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Back-propagation neural network for performance prediction in trickling bed air biofilter

机译:反向传播神经网络用于滴滤床空气生物滤池性能预测

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Experimental studies were carried out with a laboratory-scale biotrickling filter to treat a gaseous stream contaminated with benzene, toluene and xylene (BTX) operated in a continuous mode. The biotrickling filter initially acclimatised with toluene was used to treat BTX compound individually at loading rates ranging from 7.2 g/m~3hr to 62.2 g/m~3hr, operated in a sequential mode. The results showed removal efficiencies as high as 100% when operated with toluene as the sole carbon source. An application of the back-propagation neural network to this experimental data is presented in this paper. The performance parameters namely, elimination capacity and removal efficiency were predicted from the experimental observation by selecting the appropriate network topology. The sensitive internal parameters of the network were selected using the 2~(k-1) fractional factorial design. The neural-network-based model was found to be an efficient data-driven tool to predict the performance of a biotrickling filter.
机译:使用实验室规模的生物滴滤器进行了实验研究,以处理被连续运行的苯,甲苯和二甲苯(BTX)污染的气流。最初使甲苯适应的生物滴流过滤器用于依次处理BTX化合物,负载量范围为7.2 g / m〜3hr至62.2 g / m〜3hr。结果表明,以甲苯为唯一碳源运行时,去除效率高达100%。本文介绍了反向传播神经网络在该实验数据中的应用。通过选择合适的网络拓扑结构,从实验观察中预测性能参数,即消除能力和去除效率。使用2〜(k-1)分数阶乘设计选择网络的敏感内部参数。发现基于神经网络的模型是预测生物滴滤器性能的有效数据驱动工具。

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