AI-driven machine learning and experimental optimization for sustainable solar distillers using recycled stainless-steel shavings-enhanced PCM and ag-NPs-coated recycled cans
Key Points
Findings reveal significant improvements in efficiency for solar distillers utilizing enhanced phase change materials.
Efficiency increased by over 30% when using machine learning techniques to optimize performance parameters.
Assessment using experimental optimization established a direct link between material enhancement and energy output.
Highlights the potential for sustainable practices in solar technology through the use of recycled resources.
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AI-driven machine learning and experimental optimization for sustainable solar distillers using recycled stainless-steel shavings-enhanced PCM and ag-NPs-coated recycled cans | Synapse