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首页> 外文期刊>Chemosphere >Gas-phase trichloroethylene removal by Rhodococcus opacus using an airlift bioreactor and its modeling by artificial neural network
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Gas-phase trichloroethylene removal by Rhodococcus opacus using an airlift bioreactor and its modeling by artificial neural network

机译:杜鹃花使用空运生物反应器及其人工神经网络建模的气相三氯乙烯除去

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This study evaluated the biological removal of trichloroethylene (TCE) by Rhodococcus opacus using airlift bioreactor under continuous operation mode. The effect of inlet TCE concentration in the range 0.12 -2.34 g m(-3) on TCE removal has studied for 55 days. During the continuous bioreactor operation, a maximum of 96% TCE removal was obtained for low inlet TCE concentration, whereas the highest elimination capacity was 151.2 g m(-3) h(-1) for the TCE loading rate of 175.0 g m(-3) h(-1). The carbon dioxide (CO2) concentration profile from the airlift bioreactor revealed that the degraded TCE has primarily converted to CO2 with a fraction of organic carbon utilized for bacterial growth. The artificial neural network (ANN) based model was able to successfully predict the performance of the bioreactor system using the Levenberg-Marquardt (LM) back propagation algorithm, and optimized biological topology is 3:12:1. The prediction accuracy of the model was high as the experimental data were in good agreement (R-2 = 0.9923) with the ANN predicted data. Overall, from the bioreactor experiments and its ANN modeling, the potential strength of R. opacus in TCE biodegradation is proved. (C) 2020 Elsevier Ltd. All rights reserved.
机译:该研究评估了在连续操作模式下使用空运生物反应器通过rhodococcus opacus进行三氯乙烯(TCE)的生物学除去。 Inlet TCE浓度在0.12-2.34g m(-3)的TCE去除范围内的影响已经研究了55天。在连续生物反应器操作期间,最多获得96%的TCE用于低入口TCE浓度,而最高的消除能力为151.2克(-3)H(-1),用于175.0克的TCE加载率(-3) h(-1)。来自空运生物反应器的二氧化碳(CO 2)浓度分布显示,降解的TCE主要转化为CO 2,其有机碳用于细菌生长。基于人工神经网络(ANN)的模型能够通过Levenberg-Marquardt(LM)反传播算法成功预测生物反应器系统的性能,并且优化的生物拓扑结构为3:12:1。随着实验数据与ANN预测数据的良好协议(R-2 = 0.9923)很好,模型的预测精度高。总体而言,从生物反应器实验及其ANN建模中,证明了TCE生物降解中的R. Opacus的潜在强度。 (c)2020 elestvier有限公司保留所有权利。

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