Predicting Solar Heat Production to Optimize Renewable Energy Usage
Tatiana Boura, Natalia Koliou, George Meramveliotakis and, Stasinos Konstantopoulos, George Kosmadakis

TL;DR
This paper introduces a machine learning approach for accurately predicting solar thermal heat production, enabling optimized control of renewable energy systems in small domestic installations.
Contribution
The paper presents a novel adaptive machine learning model that predicts solar heat production using low-cost instrumentation and weather forecasts, improving control strategies.
Findings
High predictive accuracy demonstrated
Model adapts continuously to changing conditions
Potential for improved energy system efficiency
Abstract
Utilizing solar energy to meet space heating and domestic hot water demand is very efficient (in terms of environmental footprint as well as cost), but in order to ensure that user demand is entirely covered throughout the year needs to be complemented with auxiliary heating systems, typically boilers and heat pumps. Naturally, the optimal control of such a system depends on an accurate prediction of solar thermal production. Experimental testing and physics-based numerical models are used to find a collector's performance curve - the mapping from solar radiation and other external conditions to heat production - but this curve changes over time once the collector is exposed to outdoor conditions. In order to deploy advanced control strategies in small domestic installations, we present an approach that uses machine learning to automatically construct and continuously adapt a model…
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Taxonomy
TopicsSolar Thermal and Photovoltaic Systems · Solar Radiation and Photovoltaics · Energy Load and Power Forecasting
