Cascaded Deep Hybrid Models for Multistep Household Energy Consumption Forecasting
Lyes Saad Saoud, Hasan AlMarzouqi, Ramy Hussein

TL;DR
This paper presents two hybrid cascaded deep learning models combining wavelet transforms with neural networks for multistep household energy consumption forecasting, achieving superior accuracy over existing methods.
Contribution
Introduction of two novel hybrid cascaded models integrating SWT with CNN-LSTM and transformer architectures for improved multistep energy load forecasting.
Findings
Models outperform existing multistep forecasting methods.
Hybrid models effectively handle signal reconstruction issues.
Experimental results demonstrate superior prediction accuracy.
Abstract
Sustainability requires increased energy efficiency with minimal waste. The future power systems should thus provide high levels of flexibility iin controling energy consumption. Precise projections of future energy demand/load at the aggregate and on the individual site levels are of great importance for decision makers and professionals in the energy industry. Forecasting energy loads has become more advantageous for energy providers and customers, allowing them to establish an efficient production strategy to satisfy demand. This study introduces two hybrid cascaded models for forecasting multistep household power consumption in different resolutions. The first model integrates Stationary Wavelet Transform (SWT), as an efficient signal preprocessing technique, with Convolutional Neural Networks and Long Short Term Memory (LSTM). The second hybrid model combines SWT with a…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Smart Grid Energy Management · Energy Efficiency and Management
