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Machine learning approaches to non-i...
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Bonfigli, Roberto.
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Machine learning approaches to non-intrusive load monitoring
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Machine learning approaches to non-intrusive load monitoring/ by Roberto Bonfigli, Stefano Squartini.
作者:
Bonfigli, Roberto.
其他作者:
Squartini, Stefano.
出版者:
Cham :Springer International Publishing : : 2020.,
面頁冊數:
viii, 135 p. :ill. (some col.), digital ;24 cm.
Contained By:
Springer eBooks
標題:
Machine learning. -
電子資源:
https://doi.org/10.1007/978-3-030-30782-0
ISBN:
9783030307820
Machine learning approaches to non-intrusive load monitoring
Bonfigli, Roberto.
Machine learning approaches to non-intrusive load monitoring
[electronic resource] /by Roberto Bonfigli, Stefano Squartini. - Cham :Springer International Publishing :2020. - viii, 135 p. :ill. (some col.), digital ;24 cm. - SpringerBriefs in energy,2191-5520. - SpringerBriefs in energy..
Research on Smart Grids has recently focused on the energy monitoring issue, with the objective of maximizing the user consumption awareness in building contexts on the one hand, and providing utilities with a detailed description of customer habits on the other. In particular, Non-Intrusive Load Monitoring (NILM), the subject of this book, represents one of the hottest topics in Smart Grid applications. NILM refers to those techniques aimed at decomposing the consumption-aggregated data acquired at a single point of measurement into the diverse consumption profiles of appliances operating in the electrical system under study. This book provides a status report on the most promising NILM methods, with an overview of the publically available dataset on which the algorithm and experiments are based. Of the proposed methods, those based on the Hidden Markov Model (HMM) and the Deep Neural Network (DNN) are the best performing and most interesting from the future improvement point of view. One method from each category has been selected and the performance improvements achieved are described. Comparisons are made between the two reference techniques, and pros and cons are considered. In addition, performance improvements can be achieved when the reactive power component is exploited in addition to the active power consumption trace.
ISBN: 9783030307820
Standard No.: 10.1007/978-3-030-30782-0doiSubjects--Topical Terms:
533906
Machine learning.
LC Class. No.: Q325.5
Dewey Class. No.: 006.31
Machine learning approaches to non-intrusive load monitoring
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