Research on Integrated Data Acquisition Method of wind Power Generation based on Deep Learning

The traditional integrated collection method of power generation data uses analog separation components, which are subject to many interference factors of charging and discharging, resulting in the problems of redundancy and data loss in the integrated collection of data. In order to solve the above...

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Published in2020 IEEE International Conference on Industrial Application of Artificial Intelligence (IAAI) pp. 481 - 485
Main Authors Qu, Ming-Fei, Ma, Dong-Bao
Format Conference Proceeding
LanguageEnglish
Published IEEE 25.12.2020
Subjects
Online AccessGet full text
DOI10.1109/IAAI51705.2020.9332835

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Abstract The traditional integrated collection method of power generation data uses analog separation components, which are subject to many interference factors of charging and discharging, resulting in the problems of redundancy and data loss in the integrated collection of data. In order to solve the above problems, this paper studies the integrated data acquisition method of wind power generation based on deep learning. Use current sensor, voltage sensor, wind speed and direction meter and other sensing devices to collect data in the process of wind and solar power generation, and use SQL Server 2008 to establish a database to store the collected wind and solar power data. On this basis, deep learning is used to fill the missing data in the database, and then DTS tool is used to complete the data integration after filling. Through comparison experiments with traditional methods, it can be seen that the integrated acquisition method based on deep learning can effectively reduce data redundancy and lack, and has better reliability.
AbstractList The traditional integrated collection method of power generation data uses analog separation components, which are subject to many interference factors of charging and discharging, resulting in the problems of redundancy and data loss in the integrated collection of data. In order to solve the above problems, this paper studies the integrated data acquisition method of wind power generation based on deep learning. Use current sensor, voltage sensor, wind speed and direction meter and other sensing devices to collect data in the process of wind and solar power generation, and use SQL Server 2008 to establish a database to store the collected wind and solar power data. On this basis, deep learning is used to fill the missing data in the database, and then DTS tool is used to complete the data integration after filling. Through comparison experiments with traditional methods, it can be seen that the integrated acquisition method based on deep learning can effectively reduce data redundancy and lack, and has better reliability.
Author Qu, Ming-Fei
Ma, Dong-Bao
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Snippet The traditional integrated collection method of power generation data uses analog separation components, which are subject to many interference factors of...
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StartPage 481
SubjectTerms computerised instrumentation
current sensor
data acquisition
Data filling
Data integration acquisition
data redundancy
deep learning
deep learning (artificial intelligence)
direction meter
DTS tool
electric current measurement
electric sensing devices
Filling
integrated acquisition method
integrated collection method
integrated data acquisition method
missing data integration
power engineering computing
Redundancy
solar power data integration
solar power generation data
SQL
SQL Server 2008
velocity measurement
voltage measurement
voltage sensor
wind power generation
wind power plants
Wind speed
wind speed meter
Title Research on Integrated Data Acquisition Method of wind Power Generation based on Deep Learning
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