Advancing Heat Demand Forecasting with Attention Mechanisms: Opportunities and Challenges
Adithya Ramachandran, Thorkil Flensmark B. Neergaard, Andreas Maier,, Siming Bayer

TL;DR
This paper introduces an attention-based deep learning model for multi-step heat demand forecasting in district heating systems, outperforming traditional LSTM and CNN models on real-world data.
Contribution
It presents a novel attention mechanism integrated into a deep learning model for improved heat demand forecasting, addressing the challenges of dynamic demand and renewable integration.
Findings
Attention-based model achieves lower MAE and MAPE than baselines.
Model demonstrates superior performance across different supply zones.
Forecasting accuracy is validated on real-world district heating data.
Abstract
Global leaders and policymakers are unified in their unequivocal commitment to decarbonization efforts in support of Net-Zero agreements. District Heating Systems (DHS), while contributing to carbon emissions due to the continued reliance on fossil fuels for heat production, are embracing more sustainable practices albeit with some sense of vulnerability as it could constrain their ability to adapt to dynamic demand and production scenarios. As demographic demands grow and renewables become the central strategy in decarbonizing the heating sector, the need for accurate demand forecasting has intensified. Advances in digitization have paved the way for Machine Learning (ML) based solutions to become the industry standard for modeling complex time series patterns. In this paper, we focus on building a Deep Learning (DL) model that uses deconstructed components of independent and dependent…
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Taxonomy
TopicsEnergy Load and Power Forecasting
