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Identification and Discrimination of Herbicide Residues Using a Conducting Polymer Electronic nose

机译:使用电导聚合物电子鼻鉴定和辨别除草剂残留物

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The identification of herbicide residues on crop foliage is necessary to make crop-management decisions for weed pest control and to monitor pesticide residue levels on food crops. Electronic-nose (e-nose) methods were tested as a cheaper, alternative means of discriminating between herbicide residue types (compared with conventional chromatography methods), by detection of headspace volatiles released from inert surfaces. Detection methods were developed for a conducting polymer (CP)-type electronic nose device, the Aromascan A32S, to identify and discriminate among eight herbicide types from five different herbicide organic chemical classes including: chlorophenoxy acids, cyclohexenones, dinitroanilines, organoarsenics, and phosphonoglycines. A herbicide-specific aroma signature library was developed from known herbicide residues. The A32S e-nose effectively distinguished between eight different herbicide residues, correctly identifying them at frequencies ranging from 81-98%. The distribution of aroma class components, based on artificial neural net (ANN) training and analysis, indicated the percentage membership of aroma classes shared by herbicide types. Principal component analysis (PCA) provided indications of the relatedness of herbicide types based on sensor array response patterns (aroma profiles) of individual herbicides. PCA generated precise statistical values (quality factors of significance) as numerical indications of chemical relatedness between herbicides based on pairwise comparisons of headspace volatiles from individual herbicide types. The potential applications, advantages and disadvantages of e-nose methods (compared to current chromatographic methods) for the detection and identification of herbicide residues on crop surfaces in agronomic fields are discussed.
机译:在作物叶子上鉴定除草剂残留物是为杂草害虫控制的作物管理决策以及监测食物作物的农药残留水平。通过检测从惰性表面释放的顶部空间挥发物检测电子鼻子(E-鼻子)的方法作为便宜的替代方法,以区分除草剂残留物(与常规色谱法相比)。用于导电聚合物(CP)型电子鼻器具,芳香杂志A32s的检测方法,以识别和区分来自五种不同除草剂有机化学类的八种除草剂类型,包括:氯苯氧基酸,环己酮,二硝基苯胺,有机术和膦酰基因糖。从已知的除草剂残基中开发了除草剂特异性香气签名库。 A32S E-鼻鼻部有效地区分了八种不同的除草剂残留物,在81-98%的频率下正确识别它们。基于人工神经网络(ANN)培训和分析的香气类组分的分布表明了除草剂类型共享的香气课程百分比。主要成分分析(PCA)根据单个除草剂的传感器阵列响应模式(香气谱)提供除草剂类型的相关性的指示。 PCA产生了精确的统计值(质量因素的显着因素)作为除草剂之间的化学相关性的数值适应性,其基于来自个体除草剂类型的顶空挥发物的成对比较。讨论了E-鼻子方法的潜在应用,优点和与当前色谱方法的检测和鉴定农业领域作物表面上除草剂残留物的潜在应用,优点和缺点。

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