Advanced Intelligent Approach for Solar PV Power Forecasting Using Meteorological Parameters for Qassim Region, Saudi Arabia
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- Bilel Najlaoui & Abdullah Alghafis & Hussain Sadig & Eihab A. Raouf & Mohamed Alobaidi Hassen, 2025. "Multi-Objective Design Optimization and Experimental Investigation of a Low-Cost Solar Desalination System Under Al Qassim Climate," Sustainability, MDPI, vol. 17(5), pages 1-24, February.
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