基于神经网络的水中纳米塑料判别数值平台的开发

Alaeddine Fdhila, C. Dridi
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引用次数: 0

摘要

电化学传感器可以作为测量样品的数字化设备和系统。因此,计算建模和实验结果是必要的。在目前的工作中,我们的电化学传感器是由银纳米粒子(AgNps)与玻璃碳电极(GCE)结合多层感知器(MLP)神经网络制成的。我们的传感器的灵敏度、重复性、再现性和稳定性都得到了证明,而且制备成本最低。所研制的电化学传感器还可用于矿物样品和自来水中酚类化合物的测定。根据实验研究结果,建立了MLP模型。各菌种的电流和浓度分别为输入和输出参数。MLP建模结果与研究结果一致,表明该方法在电化学传感器技术中是有效的。
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Development of neural network based numerical platform for nanoplastics discrimination in water
Electrochemical sensors could be employed as digital equipment and systems to measure samples. As a result, computational modeling is necessary as well as experimental results. In the current work, our electrochemical sensor is fabricated by the binding of silver nanoparticles (AgNps) to glassy carbon electrode (GCE) combined with the multilayer perceptron (MLP) neural network. The sensitivity of our sensor, also the repeatability, the reproducibility, and the stability were all demonstrated, with minimal preparation cost. The developed electrochemical sensor was also applied to determine phenolic compounds in real samples of mineral and tap water. The MLP model was created using the findings of the experimental studies. The current and the concentration of each species, were the input and output parameters, respectively. The results of MLP modeling were consistent with the studies, indicating that it could be effective in electrochemical sensor technology.
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