Department of Mechanical and Materials Engineering, University of Jeddah, Jeddah, 21589, Saudi Arabia.
Sustainable Energy & Acoustics Research Lab, Mechanical Engineering, Z.H.C.E.T, Aligarh Muslim University, Aligarh, 202002, India.
Chemosphere. 2023 Feb;314:137667. doi: 10.1016/j.chemosphere.2022.137667. Epub 2022 Dec 27.
Fibrous filter made up of non-woven material was utilized in many industrial applications for increasing the collection efficiency and the quality factor. But there exists a competing effect among the fibre diameter, filtration efficiency, pressure drop, and sometime type of aerosol (liquid or solid) plays a crucial role in the performance of the fibrous filter. To avoid overdesigning of the filter along with better performance, optimum set of parameters are to be decided before the manufacturing process. In the current effort, the desirability approach and along with the "Response Surface Methodology (RSM)" were considered to optimize filtration efficiency and pressure drop simultaneously. In this perspective, the impact of Filtration velocity (v), Basis weight (φ), Particle diameter (dp), and Packing fraction (α) on filtration efficiency (η) and pressure drop (Pd) was studied. Based on the outcome, the predicted values lie within experimental data through smart agreement. The maximum percentage (%) error was only 3% and 6% filtration efficiency (η) and pressure drop (Pd), which determine the effectiveness of this useful model. The most dominant factor which affects the filtration efficiency (η) was found to be the Basis weight (φ), followed by packing fraction. However, in the case of pressure drop, the most dominant factors were filtration speed followed by the pachining fraction. Moreover, artificial neural network (ANN) models are developed for the prediction of filtration efficiency and pressure drop. The model accuracy has been estimated by calculating "Mean Square Error (MSE), Mean Absolute Error (MAE), and coefficient of determination (R2)". Both models show promising results when compared with experimental data with the R2 value of 98.50-99.86. The optimized values of the maximum filtration efficiency and minimum pressure drop simultaneously were obtained for v = 5, φ = 59.60, dp = 52.23, α = 0.24 according to desirability approach.
纤维过滤器由无纺材料制成,在许多工业应用中用于提高收集效率和品质因数。但是,纤维直径、过滤效率、压降之间存在竞争效应,有时气溶胶的类型(液体或固体)在纤维过滤器的性能中起着至关重要的作用。为了避免过滤器过度设计以及实现更好的性能,在制造过程之前需要决定最佳的参数集。在当前的努力中,考虑了可取性方法以及“响应面方法论 (RSM)”,以同时优化过滤效率和压降。在这种情况下,研究了过滤速度 (v)、基重 (φ)、粒径 (dp) 和堆积分数 (α) 对过滤效率 (η) 和压降 (Pd) 的影响。基于结果,预测值通过智能协议落在实验数据内。过滤效率 (η) 和压降 (Pd) 的最大百分比 (%) 误差仅为 3% 和 6%,这确定了该有用模型的有效性。影响过滤效率 (η) 的最主要因素是基重 (φ),其次是堆积分数。然而,在压降的情况下,最主要的因素是过滤速度,其次是堆积分数。此外,还开发了人工神经网络 (ANN) 模型来预测过滤效率和压降。通过计算“均方误差 (MSE)、平均绝对误差 (MAE) 和确定系数 (R2)”来估计模型的准确性。与实验数据相比,两个模型的 R2 值均为 98.50-99.86,显示出有希望的结果。根据可取性方法,同时获得最大过滤效率和最小压降的优化值为 v=5、φ=59.60、dp=52.23、α=0.24。