Applying Artificial Neural Network and Response Surface Method to Forecast the Rheological Behavior of Hybrid Nano-Antifreeze Containing Graphene Oxide and Copper Oxide Nanomaterials
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- Basma Souayeh & Suvanjan Bhattacharyya & Najib Hdhiri & Mir Waqas Alam, 2022. "Selection of Best Suitable Eco-Friendly Refrigerants for HVAC Sector and Renewable Energy Devices," Sustainability, MDPI, vol. 14(18), pages 1-16, September.
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Keywords
hybrid nanofluid; viscosity; arterial neural network; response surface method;All these keywords.
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