Petroleum downhole tubing lifting safety analysis method based on artificial intelligence

A safety analysis and artificial intelligence technology, applied in the fields of artificial intelligence and computer vision, can solve the problems of lack of standard analysis of oil pipe lifting and lowering operation in oil wells, and difficulty in guaranteeing the personal safety of operators, so as to achieve the effect of ensuring the safety of life and property.

Active Publication Date: 2021-09-03
湖南朗国视觉识别研究院有限公司
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AI Technical Summary

Problems solved by technology

(2) Before raising the tubing, the driller must make a gesture to indicate that everything is ready before the driller can pull out the drill, in case the tubing is not fastened in place before the tubing is lifted or the wellhead worker does not pay attention to the lifting ring and the tubing, which may cause accidents. Accident
However, there is still a lack of analysis of the above-mentioned downhole tubing lifting operation specifications in the prior art, which makes it difficult to guarantee the personal safety of the operators.

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  • Petroleum downhole tubing lifting safety analysis method based on artificial intelligence

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Embodiment Construction

[0039] The embodiments of the present invention will be described in detail below with reference to the accompanying drawings, but the present invention can be implemented in various ways defined and covered by the claims.

[0040] See figure 1 , the present embodiment provides an artificial intelligence-based oil well tubing lifting safety analysis method, comprising the following steps:

[0041]Step 1. Set up a network camera covering the oil well operation area. The location of the network camera can meet the monitoring needs of various operations. The image information is sent to the background server for calculation. At the same time, voice reminder terminals can also be installed in the underground operation area; the background server includes central intelligent computing nodes, cloud data and service centers, and terminal management software to realize closed-loop functions of data collection, intelligent analysis, and process supervision.

[0042] Step 2: Detect th...

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Abstract

The invention discloses a petroleum downhole tubing lifting safety analysis method based on artificial intelligence, comprising the following steps: S1, erecting a network camera covering a petroleum downhole operation area, and transmitting all input video images to a background server for calculation; s2, detecting the number of operators and identifying the identities of the operators; s3, continuously carrying out hoisting ring speed detection and running direction detection; s4, continuously carrying out dangerous operation detection when the oil pipe ascends and descends; and S5, carrying out gesture detection and early warning before the oil pipe ascends. According to the invention, the on-site video of the petroleum underground operation is analyzed, the relationship between the personnel and the scene and the relationship between the action and the operation step are identified, the personnel behavior of the operation site is automatically supervised, and the early warning is performed in real time, so that the intelligent underground operation supervision is realized, and the supervision is effectively implemented while the on-site supervision personnel are greatly reduced. The method is of great significance in safety management work of petroleum projects and life and property safety guarantee.

Description

technical field [0001] The invention relates to the fields of computer vision and artificial intelligence, in particular to an artificial intelligence-based safety analysis method for downhole oil pipe lifting. Background technique [0002] The safe production of oilfield downhole operations is an important means for continuous and efficient output of products. Due to the particularity of the oil industry, a large number of workers are required to engage in production activities in the operation process, and the intensive personnel also brings greater pressure to the safety work of oil companies. Therefore, oil companies have formulated a series of operating specifications for downhole operations, so as to ensure the personal safety of operating workers as much as possible. [0003] Take the downhole tubing lifting operation as an example. Workers need to use the hoisting system to lift the tubing in the well out of the wellhead, unload them one by one and put them on the t...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06K9/32G06T7/246G06N3/04E21B19/00E21B47/002
CPCG06T7/251E21B19/00E21B47/002G06N3/045
Inventor 涂丹徐新文朱为郑冰谢志恒胡青霞王涛徐东
Owner 湖南朗国视觉识别研究院有限公司
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