Method for diagnosing type of leakage of drilled well based on neural network fusion technique

A neural network and network fusion technology, applied in the field of lost circulation type diagnosis in drilling, can solve problems such as imperfect lost circulation theoretical research, stoppage, inaccurate basic parameters, etc., to achieve true and reliable output results, enhanced representativeness, and high reliability Effect

Inactive Publication Date: 2014-10-29
SOUTHWEST PETROLEUM UNIV
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Problems solved by technology

[0024] In short, there are many researches on the diagnostic models of pipe sticking and blowout accidents at home and abroad, but there are relatively few researches on the diagnostic models of lost circulation types, and the existing lost circulation studies still have the following deficiencies: (1) Basic parameters The inaccuracy is mainly due to poor measurement technology, limited experimental means, and imperfect theoretical calculation models; (2) Theoretical research on lost circulation is not perfect; (3) The mechanism of lost circulation is still in the qualitative or semi-quantitative description stage, lacking More accurate quantitative evaluation

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  • Method for diagnosing type of leakage of drilled well based on neural network fusion technique
  • Method for diagnosing type of leakage of drilled well based on neural network fusion technique
  • Method for diagnosing type of leakage of drilled well based on neural network fusion technique

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Embodiment Construction

[0049] Further describe the technical scheme of the present invention in detail below in conjunction with accompanying drawing:

[0050] Such as figure 1As shown, the type diagnosis method of lost circulation in drilling based on neural network fusion technology, it includes the following steps:

[0051] S1: Determine the fusion neural network structure and establish the parameter space for the diagnosis of lost circulation type:

[0052] The steps to determine the structure of the fusion neural network include:

[0053] S11: Select the fusion neural network structure: select the neural network to be integrated, and determine the number of input nodes, output nodes, and hidden layer nodes of each neural network;

[0054] Take BP neural network as an example:

[0055] (1) Determination of the number of input nodes

[0056] When the number of factors that affect the occurrence of lost circulation accidents (that is, the input data of the network) is determined, the number of...

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Abstract

The invention discloses a method for diagnosing the type of leakage of a drilled well based on the neural network fusion technique. The method for diagnosing the type of leakage of the drilled well based on the neural network fusion technique comprises the following steps that S1, a fusion neural network structure is determined, and a well leakage type diagnosis parameter space is established; S2, data are preprocessed; S3, data which are normalized are input into all neural networks; S4, data infusion is conducted on output values of all the neural networks according to multiple neural network fusion algorithms and then a well leakage type diagnosis result is obtained finally. The step S1 comprises the sub-steps that S11, the fusion neural network structure is selected; S12, network training is conducted; S13, the networks are checked, and the well leakage type diagnosis parameter space is established. According to the method for diagnosing the type of leakage of the drilled well based on the neural network fusion, the multiple neural networks are used for processing data, the multiple neural network output results are processed through the data fusion algorithm, the performance is high, and the result is highly reliable.

Description

technical field [0001] The invention relates to a method for diagnosing the type of lost circulation in drilling based on neural network fusion technology. Background technique [0002] Drilling engineering is the primary technology for oil and gas exploration and development. During drilling operations, downhole complex situations and drilling accidents have been threatening the entire drilling process, which not only have a serious impact on well construction quality and drilling speed, but also greatly reduce exploration benefits. With the rapid development of drilling technology, the current goal of the petroleum industry is to reduce the incidence of drilling accidents and drilling costs, and improve drilling quality and efficiency. [0003] At present, during drilling operations, accident diagnosis and identification of abnormal conditions mainly rely on the naked eye observation of on-site operators and engineering technicians, combined with past experience and drill...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): E21B47/10
Inventor 李建王兵肖斌蔡汶君梁大川赵春兰汪敏李珂江琳蒲晓
Owner SOUTHWEST PETROLEUM UNIV
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