Data Mining in Smart Grids

Effective smart grid operation requires rapid decisions in a data-rich, but information-limited, environment. In this context, grid sensor data-streaming cannot provide the system operators with the necessary information to act on in the time frames necessary to minimize the impact of the disturbanc...

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Year of Publication:2020
Language:English
Physical Description:1 electronic resource (116 p.)
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spelling Vaccaro, Alfredo edt
Data Mining in Smart Grids
Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2020
1 electronic resource (116 p.)
text txt rdacontent
computer c rdamedia
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Effective smart grid operation requires rapid decisions in a data-rich, but information-limited, environment. In this context, grid sensor data-streaming cannot provide the system operators with the necessary information to act on in the time frames necessary to minimize the impact of the disturbances. Even if there are fast models that can convert the data into information, the smart grid operator must deal with the challenge of not having a full understanding of the context of the information, and, therefore, the information content cannot be used with any high degree of confidence. To address this issue, data mining has been recognized as the most promising enabling technology for improving decision-making processes, providing the right information at the right moment to the right decision-maker. This Special Issue is focused on emerging methodologies for data mining in smart grids. In this area, it addresses many relevant topics, ranging from methods for uncertainty management, to advanced dispatching. This Special Issue not only focuses on methodological breakthroughs and roadmaps in implementing the methodology, but also presents the much-needed sharing of the best practices. Topics include, but are not limited to, the following:  Fuzziness in smart grids computing  Emerging techniques for renewable energy forecasting  Robust and proactive solution of optimal smart grids operation  Fuzzy-based smart grids monitoring and control frameworks  Granular computing for uncertainty management in smart grids  Self-organizing and decentralized paradigms for information processing
English
Information technology industries bicssc
voltage regulation
smart grid
decentralized control architecture
multi-agent systems
t-SNE algorithm
numerical weather prediction
data preprocessing
data visualization
wind power generation
partial discharge
gas insulated switchgear
case-based reasoning
data matching
variational autoencoder
DSHW
TBATS
NN-AR
time-series clustering
decentral smart grid control (DSGC)
interpretable and accurate DSGC-stability prediction
data mining
computational intelligence
fuzzy rule-based classifiers
multi-objective evolutionary optimization
power systems resilience
dynamic Bayesian network
Markov model
probabilistic modeling
resilience models
3-03943-326-1
3-03943-327-X
Vaccaro, Alfredo oth
language English
format eBook
author2 Vaccaro, Alfredo
author_facet Vaccaro, Alfredo
author2_variant a v av
author2_role Sonstige
title Data Mining in Smart Grids
spellingShingle Data Mining in Smart Grids
title_full Data Mining in Smart Grids
title_fullStr Data Mining in Smart Grids
title_full_unstemmed Data Mining in Smart Grids
title_auth Data Mining in Smart Grids
title_new Data Mining in Smart Grids
title_sort data mining in smart grids
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2020
physical 1 electronic resource (116 p.)
isbn 3-03943-326-1
3-03943-327-X
illustrated Not Illustrated
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