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首页> 外文期刊>Journal of Electromagnetic Waves and Applications >An artificial neural network-based non-destructive microwave technique for monitoring fluoride contamination in water
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An artificial neural network-based non-destructive microwave technique for monitoring fluoride contamination in water

机译:一种基于人工神经网络的非破坏性微波技术,用于监测水中的氟化物污染

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摘要

This article presents a novel non-destructive microwave technique for predicting fluoride contamination in pure water. The proposed microwave-based sensing technique uses an open-ended coaxial probe (OECP) microwave sensor for monitoring fluoride concentration in water. The sensor output is the input of Artificial Neural Network (ANN) for predicting the complex dielectric constant of contaminated water, which has direct correlation with fluoride contamination in water. The ANN is trained through analytically generated sensor output for various lossy liquid materials and tested for experimental data obtained through laboratory prepared samples. Hence, the proposed technique has the capability to compute the amount of fluoride contamination faster, when compared to analysis only method. The results shows that a well-trained ANN is computationally efficient and capable of predicting the amount of fluoride level in the pure water. The results also has good agreement with the data published in the literature at room temperature.
机译:本文提出了一种用于预测纯水中的氟化物污染的新型非破坏性微波技术。所提出的基于微波的传感技术使用开放式同轴探针(OECP)微波传感器,用于监测水中的氟化物浓度。传感器输出是用于预测受污染水的复杂介电常数的人工神经网络(ANN)的输入,其与水中的氟化物污染有直接相关。通过分析产生的传感器输出来培训,用于各种损失液体材料,并测试通过实验室制备的样品获得的实验数据。因此,与分析方法相比,所提出的技术具有更快地计算氟化物污染量的能力。结果表明,训练有素的ANN是计算上有效的,能够预测纯水中的氟化物水平的量。结果还与在室温下文献中发表的数据吻合良好。

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