利用人工神经网络技术建立太阳能海水淡化预测模型:综述

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摘要

由于化石燃料的局限性及其使用带来的环境问题,人们通过采用各种技术和媒介,将可再生能源用于海水淡化。太阳能是直接或间接用于太阳能海水淡化的最有用的可再生能源之一。太阳能海水淡化的效果受各种参数的影响,因此预测其在特定情况下的性能具有挑战性。在这种情况下,人工神经网络 (ANN)、PSO、ANFIS、RO 和遗传算法都是适合其建模和输出预测的技术。在当前的研究中,多种数据驱动方法被深入用于太阳能海水淡化设施的建模。通过利用这些方法以及适当的输入和结构,可以推断出太阳能海水淡化装置的结果可以得到一致和正确的预测。此外,本研究还就相关领域的未来研究提出了若干建议。
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Predictive Modeling for Solar Desalination Using Artificial Neural Network Techniques: A Review
Due to the limitations of fossil fuels and the environmental problems associated with their usage, renewable energy sources have been exploited for desalination through the employment of various technologies and mediums. One of the most useful renewable energy sources for solar desalination, both directly and indirectly, is solar energy. The effectiveness of solar desalination is influenced by a variety of parameters, making it challenging to forecast their performance in particular circumstances. Artificial neural networks (ANNs), PSO, ANFIS, RO, and genetic algorithms would all be suitable techniques for their modeling and output predictions in this context. In the current research, multiple data-driven approaches are used in-depth to perform modeling of solar-based desalination facilities. By utilizing these methods with the proper inputs and structures, it can be deduced that the results of the solar desalination units can be consistently and correctly projected. Additionally, several suggestions are offered for future research in the relevant areas of the study.
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