Paper Title
Helios- Solar Energy Predictor
Abstract
The utilization of solar energy has gained significant prominence as a sustainable and renewable power source in
recent years. One of the critical factors affecting the efficiency of solar cells is the temperature difference between their
upper and lower surfaces. This project presents a machine learning-based approach to predict the amount of energy produced
by a solar cell by analyzing the temperature differential data. By employing various regression algorithms and a
comprehensive dataset, the project successfully creates an accurate predictive model, offering potential benefits for
optimizing solar panel installations and enhancing renewable energy resource management. In conclusion, this project
showcases the potential of machine learning techniques in enhancing the efficiency and sustainability of solar energy
systems by accurately forecasting energy production based on temperature differentials. The model's ability to predict energy
output can contribute to better resource management and informed decision-making in the renewable energy sector.