Abstract

Utilizing various renewable energy resources (RERs) for powering desalination plants is an encouraging choice, specifically in arid and remote areas where conventional resources are unavailable or costly. Various RERs were used to derive desalination systems such as solar, wind, geothermal, etc. Reverse osmosis, multi-stage flash, and multi-effect distillation are the most used desalination technologies in connection with various RES. Some RES/desalination technologies combinations could be cost-efficient and reliable if appropriately designed. However, the unpredictable load demands and the intermittency nature of the RERs make designing such systems difficult. Various integrated scenarios are proposed in such systems, such as PV combinations with wind, battery energy storage systems, fuel cells, electrolyzers, etc. As a result, determining the optimum configuration using traditional methods is difficult. Implementing intelligent techniques that can integrate all working and design parameters involved in the various possible scenarios is critical for finding the optimal operating conditions. This work discusses and summarizes various artificial intelligence (AI) techniques to enhance RES-powered desalination systems. The implementation of various forecasting models, optimization algorithms, and control systems in designing and operating RER-powered desalination systems was analyzed. Finally, future research recommendations for further improving the current technology were included.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call