Study of a Hybrid Photovoltaic-Wind Smart Microgrid using Data Science
Approach
- URL: http://arxiv.org/abs/2105.08510v1
- Date: Fri, 14 May 2021 01:31:23 GMT
- Title: Study of a Hybrid Photovoltaic-Wind Smart Microgrid using Data Science
Approach
- Authors: Josimar Edinson Chire Saire, Jos\'e Armando Gastelo Roque, Franco
Canziani
- Abstract summary: A smart microgrid was implemented in Paracas, Ica, Peru, composed of 6kWp PV + 6kW Wind and provides electricity to a rural community of 40 families.
Real data of solar irradiance, wind speed, energy demand, and voltage of the battery bank from 2 periods of operation were studied to find patterns, seasonality, and existing correlations between the analyzed data.
These analyzed data will be used to improve sizing techniques and provide recommendations for energy management to optimize the performance of smart microgrids.
- Score: 1.3764085113103222
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In this paper, a smart microgrid implemented in Paracas, Ica, Peru, composed
of 6kWp PV + 6kW Wind and that provides electricity to a rural community of 40
families, was studied using a data science approach. Real data of solar
irradiance, wind speed, energy demand, and voltage of the battery bank from 2
periods of operation were studied to find patterns, seasonality, and existing
correlations between the analyzed data. Among the main results are the
periodicity of renewable resources and demand, the weekly behavior of
electricity demand and how it has progressively increased from an average of
0.7kW in 2019 to 1.2kW in 2021, and how power outages are repeated at certain
hours in the morning when resources are low or there is a failure in the
battery bank. These analyzed data will be used to improve sizing techniques and
provide recommendations for energy management to optimize the performance of
smart microgrids.
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