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Virtual Collection for Distributed Photovoltaic Data: Challenges, Methodologies, and Applications
by
Du, Tianshuo
, Li, Yuanliang
, Li, Changlu
, Yan, Jun
, Ge, Leijiao
, Rafiq, Muhammad
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ artificial intelligence
/ Data collection
/ Data entry
/ data inference
/ Distributed generation (Electric power)
/ distributed photovoltaic
/ Intelligence
/ Photovoltaic power generation
/ reference station
/ Renewable resources
/ Sensors
/ similarity analysis
/ virtual collection
2022
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Virtual Collection for Distributed Photovoltaic Data: Challenges, Methodologies, and Applications
by
Du, Tianshuo
, Li, Yuanliang
, Li, Changlu
, Yan, Jun
, Ge, Leijiao
, Rafiq, Muhammad
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ artificial intelligence
/ Data collection
/ Data entry
/ data inference
/ Distributed generation (Electric power)
/ distributed photovoltaic
/ Intelligence
/ Photovoltaic power generation
/ reference station
/ Renewable resources
/ Sensors
/ similarity analysis
/ virtual collection
2022
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Do you wish to request the book?
Virtual Collection for Distributed Photovoltaic Data: Challenges, Methodologies, and Applications
by
Du, Tianshuo
, Li, Yuanliang
, Li, Changlu
, Yan, Jun
, Ge, Leijiao
, Rafiq, Muhammad
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ artificial intelligence
/ Data collection
/ Data entry
/ data inference
/ Distributed generation (Electric power)
/ distributed photovoltaic
/ Intelligence
/ Photovoltaic power generation
/ reference station
/ Renewable resources
/ Sensors
/ similarity analysis
/ virtual collection
2022
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Virtual Collection for Distributed Photovoltaic Data: Challenges, Methodologies, and Applications
Journal Article
Virtual Collection for Distributed Photovoltaic Data: Challenges, Methodologies, and Applications
2022
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Overview
In recent years, with the rapid development of distributed photovoltaic systems (DPVS), the shortage of data monitoring devices and the difficulty of comprehensive coverage of measurement equipment has become more significant, bringing great challenges to the efficient management and maintenance of DPVS. Virtual collection is a new DPVS data collection scheme with cost-effectiveness and computational efficiency that meets the needs of distributed energy management but lacks attention and research. To fill the gap in the current research field, this paper provides a comprehensive and systematic review of DPVS virtual collection. We provide a detailed introduction to the process of DPVS virtual collection and identify the challenges faced by virtual collection through problem analogy. Furthermore, in response to the above challenges, this paper summarizes the main methods applicable to virtual collection, including similarity analysis, reference station selection, and PV data inference. Finally, this paper thoroughly discusses the diversified application scenarios of virtual collection, hoping to provide helpful information for the development of the DPVS industry.
Publisher
MDPI AG
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