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首頁» 過刊瀏覽» 2022» Vol.7» Issue(2) 261-269???? DOI : 10.3969/j.issn.2096-1693.2022.02.024
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基于移動設備位置數(shù)據(jù)的油氣管道第三方破壞行為識別研究
張行,,凌嘉瞳,,劉思敏,,董紹華
1 中國石油大學(北京)管道技術與安全研究中心,,北京 102249 2 中油國際管道公司,,北京 102206
Identification of oil and gas pipeline third-party damage based on mobile devices location
ZHANG Hang, LING Jiatong, LIU Simin, DONG Shaohua
1 Pipeline Technology and Safety Research Center, China University of Petroleum-Beijing, Beijing 102249, China 2 Sino-pipeline International Company Limited, Beijing 102206, Chin

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摘要? 基于移動設備位置數(shù)據(jù)建立了油氣長輸管道第三方破壞行為識別模 型,并通過歷史數(shù)據(jù)對此模型進行訓練測試,,結果表明該模型準確率 高達 90.9%,,最后建立了異常活動類型判斷決策圖,,決策樹各分枝判 斷依據(jù)及模型的準確率將根據(jù)數(shù)據(jù)量的變化實時更新,。
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關鍵詞 : 長輸油氣管道,;第三方破壞;位置數(shù)據(jù),;安全預警,;異常檢測
Abstract

For the long-distance oil and gas pipelines, the third-party damage (TPD) is a main risk, which is randomness and uncertainty, and difficult to prevent. At present, the safety early warning technologies such as line patrol, fiber-optical vibration and Unmanned Aerial Vehicle (UAV) line patrol are mainly methods adopted by the TPD. But that has many problems such as untimely warning, false alarm and missed report. Combined with the easily obtained mobile phone location data with time-space sequence, a third-party damage behavior identification model for pipelines based on mobile phone location data was established here. Firstly, the mobile phone location information was preprocessed to obtain more accurate third-party activity location information near the target pipeline. The trajectory points were clustered and analyzed based on the density of data, and a stop recognition method based on spatiotemporal clustering was proposed. The key features of the staying point were semantically marked, and the abnormality degree of the staying point is calculated based on the TF IDF rule to accurately extract the abnormal staying point within the pipeline monitoring range. Secondly, extracted and segmented the third-party trajectory, completed the neighborhood search of the trajectory where the stay point located in accordance with trajectory location characteristics, and calculated the behavior difference degree of the neighbor trajectory segment according to multiple trajectory movement characteristics such as velocity, acceleration and rotation angle. Finally, established the model of pipeline TPD decision tree based on the pipeline risk characteristics, and in depth analysis the correlation between various characteristics and the types of third-party sabotage activities. In the end, used the behavior characteristics of the third party to judge the type of TPD. Through the training and testing of the collected historical characteristic data set of the third-party, the accuracy of the identification model established in this paper is 90.9%, and the mobile equipment information in the vicinity of a long-distance pipeline section within 30 days was processed, and the abnormal activities of nearby third parties were monitored according to the 53994 valid data obtained. The results show that the model can accurately identify abnormal behaviors based on the trajectory, it is helpful for timely detection of TPD damage activities such as private excavation, engineering damage and oil theft by drilling, which provides an effective basis for intelligently PTD damage to the pipeline and maintaining the integrity of the pipeline.

Key words: long distance oil and gas pipeline; third-party damage; location data; safety warning; abnormal detection
收稿日期: 2022-06-29 ????
PACS: ? ?
基金資助:中國石油天然氣股份有限公司—中國石油大學( 北京) 戰(zhàn)略合作科技專項(ZLZX2020-05) 和中國石油科技創(chuàng)新基金研究項目(2018D-5007-
0601) 聯(lián)合資助
通訊作者: [email protected].
引用本文: ??
張行, 凌嘉瞳, 劉思敏, 董紹華. 基于移動設備位置數(shù)據(jù)的油氣管道第三方破壞行為識別研究. 石油科學通報, 2022, 02: 261-269 ZHANG Hang, LING Jiatong, LIU Simin, DONG Shaohua. Identification of oil and gas pipeline third-party damage based on mobile devices location. Petroleum Science Bulletin, 2022, 02: 261-269.
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