A Data-Driven Multi-Regime Approach for Predicting Energy Consumption
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- Meihang Zhang & Hua Zhang & Wei Yan & Zhigang Jiang & Shuo Zhu, 2023. "An Integrated Deep-Learning-Based Approach for Energy Consumption Prediction of Machining Systems," Sustainability, MDPI, vol. 15(7), pages 1-17, March.
- Deyslen Mariano-Hernández & Luis Hernández-Callejo & Martín Solís & Angel Zorita-Lamadrid & Oscar Duque-Pérez & Luis Gonzalez-Morales & Felix Santos García & Alvaro Jaramillo-Duque & Adalberto Ospino-, 2022. "Analysis of the Integration of Drift Detection Methods in Learning Algorithms for Electrical Consumption Forecasting in Smart Buildings," Sustainability, MDPI, vol. 14(10), pages 1-14, May.
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Keywords
energy efficiency; energy consumption prediction; concept drift; deep learning; industrial machines;All these keywords.
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