explosion are established. And the Kalman filter algorithm improved by DS evidence theory is used for intelligent fusion of Multi-source data, analyzing and screening the unified adequate information on data types, extracting state characteristics, classifying warning levels, and developing an integrated and visualized pipeline remote diagnosis and warning platform. In the simulation of the intelligent management system of gas pipeline, when the wind speed is 1.5m/s in winter, the ground surface is a safe area within 12.15m of the gas pipeline. When the maximum wind speed is 10m/s, the upper limit distance of the gas leading to fire and explosion is only 2.43m, and the hazardous range of the gas pipeline jet fire is within 12.69m. Relying on the gas high-pressure pipeline network in L city for practical experiments and applications, it provides technical support and decision-making basis for the construction of intelligent pipeline network, comprehensively improves the risk control capability of city gas high-pressure pipeline network, and has reference significance for the risk control of national city gas high-pressure pipeline network. © 2023 Xin Cao, Jianxin Tan, Hao Li, Rui Li, Yifan Wang and Junfeng Zhang, published by Sciendo.
引用
收藏
相关论文
共 18 条
  • [1] Liu B., He L.Y., Zhang H., Cao Y., Fernandes H., The axial crack testing model for long distance oil - gas pipeline based on magnetic flux leakage internal inspection method, Measurement, 103, pp. 275-282, (2017)
  • [2] Bai L., Li F., Jiang T., Jia H., Robust scheduling for wind integrated energy systems considering gas pipeline and power transmission n-1 contingencies, IEEE Transactions on Power Systems, 2, (2017)
  • [3] Li J., Yan M., Yu J., Evaluation on gas supply reliability of urban gas pipeline network, Eksploatacja i Niezawodnosc - Maintenance and Reliability, 20, 3, pp. 471-477, (2018)
  • [4] Katarzyna P.U., Marek U., Janusz R., Approaches for safety analysis of gas-pipeline functionality in terms of failure occurrence: a case study, Energies, 11, 6, (2018)
  • [5] Xie Y., Gao C., Wang P., Qu X., Cui H., Research on vibration fatigue damage identification of oil and gas pipeline under the condition of measured noise injection, Applied Ocean Research, (2023)
  • [6] Liu E., Peng Y., Ji Y., Azimi M., Shi L., Energy consumption optimization model of large parallel natural gas pipeline network: using compressors with multiple operating modes, Energy And Fuels, 37, 1, pp. 774-784, (2023)
  • [7] Song R., Xia Y., Chen Y., Du S., Strunz K., Song Y., Et al., Efficient modelling of natural gas pipeline on electromagnetic transient simulation programs, IET renewable power generation, (2023)
  • [8] Vandrangi S.K., Mujtaba S.M., Lemma T.A., Gas pipeline safety management system based on neural network, Process Safety Progress, 41, pp. S59-S67, (2022)
  • [9] The method for leakage detection of urban natural gas pipeline based on the improved ita and alo, Journal of loss prevention in the process industries, 71, 1, (2021)
  • [10] Yuan Y., Dehghanpour K., Wang Z., Bu F., Multi-source data fusion outage location in distribution systems via probabilistic graphical models, IEEE Transactions on Smart Grid, 13, pp. 1357-1371, (2022)