Advanced simulation-based predictive modelling for solar irradiance sensor farms
Jos\'e L. Risco-Mart\'in, Ignacio-Iker Prado-Rujas, Javier Campoy,, Mar\'ia S. P\'erez, Katzalin Olcoz

TL;DR
This paper introduces CAIDE, a scalable, cloud-based framework that enhances real-time monitoring, management, and forecasting of solar irradiance sensor farms using IoT and M&S methodologies.
Contribution
The novel CAIDE framework integrates IoT, MBSE, and simulation techniques for improved real-time solar farm management and predictive accuracy.
Findings
CAIDE effectively manages multiple solar sensor farms simultaneously.
The framework improves forecast accuracy in real-time scenarios.
CAIDE demonstrates scalability across distributed architectures.
Abstract
As solar power continues to grow and replace traditional energy sources, the need for reliable forecasting models becomes increasingly important to ensure the stability and efficiency of the grid. However, the management of these models still needs to be improved, and new tools and technologies are required to handle the deployment and control of solar facilities. This work introduces a novel framework named Cloud-based Analysis and Integration for Data Efficiency (CAIDE), designed for real-time monitoring, management, and forecasting of solar irradiance sensor farms. CAIDE is designed to manage multiple sensor farms simultaneously while improving predictive models in real-time using well-grounded Modeling and Simulation (M&S) methodologies. The framework leverages Model Based Systems Engineering (MBSE) and an Internet of Things (IoT) infrastructure to support the deployment and…
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