Data-Driven Optimization for Capacity Control of Multiple Ground Source Heat Pump System in Heating Mode
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- Abdelazim Abbas Ahmed & Mohsen Assadi & Adib Kalantar & Tomasz Sliwa & Aneta Sapińska-Śliwa, 2022. "A Critical Review on the Use of Shallow Geothermal Energy Systems for Heating and Cooling Purposes," Energies, MDPI, vol. 15(12), pages 1-22, June.
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Keywords
ground source heat pump; model-based optimization; data-driven model; genetic algorithm;All these keywords.
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