Sakhaei Amirmohammad, Zamir Seyed Morteza, Rene Eldon R, Veiga María C, Kennes Christian
Biochemical Engineering Department, Faculty of Chemical Engineering, Tarbiat Modares University, Tehran, P.O. Box 14115-114, Iran.
Biochemical Engineering Department, Faculty of Chemical Engineering, Tarbiat Modares University, Tehran, P.O. Box 14115-114, Iran.
Environ Res. 2023 Nov 15;237(Pt 2):116978. doi: 10.1016/j.envres.2023.116978. Epub 2023 Aug 24.
The performance of one- and two-liquid phase biotrickling filters (OLP/TLP-BTFs) treating a mixture of gas-phase methanol (M), α-pinene (P), and hydrogen sulfide (H) was assessed using artificial neural network (ANN) modeling. The best ANN models with the topologies 3-9-3 and 3-10-3 demonstrated an exceptional capacity for predicting the performance of O/TLP-BTFs, with R > 99%. The analysis of causal index (CI) values for the model of OLP-BTF revealed a negative impact of M on P removal (CI = -2.367), a positive influence of P and H on M removal (CI = +7.536 and CI = +3.931) and a negative effect of H on P removal (CI = -1.640). The addition of silicone oil in TLP-BTF reduced the negative impact of M and H on P degradation (CI = -1.261 and CI = -1.310, respectively) compared to the OLP-BTF. These findings suggested that silicone oil had the potential to improve P availability to the biofilm by increasing the concentration gradient of P between the air/gas and aqueous phases. Multi-objective particle swarm optimization (MOPSO) suggested an optimum operational condition, i.e. inlet M, P, and H concentrations of 1.0, 1.1, and 0.3 g m, respectively, with elimination capacities (ECs) of 172.1, 26.5, and 0.025 g m h for OLP-BTF. Likewise, one of the optimum operational conditions for TLP-BTF is achievable at inlet concentrations of 4.9, 1.7, and 0.8 g m, leading to the optimum ECs of 299.7, 52.9, and 0.072 g m h for M, P, and H, respectively. These results provide important insights into the treatment of complex waste gas mixtures, addressing the interactions between the pollutant removal characteristics in OLP/TLP-BTFs and providing novel approaches in the field of biological waste gas treatment.
使用人工神经网络(ANN)建模评估了单液相和双液相生物滴滤池(OLP/TLP-BTFs)处理气相甲醇(M)、α-蒎烯(P)和硫化氢(H)混合物的性能。拓扑结构为3-9-3和3-10-3的最佳ANN模型在预测O/TLP-BTFs性能方面表现出卓越能力,R>99%。对OLP-BTF模型的因果指数(CI)值分析表明,M对P去除有负面影响(CI=-2.367),P和H对M去除有正面影响(CI=+7.536和CI=+3.931),H对P去除有负面影响(CI=-1.640)。与OLP-BTF相比,在TLP-BTF中添加硅油降低了M和H对P降解的负面影响(分别为CI=-1.261和CI=-1.310)。这些发现表明,硅油有可能通过增加空气/气体和水相之间P的浓度梯度来提高生物膜对P的可利用性。多目标粒子群优化(MOPSO)提出了一个最佳运行条件,即OLP-BTF的进口M、P和H浓度分别为1.0、1.1和0.3 g/m,去除能力(ECs)分别为172.1、26.5和0.025 g/m·h。同样,TLP-BTF的最佳运行条件之一是进口浓度为4.9、1.7和0.8 g/m,导致M、P和H的最佳ECs分别为299.7、52.9和0.072 g/m·h。这些结果为复杂废气混合物的处理提供了重要见解,解决了OLP/TLP-BTFs中污染物去除特性之间的相互作用,并为生物废气处理领域提供了新方法。