Computational Intelligence in Photovoltaic Systems

Photovoltaics, among the different renewable energy sources (RES), has become more popular. In recent years, however, many research topics have arisen as a result of the problems that are constantly faced in smart-grid and microgrid operations, such as forecasting of the output of power plant produc...

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Year of Publication:2019
Language:English
Physical Description:1 electronic resource (180 p.)
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spelling Ogliari , Emanuele auth
Computational Intelligence in Photovoltaic Systems
MDPI - Multidisciplinary Digital Publishing Institute 2019
1 electronic resource (180 p.)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Photovoltaics, among the different renewable energy sources (RES), has become more popular. In recent years, however, many research topics have arisen as a result of the problems that are constantly faced in smart-grid and microgrid operations, such as forecasting of the output of power plant production, storage sizing, modeling, and control optimization of photovoltaic systems. Computational intelligence algorithms (evolutionary optimization, neural networks, fuzzy logic, etc.) have become more and more popular as alternative approaches to conventional techniques for solving problems such as modeling, identification, optimization, availability prediction, forecasting, sizing, and control of stand-alone, grid-connected, and hybrid photovoltaic systems. This Special Issue will investigate the most recent developments and research on solar power systems. This Special Issue “Computational Intelligence in Photovoltaic Systems” is highly recommended for readers with an interest in the various aspects of solar power systems, and includes 10 original research papers covering relevant progress in the following (non-exhaustive) fields: Forecasting techniques (deterministic, stochastic, etc.); DC/AC converter control and maximum power point tracking techniques; Sizing and optimization of photovoltaic system components; Photovoltaics modeling and parameter estimation; Maintenance and reliability modeling; Decision processes for grid operators.
English
artificial neural network
online diagnosis
genetic algorithm
renewable energy
unit commitment
photovoltaic panel
power forecasting
metaheuristic
monitoring system
embedded systems
firefly algorithm
tracking system
MPPT algorithm
integrated storage
day-ahead forecast
solar radiation
prototype model
artificial neural networks
parameter extraction
thermal image
thermal model
solar cell
PV cell temperature
evolutionary algorithms
uncertainty
battery
harmony search meta-heuristic algorithm
single-diode photovoltaic model
symbiotic organisms search
photovoltaics
tilt angle
smart photovoltaic system blind
orientation
photovoltaic
particle swarm optimization
analytical methods
computational intelligence
statistical errors
ensemble methods
solar photovoltaic
electrical parameters
demand response
metaheuristic algorithm
3-03921-098-X
Leva, Sonia auth
language English
format eBook
author Ogliari , Emanuele
spellingShingle Ogliari , Emanuele
Computational Intelligence in Photovoltaic Systems
author_facet Ogliari , Emanuele
Leva, Sonia
author_variant e o e eo
author2 Leva, Sonia
author2_variant s l sl
author_sort Ogliari , Emanuele
title Computational Intelligence in Photovoltaic Systems
title_full Computational Intelligence in Photovoltaic Systems
title_fullStr Computational Intelligence in Photovoltaic Systems
title_full_unstemmed Computational Intelligence in Photovoltaic Systems
title_auth Computational Intelligence in Photovoltaic Systems
title_new Computational Intelligence in Photovoltaic Systems
title_sort computational intelligence in photovoltaic systems
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2019
physical 1 electronic resource (180 p.)
isbn 3-03921-099-8
3-03921-098-X
illustrated Not Illustrated
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is_hierarchy_title Computational Intelligence in Photovoltaic Systems
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