Back to Search Start Over

Sensitive parameter analysis for solar irradiance short-term forecasting: application to LoRa-based monitoring technology

Authors :
Angel Molina-Garcia
Antonio Mateo-Aroca
Jose Miguel Paredes Parra
María Carmen Bueso
Universidad Politécnica de Cartagena
Source :
Sensors; Volume 22; Issue 4; Pages: 1499
Publication Year :
2022
Publisher :
MDPI, 2022.

Abstract

Due to the relevant penetration of solar PV power plants, an accurate power generation forecasting of these installations is crucial to provide both reliability and stability of current grids. At the same time, PV monitoring requirements are more and more demanded by different agents to provide reliable information regarding performances, efficiencies, and possible predictive maintenance tasks. Under this framework, this paper proposes a methodology to evaluate different LoRa-based PV monitoring architectures and node layouts in terms of short-term solar power generation forecasting. A random forest model is proposed as forecasting method, simplifying the forecasting problem especially when the time series exhibits heteroscedasticity, nonstationarity, and multiple seasonal cycles. This approach provides a sensitive analysis of LoRa parameters in terms of node layout, loss of data, spreading factor and short time intervals to evaluate their influence on PV forecasting accuracy. A case example located in the southeast of Spain is included in the paper to evaluate the proposed analysis. This methodology is applicable to other locations, as well as different LoRa configurations, parameters, and networks structures; providing detailed analysis regarding PV monitoring performances and short-term PV generation forecasting discrepancies. This research was funded by the Fondo Europeo de Desarrollo Regional/Ministerio de Ciencia e Innovación–Agencia Estatal de Investigación (FEDER/MICINN-AEI), project RTI2018–099139–B–C21.

Details

Language :
English
Database :
OpenAIRE
Journal :
Sensors; Volume 22; Issue 4; Pages: 1499
Accession number :
edsair.doi.dedup.....1b9cc73d775dc43124393c27ebdd1d5e