空气中挥发性有机物的低碳排放生物滴滤:人工神经网络方法

G. Soreanu, I. Cretescu, E. Drăgoi, D. Lutic, F. Leon
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引用次数: 0

摘要

在本研究中,对一种传统的生物滴滤器(基于堆肥微生物)和一种升级的生物滴滤器(基于堆肥微生物和微藻Arthrospira platensis PCC 8005的混合物)在去除空气中挥发性有机化合物(VOCs)的过程中产生的二氧化碳进行了评估。实验以乙酸蒸汽为模型VOC,考察了不同VOC浓度、气体流量和pH值下生物滴滤(BTF)的性能。尽管两种生物系统对乙酸蒸汽的去除量最大,但二氧化碳的产生量不同。通过人工神经网络算法对微生物类型和操作参数对二氧化碳产量的影响进行了关联,描绘了低碳排放生物滴滤去除空气中挥发性有机化合物的最有利条件。
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TOWARDS LOW-CARBON EMISSION BIOTRICKLING FILTRATION OF VOLATILE ORGANIC COMPOUNDS FROM AIR: AN ARTIFICIAL NEURAL NETWORK APPROACH
In this study, a classical biotrickling filter (based on compost microorganisms) and an upgraded biotrickling filter (based on a mixture of compost microorganisms and microalgae Arthrospira platensis PCC 8005) are evaluated in terms of carbon dioxide production, during their use for volatile organic compounds (VOCs) removal from air. The experiments were performed using acetic acid vapors as model VOC and the biotrickling filter (BTF) performance was observed at different VOC concentrations, gas flowrates and pH values. Although the removal of acetic acid vapors was maximum for the both biosystems, the carbon dioxide production was different. The influence of the microorganisms� types and of the operating parameters on the carbon dioxide production are correlated via artificial neural network algorithms, depicting the most favorable conditions towards a low-carbon emission biotrickling filtration process for VOCs removal from air.
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