Department of Chemical Engineering, Faculty of Engineering, University of Sistan and Baluchestan, Zahedan, Iran.
Department of Chemical Engineering, Faculty of Engineering, University of Sistan and Baluchestan, Zahedan, Iran.
Chemosphere. 2024 Jun;357:141969. doi: 10.1016/j.chemosphere.2024.141969. Epub 2024 Apr 9.
Direct Contact Membrane Distillation (DCMD) is emerging as an effective method for water desalination, known for its efficiency and adaptability. This study delves into the performance of DCMD by integrating two powerful analytical tools: Computational Fluid Dynamics (CFD) and Artificial Neural Networks (ANN). The research thoroughly examines the impact of various factors, such as inlet temperatures, velocities, channel heights, salt concentration, and membrane characteristics, on the process's efficiency, specifically calculating the water vapor flux. A rigorous validation of the CFD model aligns well with established studies, ensuring reliability. Subsequently, over 1000 data points reflecting variations in input factors are utilized to train and validate the ANN. The training phase demonstrated high accuracy, with near-zero mean squared errors and R values close to one, indicating a strong predictive capability. Further analysis post-ANN training shed light on key relationships: higher membrane porosity boosts water vapor flux, whereas thicker membranes reduce it. Additionally, it was detailed how salt concentration, channel dimensions, inlet temperatures, and velocities significantly influence the distillation process. Finally, a mathematical model was proposed for water vapor flux as a function of key input factors. The results highlighted that salt mole fraction and hot water inlet temperature have the most effect on the water vapor flux. This comprehensive investigation contributes to the understanding of DCMD and emphasizes the potential of combining CFD and ANN for optimizing and innovating water desalination technology.
直接接触式膜蒸馏(DCMD)作为一种有效的海水淡化方法,因其高效性和适应性而备受关注。本研究通过整合两种强大的分析工具:计算流体动力学(CFD)和人工神经网络(ANN),深入研究了 DCMD 的性能。研究彻底考察了各种因素(如入口温度、流速、通道高度、盐浓度和膜特性)对该过程效率的影响,特别是计算水蒸气通量。CFD 模型经过严格验证,与已有研究吻合良好,保证了可靠性。随后,利用超过 1000 个反映输入因素变化的数据点对 ANN 进行训练和验证。在训练阶段,模型表现出了很高的准确性,均方误差接近零,R 值接近 1,表明其具有很强的预测能力。在 ANN 训练后进行的进一步分析揭示了关键关系:较高的膜孔隙率会提高水蒸气通量,而较厚的膜则会降低水蒸气通量。此外,还详细说明了盐浓度、通道尺寸、入口温度和流速如何显著影响蒸馏过程。最后,提出了一个水蒸气通量的数学模型,作为关键输入因素的函数。结果表明,盐分子分数和热水入口温度对水蒸气通量的影响最大。这项全面的研究有助于深入了解 DCMD,并强调了结合 CFD 和 ANN 对优化和创新海水淡化技术的潜力。