AI-Based Demand Forecasting and Load Balancing for Optimising Energy use in Healthcare Systems: A real case study
Iman Rahimi, Isha Patel

TL;DR
This paper presents an AI-based framework combining LSTM, genetic algorithms, and SHAP for improved energy demand forecasting and load balancing in healthcare facilities, enhancing efficiency and sustainability.
Contribution
The study introduces a novel integrated AI approach specifically tailored for healthcare energy management, demonstrating superior forecasting accuracy and adaptive load balancing capabilities.
Findings
LSTM outperforms ARIMA and Prophet models in demand prediction
Genetic algorithm optimizes load balancing strategies effectively
SHAP provides transparency in model decision-making
Abstract
This paper tackles the urgent need for efficient energy management in healthcare facilities, where fluctuating demands challenge operational efficiency and sustainability. Traditional methods often prove inadequate, causing inefficiencies and higher costs. To address this, the study presents an AI-based framework combining Long Short-Term Memory (LSTM), genetic algorithm (GA), and SHAP (Shapley Additive Explanations), specifically designed for healthcare energy management. Although LSTM is widely used for time-series forecasting, its application in healthcare energy prediction remains underexplored. The results reveal that LSTM significantly outperforms ARIMA and Prophet models in forecasting complex, non-linear demand patterns. LSTM achieves a Mean Absolute Error (MAE) of 21.69 and Root Mean Square Error (RMSE) of 29.96, far better than Prophet (MAE: 59.78, RMSE: 81.22) and ARIMA (MAE:…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Smart Grid Energy Management · Energy Load and Power Forecasting
MethodsLong Short-Term Memory
