| dc.description.abstract |
The increasing complexity of balancing grid power with renewable energy sources, coupled
with rising global energy demand, necessitates innovative intelligent switching algorithms.
This project focuses on developing an intelligent switching algorithm that leverages advanced
forecasting techniques to optimize energy source utilization, enhance efficiency, and reduce
costs. By utilizing an Autoregressive Integrated Moving Average (ARIMA) model, the
algorithm accurately predicts energy demand based on historical consumption data.
The proposed algorithm dynamically switches between grid power, and solar energy based on
demand forecasts and real-time solar availability. This prioritization of renewable energy
minimizes reliance on the grid, reducing operational costs. The algorithm's framework
integrates ARIMA with machine learning for improved adaptability and accuracy in managing
non-linear demand fluctuations.
Aligned with Uganda’s Vision 2040 and global Sustainable Development Goal 7, the project
aims to address inefficiencies in existing intelligent switching algorithms, which rely on static
and costly grid-dominant models. The outcomes of this project include cost reductions,
improved energy efficiency, and a scalable, sustainable framework for optimizing renewable
energy integration in Uganda’s energy landscape. |
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