Data integration and prediction models of photovoltaic production from
Brazilian northeastern
- URL: http://arxiv.org/abs/2001.10866v2
- Date: Sat, 7 Mar 2020 01:13:36 GMT
- Title: Data integration and prediction models of photovoltaic production from
Brazilian northeastern
- Authors: Hugo Abreu Mendes, Henrique Ferreira Nunes, Manoel da Nobrega Marinho,
Paulo Salgado Gomes de Mattos Neto
- Abstract summary: In the energy business, electric utilities use this information to control the power flow in the grid.
For better energy production estimation of photovoltaic systems, it is necessary to join multiples geospatial and meteorological variables.
This work proposes the creation of a satellite data integration platform, with production estimation models, base stations measurement and actual production capacity.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: All productive branches of society need an estimate to be able to control
their expenses well. In the energy business, electric utilities use this
information to control the power flow in the grid. For better energy production
estimation of photovoltaic systems, it is necessary to join multiples
geospatial and meteorological variables. This work proposes the creation of a
satellite data integration platform, with production estimation models, base
stations measurement and actual production capacity. This work presents
statistical, probabilistic and artificial intelligence models that generate
spatial and temporal production estimates that could improve production gains
as well as facilitate the monitoring and supervision of new enterprises are
presented.
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