Glyphosate Pattern Recognition Using Microwave-Interdigitated Sensors and Principal Component Analysis

C. Santillán-Rodríguez, R. Sáenz-Hernández, Cristina Grijalva-Castillo, Eutiquio Barrientos-Juárez, J. T. Elizalde-Galindo, J. Matutes-Aquino
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Abstract

Glyphosate is an herbicide used worldwide with harmful health effects, and efforts are currently being made to develop sensors capable of detecting its presence. In this work, an array of four interdigitated microwave sensors was used together with the multivariate statistical technique of principal component analysis, which allowed a well-defined pattern to be found that characterized waters for agricultural use extracted from the Bustillos lagoon. The variability due to differences between the samples was explained by the first principal component, amounting to 86.3% of the total variance, while the variability attributed to the measurements and sensors was explained through the second principal component, amounting to 13.2% of the total variance. The time evolution of measurements showed a clustering of data points as time passed, which was related to microwave–sample interaction, varied with the fluctuating dynamical structure of each sample, and tended to have a stable mean value.
利用微波插入式传感器和主成分分析进行草甘膦模式识别
草甘膦是一种对健康有害的除草剂,全世界都在使用,目前正在努力开发能够检测草甘膦存在的传感器。在这项工作中,我们使用了由四个相互咬合的微波传感器组成的阵列,并采用了主成分分析的多元统计技术,从而发现了一种明确的模式,可以描述从布斯提洛斯泻湖提取的农业用水的特征。第一个主成分解释了由于样本之间的差异而产生的变异,占总变异的 86.3%,而第二个主成分解释了由于测量和传感器而产生的变异,占总变异的 13.2%。随着时间的推移,测量结果显示出数据点的聚类,这与微波和样品之间的相互作用有关,随每个样品的动态结构波动而变化,并趋向于有一个稳定的平均值。
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