基于物联网的混合传感器和数据挖掘水质测量

C. Lowongtrakool, Panida Lorwongtrakool
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引用次数: 4

摘要

本研究的目的是:1)利用电子舌和电子鼻相结合的混合传感器开发物联网水质测量原型;2)提出了基于数据挖掘技术的分类算法。在电子舌测量水的化学性质包括pH值,电导率(EC),浊度,总溶解固体(TDS),盐度,溶解氧(DO)和温度。用于测量不同类型气体响应的电子鼻由MQ2、MQ3、MQ4、MQ5、MQ6、MQ7、MQ8、MQ9和MQ135组成。在曼谷SiPhraya、Rattana Kosin、Chong nonsi、Chatuchak、Din daeng、Nong kham和Thung khru等7个区的水质控制厂的入口和出口采集样本。采用朴素贝叶斯(NaiveBayes)、朴素贝叶斯多项式(NaiveBayesMultinominal)、Logistic、simplellogic和IBK算法进行分类。训练和测试采用10倍交叉验证,并进行准确性比较。结果表明,基于GainRatio的神经网络模型15-10-1包括盐度、浑浊度、TDS、MQ8、MQ4、DO、MQ135、pH、MQ5、MQ9、MQ7、MQ2、MQ6、EC和MQ3,准确率达到95.12%。因此,可以得出结论,混合传感器可以应用于真实环境中社区周围水质的测量和监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Based Water Quality Measurement Using Hybrid Sensors and Data Mining
The purposes of this research were 1) to develop the prototype for water quality measurement by using hybrid sensors which is the combination between e-tongue and e-nose together to work of IoT; and 2) to present algorithms for classification by using data mining techniques. In e-tongue for measurement of water chemical properties consist of pH, Electrical Conductivity (EC), Turbidity, Total Dissolved Solids (TDS), Salinity, Dissolved Oxygen (DO) and Temperature. And e-nose for measurement the response of different types of gases consist of MQ2, MQ3, MQ4, MQ5, MQ6, MQ7, MQ8, MQ9 and MQ135. Samples were collected at inlet and outlet areas from water quality control plants of Bangkok in 7 zones including SiPhraya, Rattana Kosin, Chong nonsi, Chatuchak, Din daeng, Nong kham, and Thung khru. Classification was done by algorithm such as NaiveBayes, NaiveBayesMultinominal, Logistic, SimpleLogigtic and IBK. Training and Testing were done by 10-fold cross validation and compared by accuracy. The results showed that the neural network model 15-10-1 with GainRatio include Salinity, Terbidity, TDS, MQ8, MQ4, DO, MQ135, pH, MQ5, MQ9, MQ7, MQ2, MQ6, EC and MQ3 have accuracy at 95.12%. Therefore, it can be concluded that hybrid sensors can be applied to measurement and monitoring water quality around communities in real environments.
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