SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet

Aiming at the problem of decreasing the accuracy of meter reading caused by manual reading, an SF6 pointer-type pressure meter reading method based on the fusion attention feature UNet is proposed to improve the accuracy of pointer-type pressure meter reading. Firstly, design the fusion attention fe...

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Main Authors: Hao Wu, Ziyuan Qi, Haipeng Tian, Zhihao Ni, Weizhe Chen
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10267972/
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author Hao Wu
Ziyuan Qi
Haipeng Tian
Zhihao Ni
Weizhe Chen
author_facet Hao Wu
Ziyuan Qi
Haipeng Tian
Zhihao Ni
Weizhe Chen
author_sort Hao Wu
collection DOAJ
description Aiming at the problem of decreasing the accuracy of meter reading caused by manual reading, an SF6 pointer-type pressure meter reading method based on the fusion attention feature UNet is proposed to improve the accuracy of pointer-type pressure meter reading. Firstly, design the fusion attention feature UNet neural network to segment the pointer and dense scale of the SF6 pressure meter. The Ghost convolutional module used in the coding layer of the neural network can reasonably utilize redundant features to strengthen the inference ability of the network. Deep semantic information feature fusion module built to extract deep potential feature information. Also, introduce the pyramid split attention mechanism to strengthen the information interaction between the network coding and decoding layers. Then use the minimum outer rectangle algorithm and K-means clustering algorithm to determine the circle’s center of the SF6 pressure meter for the segmented data. Finally, use the circle’s center to fit the initial scale and the pointer in two straight lines. It calculates the angle between the two straight lines. The angle conversion formula obtains the accurate reading of the SF6 pressure meter. It is proved by experiment that the proposed intelligent reading algorithm will not be affected by environmental factors and can better divide the pointer and dense scale in the SF6 pointer pressure meter to complete the accurate reading of the meter.
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spelling doaj.art-d85d15063e254792a65fb3eb036f19a02023-10-09T23:01:23ZengIEEEIEEE Access2169-35362023-01-011110745110746210.1109/ACCESS.2023.332078910267972SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNetHao Wu0https://orcid.org/0009-0004-3045-7623Ziyuan Qi1https://orcid.org/0009-0003-9969-2966Haipeng Tian2Zhihao Ni3Weizhe Chen4https://orcid.org/0009-0003-2702-2357Automation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaAutomation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaAutomation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaAutomation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaAutomation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaAiming at the problem of decreasing the accuracy of meter reading caused by manual reading, an SF6 pointer-type pressure meter reading method based on the fusion attention feature UNet is proposed to improve the accuracy of pointer-type pressure meter reading. Firstly, design the fusion attention feature UNet neural network to segment the pointer and dense scale of the SF6 pressure meter. The Ghost convolutional module used in the coding layer of the neural network can reasonably utilize redundant features to strengthen the inference ability of the network. Deep semantic information feature fusion module built to extract deep potential feature information. Also, introduce the pyramid split attention mechanism to strengthen the information interaction between the network coding and decoding layers. Then use the minimum outer rectangle algorithm and K-means clustering algorithm to determine the circle’s center of the SF6 pressure meter for the segmented data. Finally, use the circle’s center to fit the initial scale and the pointer in two straight lines. It calculates the angle between the two straight lines. The angle conversion formula obtains the accurate reading of the SF6 pressure meter. It is proved by experiment that the proposed intelligent reading algorithm will not be affected by environmental factors and can better divide the pointer and dense scale in the SF6 pointer pressure meter to complete the accurate reading of the meter.https://ieeexplore.ieee.org/document/10267972/Pressure meterUNet neural networksdeep feature fusionattentional mechanismsK-means clustering algorithm
spellingShingle Hao Wu
Ziyuan Qi
Haipeng Tian
Zhihao Ni
Weizhe Chen
SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
IEEE Access
Pressure meter
UNet neural networks
deep feature fusion
attentional mechanisms
K-means clustering algorithm
title SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
title_full SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
title_fullStr SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
title_full_unstemmed SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
title_short SF6 Pointer Pressure Meter Reading Method Based on Fusion Attention Feature UNet
title_sort sf6 pointer pressure meter reading method based on fusion attention feature unet
topic Pressure meter
UNet neural networks
deep feature fusion
attentional mechanisms
K-means clustering algorithm
url https://ieeexplore.ieee.org/document/10267972/
work_keys_str_mv AT haowu sf6pointerpressuremeterreadingmethodbasedonfusionattentionfeatureunet
AT ziyuanqi sf6pointerpressuremeterreadingmethodbasedonfusionattentionfeatureunet
AT haipengtian sf6pointerpressuremeterreadingmethodbasedonfusionattentionfeatureunet
AT zhihaoni sf6pointerpressuremeterreadingmethodbasedonfusionattentionfeatureunet
AT weizhechen sf6pointerpressuremeterreadingmethodbasedonfusionattentionfeatureunet