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首页> 外文期刊>Journal of Environmental Management >Experimental and validation with neural network time series model of microbial fuel cell bio-sensor for phenol detection
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Experimental and validation with neural network time series model of microbial fuel cell bio-sensor for phenol detection

机译:苯酚检测微生物燃料电池生物传感器神经网络时间序列模型的实验与验证

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Phenol is one of the most commonly known chemical compound found as a pollutant in the chemical industrial wastewater. This pollutant has potential threat for human health and environment, as it can be easily absorbed by the skin and the mucous. Here, we prepared dual chambered microbial fuel cell (MFC) sensor for the detection of phenol. Varying concentration of phenol (100 mg/1, 250 mg/1, 500 mg/1, and 1000 mg/1) was applied as a substrate to the MFC and their change in output voltage was also measured. After adding 100 mg/1, 250 mg/1, 500 mg/1, and 1000 mg/1 of phenol as sole substrate to the MFC, the maximum voltage output was obtained as 360 ± 10 mV, 395 ± 8 mV, 320 ± 7 mV, 350 ± 5 mV respectively. This biosensor was operated using industrial wastewater isolated microbes as a sensing element and phenol was used as a sole substrate. The topologies of ANN were analyzed to get the best model to predict the power output of MFCs and the training algorithms were compared with their convergence rates in training and test results. Time series model was used for regression analysis to predict the future values based on previously observed values. Two types of mathematical modeling i. e. Scaled Conjugate Gradient (SCG) algorithm and Time-series model was used with 44 experimental data with varying phenol concentration and varying synthetic wastewater concentration to optimize the biosensor performance. Both SCG and time series showing the best results with R~2 value 0.98802 and 0.99115.
机译:苯酚是在化学工业废水中作为污染物发现的最常见的已知化合物之一。这种污染物对人类健康和环境具有潜在的威胁,因为它可以容易被皮肤和粘液吸收。这里,我们制备了用于检测苯酚的双腔微生物燃料电池(MFC)传感器。将苯酚浓度(100mg / 1,250mg / 1,500mg / 1和1000mg / 1)作为基材施加到MFC上,并测量其输出电压的变化。加入100mg / 1,250mg / 1,500mg / 1和1000mg / 1作为唯一的苯酚作为MFC,获得最大电压输出为360±10 mV,395±8 mV,320± 7 mV,350±5 mV。使用产业废水运行该生物传感器作为传感元件和苯酚作为唯一基质进行操作。分析了ANN的拓扑,以获得最佳模型来预测MFCS的功率输出,并将培训算法与其培训和测试结果的收敛速率进行比较。时间序列模型用于回归分析,以基于先前观察到的值来预测未来值。两种类型的数学建模i。 e。缩放的共轭梯度(SCG)算法和时间序列模型与44个实验数据一起使用,具有不同的苯酚浓度和不同的合成废水浓度,以优化生物传感器性能。 SCG和时间序列都显示出R〜2值0.98802和0.99115的最佳效果。

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