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Law of conservation-guided neural network with gradient aggregation for improved energy efficiency optimization in industrial processes 被引量:1
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作者 Santi Bardeeniz Chanin Panjapornpon Moonyong Lee 《Energy and AI》 2025年第2期14-35,共22页
Energy efficiency in industrial systems remains a critical challenge,with traditional data-driven models often limited by model accuracy and data availability.Incorporation of physical laws governing energy systems ca... Energy efficiency in industrial systems remains a critical challenge,with traditional data-driven models often limited by model accuracy and data availability.Incorporation of physical laws governing energy systems can improve performance and physical consistency,but the model often struggles with the calculation of loss and ignores dynamic interplays between sub-systems,which can result in oversimplification and a lack of practical applicability.Therefore,this study investigated a theoretical framework for developing a law of conservation-guided neural network aimed at enhancing energy efficiency prediction in industrial systems.The framework integrates physical principles directly into floating nodes constructed using a long short-term memory architecture to help the model formulate the relationship between process variables,while gradient aggregation increases liquidity and interpretability.Through evaluation of two large-scale case studies—vinyl chloride monomer and detergent powder production—the proposed model produced substantial improvements in prediction accuracy and model reliability,with a test prediction improvement of 12.2%and 5.87%over published methods.Compared to network architecture modification approaches,the proposed model provided higher reliability and reproducibility in energy efficiency predictions.Moreover,the model successfully identified energy inefficiencies,resulting in a 4.21%reduction in energy consumption and a corresponding 377.35 tons of carbon emissions reduction. 展开更多
关键词 Energy efficiency Law of conservation Physical guided neuralnetwork Long short-term memory gradient aggregation
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