Deep learning-based power transmission and transformation project quality common disease prevention and detection method

A technology of engineering quality and deep learning, applied in the field of image recognition and computer vision, can solve problems such as low efficiency, waste of human resources, and reduce efficiency, and achieve the effect of good generalization ability, robustness, and good detection performance.

Pending Publication Date: 2021-04-02
福建京力信息科技有限公司
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Problems solved by technology

However, the current detection of whether the power equipment is connected to the ground is mainly based on manual inspection. Manual inspection is easily interfered by various fac

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  • Deep learning-based power transmission and transformation project quality common disease prevention and detection method
  • Deep learning-based power transmission and transformation project quality common disease prevention and detection method
  • Deep learning-based power transmission and transformation project quality common disease prevention and detection method

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[0052]The invention will be further described below with reference to the accompanying drawings and examples.

[0053]Please refer tofigure 1The present invention provides a method of controlling the prevention and control method for deep learning based on deep learning, including the following steps:

[0054]Step S1: Get the connection detection data for the power chamber and pretreatment;

[0055]Step S2: According to the training algorithm requirements, construct a set of transforming engineering power tanks connected to the detection data set;

[0056]Step S3: Tuning the training super parameters of the depth learning algorithm YOLOV4-TINY, optimize the training model, and training according to the data set and obtained the YOLOV4-TINY detection model;

[0057]Step S4: Target the input image based on the YOLOV4-TINY detection model obtained after training, obtain initial detection results;

[0058]Step S5: Decoding the preliminary detection result and uses the improved non-polar large value suppr...

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Abstract

The invention relates to a deep learning-based power transmission and transformation project quality common problem prevention and detection method, which comprises the following steps of S1, obtaining power transmission and transformation project power box grounding connection detection data, and performing preprocessing; S2, constructing a power transmission and transformation project power boxgrounding connection detection data set according to training algorithm requirements; S3, adjusting and optimizing training hyper-parameters of a deep learning algorithm yolov4tiny, optimizing the training model by adopting an optimization algorithm, and performing training according to the data set to obtain a yolov4tiny detection model; S4, performing target detection on the input picture according to the yoov4tiny detection model obtained after training, and obtaining a preliminary detection result; S5, decoding the preliminary detection result, screening out a final detection result by adopting an improved non-maximum suppression algorithm, and finally drawing a detection box in the input picture. The method can effectively identify and judge whether the power box is in grounding connection or not, has good generalization ability and robustness, and can have good detection performance in a complex environment.

Description

technical field [0001] The invention relates to the fields of image recognition and computer vision, in particular to a method for preventing and detecting common quality problems of power transmission and transformation projects based on deep learning. Background technique [0002] With the increasing importance of the normal operation of the power system in national production and life, the common quality problems in the construction of power transmission and transformation projects have also received high attention. As early as 2010, the State Grid Corporation compiled the "Requirements and Technical Measures for the Prevention and Control of Common Quality Problems in Power Transmission and Transformation Projects of State Grid Corporation" based on the national and industry-related engineering construction quality standards and specifications From the technical point of view, specific prevention and control measures are put forward, and the prevention and control work r...

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Application Information

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IPC IPC(8): G06K9/62G06N3/04G06Q50/06
CPCG06Q50/06G06V2201/07G06N3/045G06F18/23213G06F18/214
Inventor 陈晶晶柯逍
Owner 福建京力信息科技有限公司
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