Department of Software Engineering, Kütahya Dumlupınar University, Kütahya, Turkey.
Department of Computer Technologies, Trakya University, Edirne, Turkey E-mail:
J Water Health. 2022 May;20(5):803-815. doi: 10.2166/wh.2022.302.
Salt water adversely affects human health and plant growth. In parallel with the increasing interest in non-contact determination of salt concentration in water, a novel approach is proposed in this study. In the proposed approach, S parameter measurements, which show the scattering properties of electromagnetic waves, are used. First, the relationship between salt concentration in water and permittivity values, a distinguishing feature for liquids, is shown. Then, based on the derived correlations from a set of S parameter measurements, it is shown that the salt concentration in water can be predicted. Finally, after exactly determining the relations of permittivity, salt concentration and S parameter, a system that allows non-contact determination of salt concentration is proposed. Since the proposed system makes its prediction using a classifier, decision tree algorithms are employed for this purpose. In order to evaluate the appropriateness and success of the algorithms, a set of classification experiments were held using various water samples with different levels of salt concentration. The results of the classification experiments show that the Hoeffding tree algorithm achieved the best results and is the most suitable decision tree algorithm for determining the salt concentration of liquids. For this reason, the proposed non-contact approach can be used to determine the salt concentration in water reliably and quickly if its hardware and software components can be embedded into a prototype system.
盐水会对人体健康和植物生长产生不利影响。随着人们对非接触式测定水中盐浓度的兴趣日益增加,本研究提出了一种新方法。在提出的方法中,使用了 S 参数测量,它显示了电磁波的散射特性。首先,展示了水中盐浓度与介电常数值之间的关系,介电常数值是液体的一个特征。然后,基于从一组 S 参数测量中得出的相关性,表明可以预测水中的盐浓度。最后,在准确确定介电常数、盐浓度和 S 参数之间的关系后,提出了一种允许非接触式测定盐浓度的系统。由于所提出的系统使用分类器进行预测,因此为此目的使用了决策树算法。为了评估算法的适当性和成功性,使用具有不同盐浓度水平的各种水样进行了一组分类实验。分类实验的结果表明,赫夫丁树算法取得了最佳结果,是最适合用于确定液体盐浓度的决策树算法。因此,如果能够将其硬件和软件组件嵌入原型系统中,则可以可靠且快速地使用这种非接触式方法来确定水中的盐浓度。