IET Renewable Power Generation (Sep 2023)
Optimal load demand forecasting in air conditioning using deep belief networks optimized by an improved version of snake optimization algorithm
Abstract
Abstract Air conditioning systems play a vital role in maintaining comfortable indoor environments, particularly in hot and humid climates. However, these systems consume a significant amount of energy, making load demand forecasting an important aspect of energy management. In this study, the authors propose a novel approach for load demand forecasting in air conditioning systems using a hybrid deep belief network (HDBN) and an improved snake optimization algorithm (ISOA). The HDBN is a machine learning technique that combines deep learning and probabilistic graphical models to capture complex patterns in the input data. The ISOA is a nature‐inspired optimization algorithm that mimics the movement of a snake to search for optimal solutions. The proposed approach is evaluated using real‐world data from a commercial building in a hot and humid region. The results show that the proposed HDBN/ISOA approach outperforms other commonly used techniques in terms of accuracy. The proposed approach can be used to optimize energy consumption and reduce costs in air conditioning systems.
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